{"id":3857,"date":"2022-03-15T23:20:20","date_gmt":"2022-03-15T23:20:20","guid":{"rendered":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/?post_type=chapter&#038;p=3857"},"modified":"2022-06-02T01:31:24","modified_gmt":"2022-06-02T01:31:24","slug":"corequisite-support-activity-for-6-c","status":"publish","type":"chapter","link":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/chapter\/corequisite-support-activity-for-6-c\/","title":{"raw":"Corequisite Support Activity for 6.C: Understanding the Coefficient of Determination","rendered":"Corequisite Support Activity for 6.C: Understanding the Coefficient of Determination"},"content":{"raw":"<div class=\"textbox learning-objectives\">\r\n<h3>what you'll need to know<\/h3>\r\nIn this support activity you\u2019ll become familiar with the following:\r\n<ul>\r\n \t<li>Compare and contrast correlation coefficients among different scatterplots<\/li>\r\n \t<li>Compare the values of the correlation coefficient\u00a0[latex]r[\/latex] and the coefficient of determination [latex]R^{2}[\/latex] for the same line.<\/li>\r\n \t<li>Use technology to explore the relationship between the correlation coefficient\u00a0[latex]r[\/latex] and coefficient of determination\u00a0[latex]R^{2}[\/latex] for a scatterplot.<\/li>\r\n \t<li>Use technology to explore the relationship between the sign of the slope, the spread and shape of the data, and the coefficient of determination [latex]R^{2}[\/latex].<\/li>\r\n<\/ul>\r\nYou will also have an opportunity to refresh the following skills:\r\n<ul>\r\n \t<li>Express a proportion as a decimal and as a percentage.<\/li>\r\n \t<li>Determine the sign of a number that has been squared.<\/li>\r\n<\/ul>\r\n<\/div>\r\nIn the next preview assignment and in the next class, you will need to be able to express proportions as both decimals and percentages, understand what happens to a number when you square it, use technology to find the coefficient of determination ([latex]R^2[\/latex]), and interpret [latex]R^2[\/latex]. We'll work through each of these skills in this corequisite support activity so that you'll feel comfortable during the upcoming course activity.\r\n\r\nThis activity follows previous sections during which you built up a deep understanding of the components and processes of linear regression. See the first paragraph below and a reference list at the end of this page for a summary of those components and definitions.\r\n<h2>The Correlation Coefficient and Related Operations<\/h2>\r\nIn previous activities, we examined ways of characterizing the linear relationship between two variables, including the correlation coefficient [latex]r[\/latex] and the line of best fit. We will encounter an extension of these ideas here but first, let's summarize what you've learned so far about linearly related bivariate data.\r\n<ul>\r\n \t<li>In a linear relationship between two linked quantitative variables (bivariate data), the <strong>explanatory variable [latex]x[\/latex]<\/strong> is the variable thought to explain or predict the response, and the <strong>response variable [latex]y[\/latex]<\/strong> measured the outcome of interest, the response in the study. You may have seen these called the independent and dependent variables, [latex]x[\/latex] and [latex]y[\/latex] in a previous algebra class.\r\n<ul>\r\n \t<li>it is common to represent the explanatory variable [latex]x[\/latex] on the horizontal axis of a graph and the response variable [latex]y[\/latex] on the vertical axis.<\/li>\r\n<\/ul>\r\n<\/li>\r\n \t<li>The <strong>slope-intercept form of a linear equation is [latex]y=mx+b[\/latex]<\/strong>, where [latex]m[\/latex] represents the slope, or constant rate of change in the relationship between variables, and [latex]b[\/latex] represents the y-intercept, the point at which the input [latex]x=0[\/latex] and where the line crosses the y-axis on the graph.\r\n<ul>\r\n \t<li>The slope-intercept form of a linear equation is commonly expressed in statistics using <strong>[latex]\\hat{y}= a + bx[\/latex]<\/strong>, where [latex]b[\/latex] represents the constant rate of change and [latex]a[\/latex] represents the y-intercept.<\/li>\r\n<\/ul>\r\n<\/li>\r\n \t<li>We use a <strong>Least Squares Regression analysis<\/strong> to determine the equation of a <strong>line of best fit<\/strong> in order to make predictions based on an existing dataset.\r\n<ul>\r\n \t<li>The line of best is a line that best describes a scatterplot of the data by minimizing the total vertical distances (errors) from all the data points to the line.<\/li>\r\n \t<li>The vertical error associated with each data point (the distance from the point to the line of best fit) is called the <strong>residual<\/strong> of that data point. It lets us know how far off the prediction made by the line of best fit is from the actual observation.<\/li>\r\n \t<li>The <strong>correlation coefficient [latex]r[\/latex]<\/strong> describes the strength and direction of the linear relationship between the two quantitative variables in the dataset.<\/li>\r\n<\/ul>\r\n<\/li>\r\n<\/ul>\r\n<h3>The Correlation Coefficient<\/h3>\r\nIn this activity, we want to begin to understand a new measure: the coefficient of determination. Like the correlation coefficient, this measure will reveal information about the linear relationship in bivariate data. Your goal in this activity will be to discover how the coefficient of determination is calculated and to start to understand what it says about the data.\r\n\r\nLet's begin by extending your understanding of the correlation coefficient in Question 1. Then in Questions 2 and 3, you'll compare the correlation coefficient [latex]r[\/latex] with the coefficient of determination [latex]R^{2}[\/latex] for the same set of data points.\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 1<\/h3>\r\nConsider the following examples of lines of best fit, including the correlation coefficients corresponding to each scatterplot. How are the plots similar and how are they different? The first scatterplot has [latex]r=-0.72[\/latex], and the second scatterplot has [latex]r=0.75[\/latex].\r\n\r\n<img class=\"alignnone wp-image-1223\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12192910\/Picture138-300x166.png\" alt=\"A scatterplot with a line of best fit that begins around (0, 35) and ends around (10, 28). Most points are within approximately 5 units of the line.\" width=\"1245\" height=\"689\" \/>\r\n\r\n<img class=\"alignnone wp-image-1224\" style=\"font-size: 1em;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12192915\/Picture139-300x166.png\" alt=\"A scatterplot with a line of best fit that begins around (0, 18) and ends around (10, 41). Points are within approximately 10 units.\" width=\"1043\" height=\"577\" \/>\r\n\r\n[reveal-answer q=\"493198\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"493198\"]Consider both the [latex]r[\/latex]-values and their signs as you compare the shapes of the graphs.[\/hidden-answer]\r\n\r\n<\/div>\r\n<h3>Correlation Coefficient vs. Coefficient of Determination<\/h3>\r\nYou've seen that the correlation coefficient [latex]r[\/latex] is a measure of the strength and direction of a linear relationship. When interpreting the value of\u00a0[latex]r[\/latex], we should ask if the line of best fit for the data has a positive or negative slope and whether the data appear tightly correlated to the line.\r\n\r\nIn Question 2, you'll compare [latex]r[\/latex] with\u00a0[latex]R^2[\/latex] for the same data. As you do, try to develop your own understanding of how the two measures relate, then express that understanding to answer Question 3.\r\n\r\nNote that the coefficient of determination may be expressed either as [latex]R^{2}[\/latex] or [latex]r^{2}[\/latex].\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 2<\/h3>\r\nGo to the <em>Explore Linear Regression<\/em> tool at <a href=\"https:\/\/dcmathpathways.shinyapps.io\/ExploreLinReg\/\">https:\/\/dcmathpathways.shinyapps.io\/ExploreLinReg\/<\/a>. From the drop-down menu, select \u201cLinear Relationship.\u201d\r\n\r\nFrom the drop-down menu, select \u201cDraw Your Own (Click in Graph).\u201d\r\n\r\n<img class=\"alignnone wp-image-1225\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12192923\/Picture140-300x148.png\" alt=\"A selection menu. At the top, &quot;Explore Linear Regression&quot; is selected and &quot;Scatterplot&quot; and &quot;Residual&quot; are unselected. Beneath that menu is a heading that reads &quot;Initial Relationship.&quot; Beneath it is a dropdown menu where &quot;Draw Your Own (Click in Graph)&quot; is selected and &quot;Random Scatter,&quot; &quot;Linear Relationship,&quot; and &quot;Quadratic Relationship&quot; are selected.\" width=\"1075\" height=\"529\" \/>\r\n\r\nPart A: As we have seen before (and as the term \u201cline of best fit\u201d implies), linear regression can be an appropriate model when the scatterplot of a dataset shows a linear trend in the relationship between the explanatory variable and the response variable.\r\n\r\nBy clicking on the graph, create a scatterplot with at least five data points that lie on (or very close to) a line with non-zero slope.\r\n\r\nCheck the boxes for \u201cLinear Regression Line,\u201d \u201cShow Correlation Coefficient [latex]r[\/latex],\u201d and \u201cSquared Correlation Coefficient [latex]r^2[\/latex].\u201d\r\n\r\n<img class=\"alignnone wp-image-1246\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12193122\/Picture163-300x175.png\" alt=\"A checklist with the heading &quot;Options.&quot; &quot;Linear Regression Line&quot; is selected, &quot;Smooth Trend&quot; is unselected, and &quot;Show Correlation Coefficient r&quot; and &quot;Squared Correlation Coefficient r squared&quot; are both selected.\" width=\"1226\" height=\"715\" \/>\r\n\r\nLook at the table below the scatterplot. What is the value of the correlation coefficient? What is the value of the coefficient of determination?\r\n\r\n[reveal-answer q=\"560144\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"560144\"]When clicking the graph to create data points, ensure that they all lie on or very close to some imaginary slanted line.[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\nPart B: Reset the scatterplot by clicking the red \u201cReset\u201d button. Now, click on the graph to create a scatterplot with at least five data points that lie near (but not on) a line with non-zero slope.\r\n\r\nWhat is the value of the correlation coefficient? What is the value of the coefficient of determination?\r\n\r\n[reveal-answer q=\"873641\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"873641\"]When clicking on the graph to create data points, ensure that your points do NOT all lie directly on one line, but DO lie near some imaginary slanted line.[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\nPart C: Reset the scatterplot by clicking the red \u201cReset\u201d button. Now, click on the graph to create a scatterplot with at least five arbitrarily-placed data points.\r\n\r\nWhat is the value of the coefficient of determination?\r\n\r\n[reveal-answer q=\"921374\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"921374\"]When clicking on the graph to create data points, ensure that your points do NOT\u00a0 lie near any imaginary slanted line. Scatter them arbitrarily across the graph. [\/hidden-answer]\r\n\r\n<\/div>\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 3<\/h3>\r\nBased on your answer to the previous question, what do you notice about the relationship between the correlation coefficient and the coefficient of determination?\r\n\r\n[reveal-answer q=\"767702\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"767702\"]Compare and contrast [latex]r[\/latex] and [latex]R^{2}[\/latex]. What is different about them? How do they appear in relation to one another within each graph?[\/hidden-answer]\r\n\r\n<\/div>\r\n<h3>Coefficient of Determination<\/h3>\r\nQuestion 4 refers to the <strong>sign<\/strong> of a number. Recall that the sign of a number tells you whether that number is positive or negative. For example, the sign of the number -3 is negative, while the sign of the number 77 is positive.\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 4<\/h3>\r\nFrom the drop-down menu, select \u201cLinear Relationship.\u201d\r\n\r\n<img class=\"alignnone wp-image-1245\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12193117\/Picture162-300x147.png\" alt=\"A selection menu. At the top, &quot;Explore Linear Regression&quot; is selected and &quot;Scatterplot&quot; and &quot;Residualplot&quot; are unselected. Beneath this is a dropdown menu where &quot;Draw Your Own (Click in Graph)&quot; and &quot;Random Scatter&quot; are unselected, &quot;Linear Relationship&quot; is selected, and &quot;Quadratic Relationship&quot; is unselected. Beneath that is another heading that says &quot;Initial Number of Points.&quot; Under it, 50 is selected and 20, 100, and 500 are all unselected.\" width=\"1113\" height=\"545\" \/>\r\n\r\nExplore this page by changing different settings and use your observations to answer the following questions.\r\n\r\n&nbsp;\r\n\r\nPart A: Does the sign of the coefficient of determination depend on the sign of the slope of the linear relationship?\r\n\r\n[reveal-answer q=\"855147\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"855147\"]Is the coefficient of determination ever negative?[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\nPart B: How does the spread of the data away from the line of best fit affect the coefficient of determination?\r\n\r\n[reveal-answer q=\"591969\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"591969\"]How does the value of the coefficient of determination change as the data are more spread or more tightly compact?[\/hidden-answer]\r\n\r\n<\/div>\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 5<\/h3>\r\nBased on your observations, what do you think the coefficient of determination tells us?\r\n\r\n[reveal-answer q=\"389120\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"389120\"]What do <em>you<\/em> think?[\/hidden-answer]\r\n\r\n<\/div>\r\nThe <strong>coefficient of determination<\/strong>, denoted [latex]R^2[\/latex] and pronounced \u201cR squared,\u201d is the proportion of the variation in the response variable that can be explained by its linear relationship with the explanatory variable. Some people prefer to use the symbol [latex]r^2[\/latex] (like in the <em>DCMP Data Analysis Tools<\/em>), but [latex]R^2[\/latex] and [latex]r^2[\/latex] mean the same thing. In this course, we will use the notation [latex]R^2[\/latex]. In the preview assignment and in-class activity, we will discuss the coefficient of determination in more detail. For now, our goal is to lay the groundwork in order to be prepared for those activities coming up.\r\n\r\nThe reason that we use this symbol is that the coefficient of determination is equal to the square of the correlation coefficient. Because of this, [latex]R^2[\/latex] is more sensitive to differences in the strength of the linear relationship between the two variables than [latex]r[\/latex] is. This increased sensitivity can be seen in the following graphic; the difference between [latex]R^2[\/latex] values is greater than the difference between corresponding [latex]r[\/latex] values.\r\n\r\n<img class=\"alignnone wp-image-1241\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12193055\/Picture157-300x79.png\" alt=\"Several scatterplots labeled by the correlation of their line of best fit. The first graph is labeled &quot;Perfect Positive Correlation&quot; and shows points exactly on the line of best fit. The line has a positive slope and the r value is 1. The second graph is labeled &quot;Strong Positive Correlation&quot; and shows points close to the line of best fit. The slope of the line is positive and the r value is 0.91. The next graph is labeled &quot;Weak Positive Correlation&quot; and shows points that are not close to the line of best fit, but still show a correlation to the line. The slope of the line is positive and the r value is 0.48. The next graph is labeled &quot;No Correlation&quot; and show points randomly scattered across the graph. There is no line of best fit and the r value is 0. The next graph is labeled &quot;Weak Negative Distribution&quot; and shows points that are not close to the line of best fit, but still show a correlation to the line. The slope of the line is negative and the r-value is -0.48. The next graph is labeled &quot;Strong Negative Correlation&quot; and shows points that are close to the line of best fit. The slope of the line is negative and the r-value is -0.91. The last graph is labeled &quot;Perfect Negative Correlation&quot; and shows points that are exactly on the line of best fit. It has a negative slope and the r-value is -1.\" width=\"1067\" height=\"281\" \/>\r\n<h3>Decimals and Percentages<\/h3>\r\n<div class=\"textbox examples\">\r\n<h3>Recall<\/h3>\r\nSee the Student Resource[<span style=\"color: #000000; background-color: #ffff99;\"><em>Fractions, Decimals, Percentages<\/em>]<\/span><span style=\"color: #000000;\"><em>\u00a0<\/em><\/span>for a refresher on converting decimals to percentages and vice-versa.\r\n\r\n<\/div>\r\nPractice converting between decimals and percentages in Question 6 before moving on.\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 6<\/h3>\r\nDepending on the tools you use, [latex]R^2[\/latex] may be expressed as a decimal or as a percentage. Even though the tool expresses [latex]R^2[\/latex] as a percentage, it is important to be able to convert between the two forms.\r\n\r\nIf you are given a number as a decimal and want to convert it to a percentage, multiply the number by 100 and use the % symbol afterward. For example, the decimal [latex]0.489[\/latex]\u00a0 is converted to a percentage as follows:\r\n\r\n&nbsp;\r\n\r\n[latex]0.489 \\rightarrow 0.489 \\times 100 \\% \\rightarrow 48.9 \\%[\/latex]\r\n\r\n&nbsp;\r\n\r\nIf you are given a number as a percentage and want to convert it to a decimal, divide the percentage by 100 and remove the % symbol. For example, the percentage [latex]67\\%[\/latex] is converted to a decimal as follows:\r\n\r\n&nbsp;\r\n\r\n[latex]67 \\% \\rightarrow 67\\div 100\\rightarrow 0.67[\/latex]\r\n\r\n&nbsp;\r\n\r\nFor each of the following, if you are given a decimal, convert it to a percentage. If you are given a percentage, convert it to a decimal.\r\n\r\nHint: To multiply a number by 100, move the decimal in the number two places to the right.\u00a0To divide a number by 100, move the decimal two places to the left.\r\n<p style=\"padding-left: 30px;\">Ex. [latex]0.3 \\times 100 = 30.0[\/latex]<\/p>\r\n<p style=\"padding-left: 30px;\">Ex. [latex]5 \\div 100 = 0.05[\/latex]<\/p>\r\n&nbsp;\r\n\r\nPart A: [latex]0.4[\/latex]\r\n\r\n[reveal-answer q=\"955896\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"955896\"]To convert a decimal to a percentage, move the decimal two places to the right and append the percent symbol.[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\nPart B: [latex]1[\/latex]\r\n\r\n[reveal-answer q=\"425549\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"425549\"]To convert a decimal to a percentage, move the decimal two places to the right and append the percent symbol.[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\nPart C: [latex]36\\%[\/latex]\r\n\r\n[reveal-answer q=\"659864\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"659864\"]To convert a percentage to a decimal, drop the percent symbol and move the decimal two places to the left.[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\nPart D: [latex]2.1[\/latex]\r\n\r\n[reveal-answer q=\"73300\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"73300\"]To convert a decimal to a percentage, move the decimal two places to the right and append the percent symbol.[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\nPart E: [latex]55.7\\%[\/latex]\r\n\r\n[reveal-answer q=\"56232\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"56232\"]To convert a percentage to a decimal, drop the percent symbol and move the decimal two places to the left.[\/hidden-answer]\r\n\r\n<\/div>\r\n<h3>Squaring Numbers<\/h3>\r\nSince the coefficient of determination is equal to the square of the correlation coefficient, we will examine the operation of squaring. Squaring a number is the same as multiplying that number by itself. For example,\r\n<p style=\"text-align: center;\">[latex]5^2=5\\cdot 5=25[\/latex]<\/p>\r\n<p style=\"text-align: center;\">[latex](-2)^2=(-2)\\cdot (-2)=4[\/latex]<\/p>\r\n<p style=\"text-align: center;\">[latex]1^2=1\\cdot 1=1[\/latex]<\/p>\r\n\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 7<\/h3>\r\nWhat can you say about the sign of a number that has been obtained through squaring?\r\n\r\n[reveal-answer q=\"417175\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"417175\"]What sign results from multiplying a negative times a negative? How about a positive times a positive? [\/hidden-answer]\r\n\r\n<\/div>\r\nDo you suppose it may be true that squaring a number always yields a larger number as in the examples above? Let's explore that idea by trying to find an example in which squaring a number yields either a smaller or the same number in return.\r\n\r\nA <strong>counterexample<\/strong> is an example that contradicts or disproves a general statement. For instance, suppose someone proposes the following general statement:\r\n<p style=\"text-align: center;\">\u201cAll people like ice cream.\u201d<\/p>\r\nA counterexample to this statement would be someone who doesn\u2019t like ice cream. It only takes one counterexample to show that a statement is false.\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 8<\/h3>\r\nSomeone makes the claim that squaring a number always makes it bigger. Find a counterexample to disprove their claim.\r\n\r\n[reveal-answer q=\"703710\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"703710\"]Consider squaring numbers other than positive integers (whole numbers).[\/hidden-answer]\r\n\r\n<\/div>\r\nQuestion 9 will help you make sense of what happens when a number is squared.\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 9<\/h3>\r\nWe can use an area model to see why the previous claim is false.\r\n\r\n<img class=\"alignnone wp-image-1229\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12192958\/Picture145-300x179.png\" alt=\"A grid with two squares drawn on it. One of them is labeled as a 3x3. The other is a 1x1 and a quarter of it is labeled as a 0.5 x 0.5.\" width=\"1072\" height=\"640\" \/>\r\n\r\nPart A: What expression is represented in the model on the left? Simplify this expression.\r\n\r\n[reveal-answer q=\"733909\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"733909\"]What number is being squared? What number results?[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\nPart B: What expression is represented in the model on the right? Simplify this expression.\r\n\r\n[reveal-answer q=\"3420\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"3420\"]What number is being squared? What number results?[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\nPart C: Why does squaring 0.5 result in a number that is smaller than 0.5?\r\n\r\n[reveal-answer q=\"528712\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"528712\"]What do <em>you<\/em> think?[\/hidden-answer]\r\n\r\n<\/div>\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 10<\/h3>\r\nUsing what you know about what happens when you square a number, explain your answers to Question 3 and Question 4, Part A.\r\n\r\n[reveal-answer q=\"17667\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"17667\"]Answer this in your own words. Discuss it with a partner if you are in a classroom.[\/hidden-answer]\r\n\r\n&nbsp;\r\n\r\n<\/div>\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 11<\/h3>\r\nFor what values of [latex]r[\/latex] will [latex]r=R^2[\/latex]? Explain your reasoning using what you know about squaring and what you know about the meaning of [latex]r[\/latex] and [latex]R^2[\/latex].\r\n\r\n[reveal-answer q=\"981293\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"981293\"]Are there any numbers which, when multiplied by themselves will equal themselves? What do these numbers imply about any possible linear correlation in a dataset? Consider the meaning of [latex]r[\/latex] and [latex]R^{2}[\/latex] in your answer.[\/hidden-answer]\r\n\r\n<\/div>\r\nNow that you have a good sense of what happens mathematically when calculating the coefficient of determination, let's return to the data analysis tool in Questions 12, 13, and. Use the knowledge you gained during this activity to create scatterplots that demonstrate a particular coefficient of determination.\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 12<\/h3>\r\nUsing what you now know about [latex]R^2[\/latex], use the <em>Explore Linear Regression<\/em> tool to create a scatterplot with a very small value for [latex]R^2[\/latex].\r\n\r\n[reveal-answer q=\"690412\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"690412\"]Use the tool to click on the graph and create data points.[\/hidden-answer]\r\n\r\n<\/div>\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 13<\/h3>\r\nBuilding on this, use the <em>Explore Linear Regression<\/em> tool to create a scatterplot with a very small value for [latex]R^2[\/latex] but also with some kind of pattern to the scatterplot (in other words, the points aren\u2019t just randomly placed).\r\n\r\n[reveal-answer q=\"875818\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"875818\"]Use the tool to click on the graph and create data points.[\/hidden-answer]\r\n\r\n<\/div>\r\nNow consider the similarities and differences in the plots you created in Questions 12 and 13. What led to [latex]R^{2}[\/latex] being so small in these cases? What other information might we need to besides [latex]r[\/latex] and [latex]R^{2}[\/latex] to make decisions about the appropriateness of fitting a line? Use this line of thought to answer Question 14.\r\n<div class=\"textbox key-takeaways\">\r\n<h3>question 14<\/h3>\r\nDetermine whether the following statement is true or false, and if it is false, provide a counterexample: \u201cIf [latex]R^2[\/latex] is very small, that means there is no relationship between the explanatory variable and the response variable.\u201d\r\n\r\n[reveal-answer q=\"915435\"]Hint[\/reveal-answer]\r\n[hidden-answer a=\"915435\"]What do <em>you<\/em> think?[\/hidden-answer]\r\n\r\n<\/div>\r\nYou've learned in depth about bivariate regression analysis over the past several sections of the course and will continue this exploration during the upcoming material and activity as you gain a deeper understanding of [latex]R^{2}[\/latex]. You can return to the following sections as needed to refresh these ideas:\r\n<ul>\r\n \t<li>[Section 5A]: bivariate data, scatterplots, trends, correlation coefficient.<\/li>\r\n \t<li>[Section 6A]: constant rates of change, graphs,\u00a0explanatory and response variables, Least Squares Regression analysis, linear modeling, residuals, line of best fit, linear equation, y-intercept, slope.<\/li>\r\n \t<li>[Section 6B]: calculating slope as rise over run, graphing lines using slope and y-intercept, mathematical models, statistical models, estimated y-intercept and estimated slope,\u00a0 extrapolation.<\/li>\r\n \t<li>[Section 6C]: understanding and interpreting the correlation coefficient, the coefficient of determination.<\/li>\r\n<\/ul>\r\nIn the following section, [6D], you'll explore an extension of residuals and then put all of your understanding together in [6E] to perform an entire analysis of bivariate data.\r\n\r\nLet's move on to the course material and activity for this section now.","rendered":"<div class=\"textbox learning-objectives\">\n<h3>what you&#8217;ll need to know<\/h3>\n<p>In this support activity you\u2019ll become familiar with the following:<\/p>\n<ul>\n<li>Compare and contrast correlation coefficients among different scatterplots<\/li>\n<li>Compare the values of the correlation coefficient\u00a0[latex]r[\/latex] and the coefficient of determination [latex]R^{2}[\/latex] for the same line.<\/li>\n<li>Use technology to explore the relationship between the correlation coefficient\u00a0[latex]r[\/latex] and coefficient of determination\u00a0[latex]R^{2}[\/latex] for a scatterplot.<\/li>\n<li>Use technology to explore the relationship between the sign of the slope, the spread and shape of the data, and the coefficient of determination [latex]R^{2}[\/latex].<\/li>\n<\/ul>\n<p>You will also have an opportunity to refresh the following skills:<\/p>\n<ul>\n<li>Express a proportion as a decimal and as a percentage.<\/li>\n<li>Determine the sign of a number that has been squared.<\/li>\n<\/ul>\n<\/div>\n<p>In the next preview assignment and in the next class, you will need to be able to express proportions as both decimals and percentages, understand what happens to a number when you square it, use technology to find the coefficient of determination ([latex]R^2[\/latex]), and interpret [latex]R^2[\/latex]. We&#8217;ll work through each of these skills in this corequisite support activity so that you&#8217;ll feel comfortable during the upcoming course activity.<\/p>\n<p>This activity follows previous sections during which you built up a deep understanding of the components and processes of linear regression. See the first paragraph below and a reference list at the end of this page for a summary of those components and definitions.<\/p>\n<h2>The Correlation Coefficient and Related Operations<\/h2>\n<p>In previous activities, we examined ways of characterizing the linear relationship between two variables, including the correlation coefficient [latex]r[\/latex] and the line of best fit. We will encounter an extension of these ideas here but first, let&#8217;s summarize what you&#8217;ve learned so far about linearly related bivariate data.<\/p>\n<ul>\n<li>In a linear relationship between two linked quantitative variables (bivariate data), the <strong>explanatory variable [latex]x[\/latex]<\/strong> is the variable thought to explain or predict the response, and the <strong>response variable [latex]y[\/latex]<\/strong> measured the outcome of interest, the response in the study. You may have seen these called the independent and dependent variables, [latex]x[\/latex] and [latex]y[\/latex] in a previous algebra class.\n<ul>\n<li>it is common to represent the explanatory variable [latex]x[\/latex] on the horizontal axis of a graph and the response variable [latex]y[\/latex] on the vertical axis.<\/li>\n<\/ul>\n<\/li>\n<li>The <strong>slope-intercept form of a linear equation is [latex]y=mx+b[\/latex]<\/strong>, where [latex]m[\/latex] represents the slope, or constant rate of change in the relationship between variables, and [latex]b[\/latex] represents the y-intercept, the point at which the input [latex]x=0[\/latex] and where the line crosses the y-axis on the graph.\n<ul>\n<li>The slope-intercept form of a linear equation is commonly expressed in statistics using <strong>[latex]\\hat{y}= a + bx[\/latex]<\/strong>, where [latex]b[\/latex] represents the constant rate of change and [latex]a[\/latex] represents the y-intercept.<\/li>\n<\/ul>\n<\/li>\n<li>We use a <strong>Least Squares Regression analysis<\/strong> to determine the equation of a <strong>line of best fit<\/strong> in order to make predictions based on an existing dataset.\n<ul>\n<li>The line of best is a line that best describes a scatterplot of the data by minimizing the total vertical distances (errors) from all the data points to the line.<\/li>\n<li>The vertical error associated with each data point (the distance from the point to the line of best fit) is called the <strong>residual<\/strong> of that data point. It lets us know how far off the prediction made by the line of best fit is from the actual observation.<\/li>\n<li>The <strong>correlation coefficient [latex]r[\/latex]<\/strong> describes the strength and direction of the linear relationship between the two quantitative variables in the dataset.<\/li>\n<\/ul>\n<\/li>\n<\/ul>\n<h3>The Correlation Coefficient<\/h3>\n<p>In this activity, we want to begin to understand a new measure: the coefficient of determination. Like the correlation coefficient, this measure will reveal information about the linear relationship in bivariate data. Your goal in this activity will be to discover how the coefficient of determination is calculated and to start to understand what it says about the data.<\/p>\n<p>Let&#8217;s begin by extending your understanding of the correlation coefficient in Question 1. Then in Questions 2 and 3, you&#8217;ll compare the correlation coefficient [latex]r[\/latex] with the coefficient of determination [latex]R^{2}[\/latex] for the same set of data points.<\/p>\n<div class=\"textbox key-takeaways\">\n<h3>question 1<\/h3>\n<p>Consider the following examples of lines of best fit, including the correlation coefficients corresponding to each scatterplot. How are the plots similar and how are they different? The first scatterplot has [latex]r=-0.72[\/latex], and the second scatterplot has [latex]r=0.75[\/latex].<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"alignnone wp-image-1223\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12192910\/Picture138-300x166.png\" alt=\"A scatterplot with a line of best fit that begins around (0, 35) and ends around (10, 28). Most points are within approximately 5 units of the line.\" width=\"1245\" height=\"689\" \/><\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"alignnone wp-image-1224\" style=\"font-size: 1em;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12192915\/Picture139-300x166.png\" alt=\"A scatterplot with a line of best fit that begins around (0, 18) and ends around (10, 41). Points are within approximately 10 units.\" width=\"1043\" height=\"577\" \/><\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q493198\">Hint<\/span><\/p>\n<div id=\"q493198\" class=\"hidden-answer\" style=\"display: none\">Consider both the [latex]r[\/latex]-values and their signs as you compare the shapes of the graphs.<\/div>\n<\/div>\n<\/div>\n<h3>Correlation Coefficient vs. Coefficient of Determination<\/h3>\n<p>You&#8217;ve seen that the correlation coefficient [latex]r[\/latex] is a measure of the strength and direction of a linear relationship. When interpreting the value of\u00a0[latex]r[\/latex], we should ask if the line of best fit for the data has a positive or negative slope and whether the data appear tightly correlated to the line.<\/p>\n<p>In Question 2, you&#8217;ll compare [latex]r[\/latex] with\u00a0[latex]R^2[\/latex] for the same data. As you do, try to develop your own understanding of how the two measures relate, then express that understanding to answer Question 3.<\/p>\n<p>Note that the coefficient of determination may be expressed either as [latex]R^{2}[\/latex] or [latex]r^{2}[\/latex].<\/p>\n<div class=\"textbox key-takeaways\">\n<h3>question 2<\/h3>\n<p>Go to the <em>Explore Linear Regression<\/em> tool at <a href=\"https:\/\/dcmathpathways.shinyapps.io\/ExploreLinReg\/\">https:\/\/dcmathpathways.shinyapps.io\/ExploreLinReg\/<\/a>. From the drop-down menu, select \u201cLinear Relationship.\u201d<\/p>\n<p>From the drop-down menu, select \u201cDraw Your Own (Click in Graph).\u201d<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"alignnone wp-image-1225\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12192923\/Picture140-300x148.png\" alt=\"A selection menu. At the top, &quot;Explore Linear Regression&quot; is selected and &quot;Scatterplot&quot; and &quot;Residual&quot; are unselected. Beneath that menu is a heading that reads &quot;Initial Relationship.&quot; Beneath it is a dropdown menu where &quot;Draw Your Own (Click in Graph)&quot; is selected and &quot;Random Scatter,&quot; &quot;Linear Relationship,&quot; and &quot;Quadratic Relationship&quot; are selected.\" width=\"1075\" height=\"529\" \/><\/p>\n<p>Part A: As we have seen before (and as the term \u201cline of best fit\u201d implies), linear regression can be an appropriate model when the scatterplot of a dataset shows a linear trend in the relationship between the explanatory variable and the response variable.<\/p>\n<p>By clicking on the graph, create a scatterplot with at least five data points that lie on (or very close to) a line with non-zero slope.<\/p>\n<p>Check the boxes for \u201cLinear Regression Line,\u201d \u201cShow Correlation Coefficient [latex]r[\/latex],\u201d and \u201cSquared Correlation Coefficient [latex]r^2[\/latex].\u201d<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"alignnone wp-image-1246\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12193122\/Picture163-300x175.png\" alt=\"A checklist with the heading &quot;Options.&quot; &quot;Linear Regression Line&quot; is selected, &quot;Smooth Trend&quot; is unselected, and &quot;Show Correlation Coefficient r&quot; and &quot;Squared Correlation Coefficient r squared&quot; are both selected.\" width=\"1226\" height=\"715\" \/><\/p>\n<p>Look at the table below the scatterplot. What is the value of the correlation coefficient? What is the value of the coefficient of determination?<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q560144\">Hint<\/span><\/p>\n<div id=\"q560144\" class=\"hidden-answer\" style=\"display: none\">When clicking the graph to create data points, ensure that they all lie on or very close to some imaginary slanted line.<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<p>Part B: Reset the scatterplot by clicking the red \u201cReset\u201d button. Now, click on the graph to create a scatterplot with at least five data points that lie near (but not on) a line with non-zero slope.<\/p>\n<p>What is the value of the correlation coefficient? What is the value of the coefficient of determination?<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q873641\">Hint<\/span><\/p>\n<div id=\"q873641\" class=\"hidden-answer\" style=\"display: none\">When clicking on the graph to create data points, ensure that your points do NOT all lie directly on one line, but DO lie near some imaginary slanted line.<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<p>Part C: Reset the scatterplot by clicking the red \u201cReset\u201d button. Now, click on the graph to create a scatterplot with at least five arbitrarily-placed data points.<\/p>\n<p>What is the value of the coefficient of determination?<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q921374\">Hint<\/span><\/p>\n<div id=\"q921374\" class=\"hidden-answer\" style=\"display: none\">When clicking on the graph to create data points, ensure that your points do NOT\u00a0 lie near any imaginary slanted line. Scatter them arbitrarily across the graph. <\/div>\n<\/div>\n<\/div>\n<div class=\"textbox key-takeaways\">\n<h3>question 3<\/h3>\n<p>Based on your answer to the previous question, what do you notice about the relationship between the correlation coefficient and the coefficient of determination?<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q767702\">Hint<\/span><\/p>\n<div id=\"q767702\" class=\"hidden-answer\" style=\"display: none\">Compare and contrast [latex]r[\/latex] and [latex]R^{2}[\/latex]. What is different about them? How do they appear in relation to one another within each graph?<\/div>\n<\/div>\n<\/div>\n<h3>Coefficient of Determination<\/h3>\n<p>Question 4 refers to the <strong>sign<\/strong> of a number. Recall that the sign of a number tells you whether that number is positive or negative. For example, the sign of the number -3 is negative, while the sign of the number 77 is positive.<\/p>\n<div class=\"textbox key-takeaways\">\n<h3>question 4<\/h3>\n<p>From the drop-down menu, select \u201cLinear Relationship.\u201d<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"alignnone wp-image-1245\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12193117\/Picture162-300x147.png\" alt=\"A selection menu. At the top, &quot;Explore Linear Regression&quot; is selected and &quot;Scatterplot&quot; and &quot;Residualplot&quot; are unselected. Beneath this is a dropdown menu where &quot;Draw Your Own (Click in Graph)&quot; and &quot;Random Scatter&quot; are unselected, &quot;Linear Relationship&quot; is selected, and &quot;Quadratic Relationship&quot; is unselected. Beneath that is another heading that says &quot;Initial Number of Points.&quot; Under it, 50 is selected and 20, 100, and 500 are all unselected.\" width=\"1113\" height=\"545\" \/><\/p>\n<p>Explore this page by changing different settings and use your observations to answer the following questions.<\/p>\n<p>&nbsp;<\/p>\n<p>Part A: Does the sign of the coefficient of determination depend on the sign of the slope of the linear relationship?<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q855147\">Hint<\/span><\/p>\n<div id=\"q855147\" class=\"hidden-answer\" style=\"display: none\">Is the coefficient of determination ever negative?<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<p>Part B: How does the spread of the data away from the line of best fit affect the coefficient of determination?<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q591969\">Hint<\/span><\/p>\n<div id=\"q591969\" class=\"hidden-answer\" style=\"display: none\">How does the value of the coefficient of determination change as the data are more spread or more tightly compact?<\/div>\n<\/div>\n<\/div>\n<div class=\"textbox key-takeaways\">\n<h3>question 5<\/h3>\n<p>Based on your observations, what do you think the coefficient of determination tells us?<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q389120\">Hint<\/span><\/p>\n<div id=\"q389120\" class=\"hidden-answer\" style=\"display: none\">What do <em>you<\/em> think?<\/div>\n<\/div>\n<\/div>\n<p>The <strong>coefficient of determination<\/strong>, denoted [latex]R^2[\/latex] and pronounced \u201cR squared,\u201d is the proportion of the variation in the response variable that can be explained by its linear relationship with the explanatory variable. Some people prefer to use the symbol [latex]r^2[\/latex] (like in the <em>DCMP Data Analysis Tools<\/em>), but [latex]R^2[\/latex] and [latex]r^2[\/latex] mean the same thing. In this course, we will use the notation [latex]R^2[\/latex]. In the preview assignment and in-class activity, we will discuss the coefficient of determination in more detail. For now, our goal is to lay the groundwork in order to be prepared for those activities coming up.<\/p>\n<p>The reason that we use this symbol is that the coefficient of determination is equal to the square of the correlation coefficient. Because of this, [latex]R^2[\/latex] is more sensitive to differences in the strength of the linear relationship between the two variables than [latex]r[\/latex] is. This increased sensitivity can be seen in the following graphic; the difference between [latex]R^2[\/latex] values is greater than the difference between corresponding [latex]r[\/latex] values.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"alignnone wp-image-1241\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12193055\/Picture157-300x79.png\" alt=\"Several scatterplots labeled by the correlation of their line of best fit. The first graph is labeled &quot;Perfect Positive Correlation&quot; and shows points exactly on the line of best fit. The line has a positive slope and the r value is 1. The second graph is labeled &quot;Strong Positive Correlation&quot; and shows points close to the line of best fit. The slope of the line is positive and the r value is 0.91. The next graph is labeled &quot;Weak Positive Correlation&quot; and shows points that are not close to the line of best fit, but still show a correlation to the line. The slope of the line is positive and the r value is 0.48. The next graph is labeled &quot;No Correlation&quot; and show points randomly scattered across the graph. There is no line of best fit and the r value is 0. The next graph is labeled &quot;Weak Negative Distribution&quot; and shows points that are not close to the line of best fit, but still show a correlation to the line. The slope of the line is negative and the r-value is -0.48. The next graph is labeled &quot;Strong Negative Correlation&quot; and shows points that are close to the line of best fit. The slope of the line is negative and the r-value is -0.91. The last graph is labeled &quot;Perfect Negative Correlation&quot; and shows points that are exactly on the line of best fit. It has a negative slope and the r-value is -1.\" width=\"1067\" height=\"281\" \/><\/p>\n<h3>Decimals and Percentages<\/h3>\n<div class=\"textbox examples\">\n<h3>Recall<\/h3>\n<p>See the Student Resource[<span style=\"color: #000000; background-color: #ffff99;\"><em>Fractions, Decimals, Percentages<\/em>]<\/span><span style=\"color: #000000;\"><em>\u00a0<\/em><\/span>for a refresher on converting decimals to percentages and vice-versa.<\/p>\n<\/div>\n<p>Practice converting between decimals and percentages in Question 6 before moving on.<\/p>\n<div class=\"textbox key-takeaways\">\n<h3>question 6<\/h3>\n<p>Depending on the tools you use, [latex]R^2[\/latex] may be expressed as a decimal or as a percentage. Even though the tool expresses [latex]R^2[\/latex] as a percentage, it is important to be able to convert between the two forms.<\/p>\n<p>If you are given a number as a decimal and want to convert it to a percentage, multiply the number by 100 and use the % symbol afterward. For example, the decimal [latex]0.489[\/latex]\u00a0 is converted to a percentage as follows:<\/p>\n<p>&nbsp;<\/p>\n<p>[latex]0.489 \\rightarrow 0.489 \\times 100 \\% \\rightarrow 48.9 \\%[\/latex]<\/p>\n<p>&nbsp;<\/p>\n<p>If you are given a number as a percentage and want to convert it to a decimal, divide the percentage by 100 and remove the % symbol. For example, the percentage [latex]67\\%[\/latex] is converted to a decimal as follows:<\/p>\n<p>&nbsp;<\/p>\n<p>[latex]67 \\% \\rightarrow 67\\div 100\\rightarrow 0.67[\/latex]<\/p>\n<p>&nbsp;<\/p>\n<p>For each of the following, if you are given a decimal, convert it to a percentage. If you are given a percentage, convert it to a decimal.<\/p>\n<p>Hint: To multiply a number by 100, move the decimal in the number two places to the right.\u00a0To divide a number by 100, move the decimal two places to the left.<\/p>\n<p style=\"padding-left: 30px;\">Ex. [latex]0.3 \\times 100 = 30.0[\/latex]<\/p>\n<p style=\"padding-left: 30px;\">Ex. [latex]5 \\div 100 = 0.05[\/latex]<\/p>\n<p>&nbsp;<\/p>\n<p>Part A: [latex]0.4[\/latex]<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q955896\">Hint<\/span><\/p>\n<div id=\"q955896\" class=\"hidden-answer\" style=\"display: none\">To convert a decimal to a percentage, move the decimal two places to the right and append the percent symbol.<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<p>Part B: [latex]1[\/latex]<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q425549\">Hint<\/span><\/p>\n<div id=\"q425549\" class=\"hidden-answer\" style=\"display: none\">To convert a decimal to a percentage, move the decimal two places to the right and append the percent symbol.<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<p>Part C: [latex]36\\%[\/latex]<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q659864\">Hint<\/span><\/p>\n<div id=\"q659864\" class=\"hidden-answer\" style=\"display: none\">To convert a percentage to a decimal, drop the percent symbol and move the decimal two places to the left.<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<p>Part D: [latex]2.1[\/latex]<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q73300\">Hint<\/span><\/p>\n<div id=\"q73300\" class=\"hidden-answer\" style=\"display: none\">To convert a decimal to a percentage, move the decimal two places to the right and append the percent symbol.<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<p>Part E: [latex]55.7\\%[\/latex]<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q56232\">Hint<\/span><\/p>\n<div id=\"q56232\" class=\"hidden-answer\" style=\"display: none\">To convert a percentage to a decimal, drop the percent symbol and move the decimal two places to the left.<\/div>\n<\/div>\n<\/div>\n<h3>Squaring Numbers<\/h3>\n<p>Since the coefficient of determination is equal to the square of the correlation coefficient, we will examine the operation of squaring. Squaring a number is the same as multiplying that number by itself. For example,<\/p>\n<p style=\"text-align: center;\">[latex]5^2=5\\cdot 5=25[\/latex]<\/p>\n<p style=\"text-align: center;\">[latex](-2)^2=(-2)\\cdot (-2)=4[\/latex]<\/p>\n<p style=\"text-align: center;\">[latex]1^2=1\\cdot 1=1[\/latex]<\/p>\n<div class=\"textbox key-takeaways\">\n<h3>question 7<\/h3>\n<p>What can you say about the sign of a number that has been obtained through squaring?<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q417175\">Hint<\/span><\/p>\n<div id=\"q417175\" class=\"hidden-answer\" style=\"display: none\">What sign results from multiplying a negative times a negative? How about a positive times a positive? <\/div>\n<\/div>\n<\/div>\n<p>Do you suppose it may be true that squaring a number always yields a larger number as in the examples above? Let&#8217;s explore that idea by trying to find an example in which squaring a number yields either a smaller or the same number in return.<\/p>\n<p>A <strong>counterexample<\/strong> is an example that contradicts or disproves a general statement. For instance, suppose someone proposes the following general statement:<\/p>\n<p style=\"text-align: center;\">\u201cAll people like ice cream.\u201d<\/p>\n<p>A counterexample to this statement would be someone who doesn\u2019t like ice cream. It only takes one counterexample to show that a statement is false.<\/p>\n<div class=\"textbox key-takeaways\">\n<h3>question 8<\/h3>\n<p>Someone makes the claim that squaring a number always makes it bigger. Find a counterexample to disprove their claim.<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q703710\">Hint<\/span><\/p>\n<div id=\"q703710\" class=\"hidden-answer\" style=\"display: none\">Consider squaring numbers other than positive integers (whole numbers).<\/div>\n<\/div>\n<\/div>\n<p>Question 9 will help you make sense of what happens when a number is squared.<\/p>\n<div class=\"textbox key-takeaways\">\n<h3>question 9<\/h3>\n<p>We can use an area model to see why the previous claim is false.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"alignnone wp-image-1229\" style=\"font-size: 1rem; text-align: initial;\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5738\/2022\/01\/12192958\/Picture145-300x179.png\" alt=\"A grid with two squares drawn on it. One of them is labeled as a 3x3. The other is a 1x1 and a quarter of it is labeled as a 0.5 x 0.5.\" width=\"1072\" height=\"640\" \/><\/p>\n<p>Part A: What expression is represented in the model on the left? Simplify this expression.<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q733909\">Hint<\/span><\/p>\n<div id=\"q733909\" class=\"hidden-answer\" style=\"display: none\">What number is being squared? What number results?<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<p>Part B: What expression is represented in the model on the right? Simplify this expression.<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q3420\">Hint<\/span><\/p>\n<div id=\"q3420\" class=\"hidden-answer\" style=\"display: none\">What number is being squared? What number results?<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<p>Part C: Why does squaring 0.5 result in a number that is smaller than 0.5?<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q528712\">Hint<\/span><\/p>\n<div id=\"q528712\" class=\"hidden-answer\" style=\"display: none\">What do <em>you<\/em> think?<\/div>\n<\/div>\n<\/div>\n<div class=\"textbox key-takeaways\">\n<h3>question 10<\/h3>\n<p>Using what you know about what happens when you square a number, explain your answers to Question 3 and Question 4, Part A.<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q17667\">Hint<\/span><\/p>\n<div id=\"q17667\" class=\"hidden-answer\" style=\"display: none\">Answer this in your own words. Discuss it with a partner if you are in a classroom.<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<\/div>\n<div class=\"textbox key-takeaways\">\n<h3>question 11<\/h3>\n<p>For what values of [latex]r[\/latex] will [latex]r=R^2[\/latex]? Explain your reasoning using what you know about squaring and what you know about the meaning of [latex]r[\/latex] and [latex]R^2[\/latex].<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q981293\">Hint<\/span><\/p>\n<div id=\"q981293\" class=\"hidden-answer\" style=\"display: none\">Are there any numbers which, when multiplied by themselves will equal themselves? What do these numbers imply about any possible linear correlation in a dataset? Consider the meaning of [latex]r[\/latex] and [latex]R^{2}[\/latex] in your answer.<\/div>\n<\/div>\n<\/div>\n<p>Now that you have a good sense of what happens mathematically when calculating the coefficient of determination, let&#8217;s return to the data analysis tool in Questions 12, 13, and. Use the knowledge you gained during this activity to create scatterplots that demonstrate a particular coefficient of determination.<\/p>\n<div class=\"textbox key-takeaways\">\n<h3>question 12<\/h3>\n<p>Using what you now know about [latex]R^2[\/latex], use the <em>Explore Linear Regression<\/em> tool to create a scatterplot with a very small value for [latex]R^2[\/latex].<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q690412\">Hint<\/span><\/p>\n<div id=\"q690412\" class=\"hidden-answer\" style=\"display: none\">Use the tool to click on the graph and create data points.<\/div>\n<\/div>\n<\/div>\n<div class=\"textbox key-takeaways\">\n<h3>question 13<\/h3>\n<p>Building on this, use the <em>Explore Linear Regression<\/em> tool to create a scatterplot with a very small value for [latex]R^2[\/latex] but also with some kind of pattern to the scatterplot (in other words, the points aren\u2019t just randomly placed).<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q875818\">Hint<\/span><\/p>\n<div id=\"q875818\" class=\"hidden-answer\" style=\"display: none\">Use the tool to click on the graph and create data points.<\/div>\n<\/div>\n<\/div>\n<p>Now consider the similarities and differences in the plots you created in Questions 12 and 13. What led to [latex]R^{2}[\/latex] being so small in these cases? What other information might we need to besides [latex]r[\/latex] and [latex]R^{2}[\/latex] to make decisions about the appropriateness of fitting a line? Use this line of thought to answer Question 14.<\/p>\n<div class=\"textbox key-takeaways\">\n<h3>question 14<\/h3>\n<p>Determine whether the following statement is true or false, and if it is false, provide a counterexample: \u201cIf [latex]R^2[\/latex] is very small, that means there is no relationship between the explanatory variable and the response variable.\u201d<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q915435\">Hint<\/span><\/p>\n<div id=\"q915435\" class=\"hidden-answer\" style=\"display: none\">What do <em>you<\/em> think?<\/div>\n<\/div>\n<\/div>\n<p>You&#8217;ve learned in depth about bivariate regression analysis over the past several sections of the course and will continue this exploration during the upcoming material and activity as you gain a deeper understanding of [latex]R^{2}[\/latex]. You can return to the following sections as needed to refresh these ideas:<\/p>\n<ul>\n<li>[Section 5A]: bivariate data, scatterplots, trends, correlation coefficient.<\/li>\n<li>[Section 6A]: constant rates of change, graphs,\u00a0explanatory and response variables, Least Squares Regression analysis, linear modeling, residuals, line of best fit, linear equation, y-intercept, slope.<\/li>\n<li>[Section 6B]: calculating slope as rise over run, graphing lines using slope and y-intercept, mathematical models, statistical models, estimated y-intercept and estimated slope,\u00a0 extrapolation.<\/li>\n<li>[Section 6C]: understanding and interpreting the correlation coefficient, the coefficient of determination.<\/li>\n<\/ul>\n<p>In the following section, [6D], you&#8217;ll explore an extension of residuals and then put all of your understanding together in [6E] to perform an entire analysis of bivariate data.<\/p>\n<p>Let&#8217;s move on to the course material and activity for this section now.<\/p>\n","protected":false},"author":428269,"menu_order":12,"template":"","meta":{"_candela_citation":"[]","CANDELA_OUTCOMES_GUID":"","pb_show_title":"on","pb_short_title":"","pb_subtitle":"","pb_authors":[],"pb_section_license":""},"chapter-type":[],"contributor":[],"license":[],"class_list":["post-3857","chapter","type-chapter","status-publish","hentry"],"part":4241,"_links":{"self":[{"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/pressbooks\/v2\/chapters\/3857","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/pressbooks\/v2\/chapters"}],"about":[{"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/wp\/v2\/types\/chapter"}],"author":[{"embeddable":true,"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/wp\/v2\/users\/428269"}],"version-history":[{"count":16,"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/pressbooks\/v2\/chapters\/3857\/revisions"}],"predecessor-version":[{"id":4802,"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/pressbooks\/v2\/chapters\/3857\/revisions\/4802"}],"part":[{"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/pressbooks\/v2\/parts\/4241"}],"metadata":[{"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/pressbooks\/v2\/chapters\/3857\/metadata\/"}],"wp:attachment":[{"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/wp\/v2\/media?parent=3857"}],"wp:term":[{"taxonomy":"chapter-type","embeddable":true,"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/pressbooks\/v2\/chapter-type?post=3857"},{"taxonomy":"contributor","embeddable":true,"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/wp\/v2\/contributor?post=3857"},{"taxonomy":"license","embeddable":true,"href":"https:\/\/courses.lumenlearning.com\/lumen-danacenter-statsmockup\/wp-json\/wp\/v2\/license?post=3857"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}