{"id":281,"date":"2021-07-14T15:59:05","date_gmt":"2021-07-14T15:59:05","guid":{"rendered":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/chapter\/rare-events-the-sample-decision-and-conclusion\/"},"modified":"2023-12-05T09:34:06","modified_gmt":"2023-12-05T09:34:06","slug":"rare-events-the-sample-decision-and-conclusion","status":"publish","type":"chapter","link":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/chapter\/rare-events-the-sample-decision-and-conclusion\/","title":{"raw":"Drawing Conclusions","rendered":"Drawing Conclusions"},"content":{"raw":"<div class=\"textbox learning-objectives\">\r\n<h3>Learning Outcomes<\/h3>\r\n<section>\r\n<ul id=\"list67\">\r\n \t<li>State a conclusion to a hypothesis test in statistical terms and in context<\/li>\r\n<\/ul>\r\n<\/section><\/div>\r\nEstablishing the type of distribution, sample size, and known or unknown standard deviation can help you figure out how to go about a hypothesis test. However, there are several other factors you should consider when working out a hypothesis test.\r\n<h2>Rare Events<\/h2>\r\nSuppose you make an assumption about a property of the population (this assumption is the <strong>null hypothesis<\/strong>). Then you gather sample data randomly. If the sample has properties that would be very <strong>unlikely<\/strong> to occur if the assumption is true, then you would conclude that your assumption about the population is probably incorrect. (Remember that your assumption is just an <strong>assumption<\/strong>\u2014it is not a fact and it may or may not be true. But your sample data are real and the data are showing you a fact that seems to contradict your assumption.)\r\n\r\nFor example, Didi and Ali are at a birthday party of a very wealthy friend. They hurry to be first in line to grab a prize from a tall basket that they cannot see inside because they will be blindfolded. There are 200 plastic bubbles in the basket and Didi and Ali have been told that there is only one with a $100 bill. Didi is the first person to reach into the basket and pull out a bubble. Her bubble contains a $100 bill. The probability of this happening is [latex]\\displaystyle\\frac{{1}}{{200}}={0.005}[\/latex]. Because this is so unlikely, Ali is hoping that what the two of them were told is wrong and there are more $100 bills in the basket. A \"rare event\" has occurred (Didi getting the $100 bill) so Ali doubts the assumption about only one $100 bill being in the basket.\r\n<h2>Using the Sample to Test the Null Hypothesis<\/h2>\r\nUse the sample data to calculate the actual probability of getting the test result, called the <strong><em data-redactor-tag=\"em\">p<\/em>-value<\/strong>. The <em>p<\/em>-value is the <strong>probability that, if the null hypothesis is true, the results from another randomly selected sample will be as extreme or more extreme as the results obtained from the given sample<\/strong>.\r\n\r\nA large <em>p<\/em>-value calculated from the data indicates that we should not reject the <strong>null hypothesis<\/strong>. The smaller the <em>p<\/em>-value, the more unlikely the outcome, and the stronger the evidence is against the null hypothesis. We would reject the null hypothesis if the evidence is strongly against it.\r\n\r\n<strong>Draw a graph that shows the <em data-redactor-tag=\"em\">p<\/em>-value. The hypothesis test is easier to perform if you use a graph because you see the problem more clearly.<\/strong>\r\n<div class=\"textbox examples\">\r\n<h3>Recall:\u00a0RECALL EVALUATING EXPRESSIONS<\/h3>\r\nWe use letters to represent unknown numerical values, these are called variables. Any variable in an algebraic expression may take on or be assigned different values. When that happens, the value of the algebraic expression changes. To evaluate an algebraic expression means to determine the value of the expression for a given value of each variable in the expression. Replace each variable in the expression with the given value then simplify the resulting expression using the order of operations.\r\n\r\n<\/div>\r\n<div class=\"textbox exercises\">\r\n<h3>Example 1<\/h3>\r\nSuppose a baker claims that his bread height is more than 15 cm, on average. Several of his customers do not believe him. To persuade his customers that he is right, the baker decides to do a hypothesis test. He bakes 10 loaves of bread. The mean height of the sample loaves is 17 cm. The baker knows from baking hundreds of loaves of bread that the <strong>standard deviation<\/strong> for the height is 0.5 cm and the distribution of heights is normal.\r\n\r\nThe null hypothesis could be <em>H<sub data-redactor-tag=\"sub\">0<\/sub><\/em>: <em>\u03bc<\/em> \u2264 15\r\n\r\nThe alternate hypothesis is <em>H<sub data-redactor-tag=\"sub\">a<\/sub><\/em>: <em>\u03bc<\/em> &gt; 15\r\n\r\nThe words <strong>\"is more than\"<\/strong> translates as a \"&gt;\" so \"<em>\u03bc<\/em> &gt; 15\" goes into the alternate hypothesis. The null hypothesis must contradict the alternate hypothesis.\r\n\r\nSince <strong><em data-redactor-tag=\"em\">\u03c3<\/em> is known<\/strong> (<em>\u03c3<\/em> = 0.5 cm.), the distribution for the population is known to be normal with mean <em>\u03bc<\/em> = 15 and standard deviation [latex]\\displaystyle\\frac{\\sigma}{\\sqrt{n}}=\\frac{0.5}{\\sqrt{10}}=0.16[\/latex]\r\n\r\nSuppose the null hypothesis is true (the mean height of the loaves is no more than 15 cm). Then is the mean height (17 cm) calculated from the sample unexpectedly large? The hypothesis test works by asking the question how <strong>unlikely<\/strong> the sample mean would be if the null hypothesis were true. The graph shows how far out the sample mean is on the normal curve. The <em data-effect=\"italics\">p<\/em>-value is the probability that, if we were to take other samples, any other sample mean would fall at least as far out as 17 cm.\r\n\r\n<section id=\"fs-idp139727497741440\" data-depth=\"1\">\r\n<div class=\"example\" data-type=\"example\"><section>\r\n<p id=\"element-537\"><strong>The <em data-effect=\"italics\">p<\/em>-value, then, is the probability that a sample mean is the same or greater than 17 cm when the population mean is, in fact, 15 cm.<\/strong> We can calculate this probability using the normal distribution for means.<\/p>\r\n<img class=\"aligncenter wp-image-2044 size-full\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5668\/2021\/07\/24170025\/2f61b0509a9a989fe93d63ca178fc0b11363632f.jpeg\" alt=\"Normal distribution curve on average bread heights with values 15, as the population mean, and 17, as the point to determine the p-value, on the x-axis.\" width=\"487\" height=\"208\" \/>\r\n<p id=\"fs-idp85594448\"><em data-effect=\"italics\">p<\/em>-value = <em data-effect=\"italics\">P<\/em>([latex]\\overline{x}[\/latex]\u00a0&gt; 17) which is approximately zero.<\/p>\r\n<p id=\"element-710\">A <em data-effect=\"italics\">p<\/em>-value of approximately zero tells us that it is highly unlikely that a loaf of bread rises no more than 15 cm, on average. That is, almost 0% of all loaves of bread would be at least as high as 17 cm\u00a0<strong>purely by CHANCE<\/strong> had the population mean height really been 15 cm. Because the outcome of 17 cm is so <strong>unlikely (meaning it is happening NOT by chance alone)<\/strong>, we conclude that the evidence is strongly against the null hypothesis (the mean height is at most 15 cm). There is sufficient evidence that the true mean height for the population of the baker's loaves of bread is greater than 15 cm.<\/p>\r\n\r\n<\/section><\/div>\r\n<\/section><\/div>\r\n<div class=\"textbox key-takeaways\">\r\n<h3>try it 1<\/h3>\r\n<section id=\"fs-idp139727497741440\" data-depth=\"1\">\r\n<div id=\"fs-idm19107408\" class=\"note statistics try ui-has-child-title\" data-type=\"note\" data-has-label=\"true\" data-label=\"\"><section>\r\n<div class=\"exercise\" data-type=\"exercise\"><section>\r\n<div id=\"eip-747\" class=\"problem\" data-type=\"problem\">\r\n\r\nA normal distribution has a standard deviation of 1. We want to verify a claim that the mean is greater than 12. A sample of 36 is taken with a sample mean of 12.5.\r\n<p id=\"eip-idp83058144\"><em data-effect=\"italics\">H<sub>0<\/sub><\/em>: <em data-effect=\"italics\">\u03bc<\/em> \u2264 12<\/p>\r\n<em data-effect=\"italics\">H<sub>a<\/sub><\/em>: <em data-effect=\"italics\">\u03bc<\/em> &gt; 12\r\n\r\nThe <em data-effect=\"italics\">p<\/em>-value is 0.0013\r\n\r\nDraw a graph that shows the <em data-effect=\"italics\">p<\/em>-value.\r\n\r\n[reveal-answer q=\"589447\"]Show Answer[\/reveal-answer]\r\n[hidden-answer a=\"589447\"]\r\n<h2 data-type=\"title\"><a href=\"https:\/\/courses.candelalearning.com\/masterystats1x6xmaster\/wp-content\/uploads\/sites\/419\/2015\/06\/CNX_Stats_C09_M07_tryit001anno.jpg\"><img class=\"size-full wp-image-732 alignnone\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/132\/2016\/04\/21214657\/CNX_Stats_C09_M07_tryit001anno.jpg\" alt=\"Normal distribution curve on average bread heights with values 12, as the population mean, and 12.5, as the point to determine the p-value, on the x-axis.\" width=\"487\" height=\"187\" \/><\/a><\/h2>\r\n<em>p-<\/em>value = 0.0013\r\n\r\n[\/hidden-answer]\r\n\r\n<\/div>\r\n<\/section><\/div>\r\n<\/section><\/div>\r\n<\/section><\/div>","rendered":"<div class=\"textbox learning-objectives\">\n<h3>Learning Outcomes<\/h3>\n<section>\n<ul id=\"list67\">\n<li>State a conclusion to a hypothesis test in statistical terms and in context<\/li>\n<\/ul>\n<\/section>\n<\/div>\n<p>Establishing the type of distribution, sample size, and known or unknown standard deviation can help you figure out how to go about a hypothesis test. However, there are several other factors you should consider when working out a hypothesis test.<\/p>\n<h2>Rare Events<\/h2>\n<p>Suppose you make an assumption about a property of the population (this assumption is the <strong>null hypothesis<\/strong>). Then you gather sample data randomly. If the sample has properties that would be very <strong>unlikely<\/strong> to occur if the assumption is true, then you would conclude that your assumption about the population is probably incorrect. (Remember that your assumption is just an <strong>assumption<\/strong>\u2014it is not a fact and it may or may not be true. But your sample data are real and the data are showing you a fact that seems to contradict your assumption.)<\/p>\n<p>For example, Didi and Ali are at a birthday party of a very wealthy friend. They hurry to be first in line to grab a prize from a tall basket that they cannot see inside because they will be blindfolded. There are 200 plastic bubbles in the basket and Didi and Ali have been told that there is only one with a $100 bill. Didi is the first person to reach into the basket and pull out a bubble. Her bubble contains a $100 bill. The probability of this happening is [latex]\\displaystyle\\frac{{1}}{{200}}={0.005}[\/latex]. Because this is so unlikely, Ali is hoping that what the two of them were told is wrong and there are more $100 bills in the basket. A &#8220;rare event&#8221; has occurred (Didi getting the $100 bill) so Ali doubts the assumption about only one $100 bill being in the basket.<\/p>\n<h2>Using the Sample to Test the Null Hypothesis<\/h2>\n<p>Use the sample data to calculate the actual probability of getting the test result, called the <strong><em data-redactor-tag=\"em\">p<\/em>-value<\/strong>. The <em>p<\/em>-value is the <strong>probability that, if the null hypothesis is true, the results from another randomly selected sample will be as extreme or more extreme as the results obtained from the given sample<\/strong>.<\/p>\n<p>A large <em>p<\/em>-value calculated from the data indicates that we should not reject the <strong>null hypothesis<\/strong>. The smaller the <em>p<\/em>-value, the more unlikely the outcome, and the stronger the evidence is against the null hypothesis. We would reject the null hypothesis if the evidence is strongly against it.<\/p>\n<p><strong>Draw a graph that shows the <em data-redactor-tag=\"em\">p<\/em>-value. The hypothesis test is easier to perform if you use a graph because you see the problem more clearly.<\/strong><\/p>\n<div class=\"textbox examples\">\n<h3>Recall:\u00a0RECALL EVALUATING EXPRESSIONS<\/h3>\n<p>We use letters to represent unknown numerical values, these are called variables. Any variable in an algebraic expression may take on or be assigned different values. When that happens, the value of the algebraic expression changes. To evaluate an algebraic expression means to determine the value of the expression for a given value of each variable in the expression. Replace each variable in the expression with the given value then simplify the resulting expression using the order of operations.<\/p>\n<\/div>\n<div class=\"textbox exercises\">\n<h3>Example 1<\/h3>\n<p>Suppose a baker claims that his bread height is more than 15 cm, on average. Several of his customers do not believe him. To persuade his customers that he is right, the baker decides to do a hypothesis test. He bakes 10 loaves of bread. The mean height of the sample loaves is 17 cm. The baker knows from baking hundreds of loaves of bread that the <strong>standard deviation<\/strong> for the height is 0.5 cm and the distribution of heights is normal.<\/p>\n<p>The null hypothesis could be <em>H<sub data-redactor-tag=\"sub\">0<\/sub><\/em>: <em>\u03bc<\/em> \u2264 15<\/p>\n<p>The alternate hypothesis is <em>H<sub data-redactor-tag=\"sub\">a<\/sub><\/em>: <em>\u03bc<\/em> &gt; 15<\/p>\n<p>The words <strong>&#8220;is more than&#8221;<\/strong> translates as a &#8220;&gt;&#8221; so &#8220;<em>\u03bc<\/em> &gt; 15&#8243; goes into the alternate hypothesis. The null hypothesis must contradict the alternate hypothesis.<\/p>\n<p>Since <strong><em data-redactor-tag=\"em\">\u03c3<\/em> is known<\/strong> (<em>\u03c3<\/em> = 0.5 cm.), the distribution for the population is known to be normal with mean <em>\u03bc<\/em> = 15 and standard deviation [latex]\\displaystyle\\frac{\\sigma}{\\sqrt{n}}=\\frac{0.5}{\\sqrt{10}}=0.16[\/latex]<\/p>\n<p>Suppose the null hypothesis is true (the mean height of the loaves is no more than 15 cm). Then is the mean height (17 cm) calculated from the sample unexpectedly large? The hypothesis test works by asking the question how <strong>unlikely<\/strong> the sample mean would be if the null hypothesis were true. The graph shows how far out the sample mean is on the normal curve. The <em data-effect=\"italics\">p<\/em>-value is the probability that, if we were to take other samples, any other sample mean would fall at least as far out as 17 cm.<\/p>\n<section id=\"fs-idp139727497741440\" data-depth=\"1\">\n<div class=\"example\" data-type=\"example\">\n<section>\n<p id=\"element-537\"><strong>The <em data-effect=\"italics\">p<\/em>-value, then, is the probability that a sample mean is the same or greater than 17 cm when the population mean is, in fact, 15 cm.<\/strong> We can calculate this probability using the normal distribution for means.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter wp-image-2044 size-full\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/5668\/2021\/07\/24170025\/2f61b0509a9a989fe93d63ca178fc0b11363632f.jpeg\" alt=\"Normal distribution curve on average bread heights with values 15, as the population mean, and 17, as the point to determine the p-value, on the x-axis.\" width=\"487\" height=\"208\" \/><\/p>\n<p id=\"fs-idp85594448\"><em data-effect=\"italics\">p<\/em>-value = <em data-effect=\"italics\">P<\/em>([latex]\\overline{x}[\/latex]\u00a0&gt; 17) which is approximately zero.<\/p>\n<p id=\"element-710\">A <em data-effect=\"italics\">p<\/em>-value of approximately zero tells us that it is highly unlikely that a loaf of bread rises no more than 15 cm, on average. That is, almost 0% of all loaves of bread would be at least as high as 17 cm\u00a0<strong>purely by CHANCE<\/strong> had the population mean height really been 15 cm. Because the outcome of 17 cm is so <strong>unlikely (meaning it is happening NOT by chance alone)<\/strong>, we conclude that the evidence is strongly against the null hypothesis (the mean height is at most 15 cm). There is sufficient evidence that the true mean height for the population of the baker&#8217;s loaves of bread is greater than 15 cm.<\/p>\n<\/section>\n<\/div>\n<\/section>\n<\/div>\n<div class=\"textbox key-takeaways\">\n<h3>try it 1<\/h3>\n<section id=\"fs-idp139727497741440\" data-depth=\"1\">\n<div id=\"fs-idm19107408\" class=\"note statistics try ui-has-child-title\" data-type=\"note\" data-has-label=\"true\" data-label=\"\">\n<section>\n<div class=\"exercise\" data-type=\"exercise\">\n<section>\n<div id=\"eip-747\" class=\"problem\" data-type=\"problem\">\n<p>A normal distribution has a standard deviation of 1. We want to verify a claim that the mean is greater than 12. A sample of 36 is taken with a sample mean of 12.5.<\/p>\n<p id=\"eip-idp83058144\"><em data-effect=\"italics\">H<sub>0<\/sub><\/em>: <em data-effect=\"italics\">\u03bc<\/em> \u2264 12<\/p>\n<p><em data-effect=\"italics\">H<sub>a<\/sub><\/em>: <em data-effect=\"italics\">\u03bc<\/em> &gt; 12<\/p>\n<p>The <em data-effect=\"italics\">p<\/em>-value is 0.0013<\/p>\n<p>Draw a graph that shows the <em data-effect=\"italics\">p<\/em>-value.<\/p>\n<div class=\"qa-wrapper\" style=\"display: block\"><span class=\"show-answer collapsed\" style=\"cursor: pointer\" data-target=\"q589447\">Show Answer<\/span><\/p>\n<div id=\"q589447\" class=\"hidden-answer\" style=\"display: none\">\n<h2 data-type=\"title\"><a href=\"https:\/\/courses.candelalearning.com\/masterystats1x6xmaster\/wp-content\/uploads\/sites\/419\/2015\/06\/CNX_Stats_C09_M07_tryit001anno.jpg\"><img loading=\"lazy\" decoding=\"async\" class=\"size-full wp-image-732 alignnone\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/132\/2016\/04\/21214657\/CNX_Stats_C09_M07_tryit001anno.jpg\" alt=\"Normal distribution curve on average bread heights with values 12, as the population mean, and 12.5, as the point to determine the p-value, on the x-axis.\" width=\"487\" height=\"187\" \/><\/a><\/h2>\n<p><em>p-<\/em>value = 0.0013<\/p>\n<\/div>\n<\/div>\n<\/div>\n<\/section>\n<\/div>\n<\/section>\n<\/div>\n<\/section>\n<\/div>\n\n\t\t\t <section class=\"citations-section\" role=\"contentinfo\">\n\t\t\t <h3>Candela Citations<\/h3>\n\t\t\t\t\t <div>\n\t\t\t\t\t\t <div id=\"citation-list-281\">\n\t\t\t\t\t\t\t <div class=\"licensing\"><div class=\"license-attribution-dropdown-subheading\">CC licensed content, Shared previously<\/div><ul class=\"citation-list\"><li>Rare Events, the Sample, Decision and Conclusion. <strong>Provided by<\/strong>: OpenStax. <strong>Located at<\/strong>: <a target=\"_blank\" href=\"https:\/\/openstax.org\/books\/statistics\/pages\/9-4-rare-events-the-sample-and-the-decision-and-conclusion\">https:\/\/openstax.org\/books\/statistics\/pages\/9-4-rare-events-the-sample-and-the-decision-and-conclusion<\/a>. <strong>License<\/strong>: <em><a target=\"_blank\" rel=\"license\" href=\"https:\/\/creativecommons.org\/licenses\/by\/4.0\/\">CC BY: Attribution<\/a><\/em>. <strong>License Terms<\/strong>: Access for free at https:\/\/openstax.org\/books\/statistics\/pages\/1-introduction<\/li><li>Introductory Statistics. <strong>Authored by<\/strong>: Barbara Illowsky, Susan Dean. <strong>Provided by<\/strong>: OpenStax. <strong>Located at<\/strong>: <a target=\"_blank\" href=\"https:\/\/openstax.org\/books\/introductory-statistics\/pages\/1-introduction\">https:\/\/openstax.org\/books\/introductory-statistics\/pages\/1-introduction<\/a>. <strong>License<\/strong>: <em><a target=\"_blank\" rel=\"license\" href=\"https:\/\/creativecommons.org\/licenses\/by\/4.0\/\">CC BY: Attribution<\/a><\/em>. <strong>License Terms<\/strong>: Access for free at https:\/\/openstax.org\/books\/introductory-statistics\/pages\/1-introduction<\/li><li>Prealgebra. <strong>Provided by<\/strong>: OpenStax. <strong>Located at<\/strong>: <a target=\"_blank\" href=\"https:\/\/openstax.org\/books\/prealgebra\/pages\/1-introduction\">https:\/\/openstax.org\/books\/prealgebra\/pages\/1-introduction<\/a>. <strong>License<\/strong>: <em><a target=\"_blank\" rel=\"license\" href=\"https:\/\/creativecommons.org\/licenses\/by\/4.0\/\">CC BY: Attribution<\/a><\/em>. <strong>License Terms<\/strong>: Access for free at https:\/\/openstax.org\/books\/prealgebra\/pages\/1-introduction<\/li><\/ul><\/div>\n\t\t\t\t\t\t <\/div>\n\t\t\t\t\t <\/div>\n\t\t\t <\/section>","protected":false},"author":169134,"menu_order":16,"template":"","meta":{"_candela_citation":"[{\"type\":\"cc\",\"description\":\"Rare Events, the Sample, Decision and 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https:\/\/openstax.org\/books\/prealgebra\/pages\/1-introduction\"}]","CANDELA_OUTCOMES_GUID":"","pb_show_title":"on","pb_short_title":"","pb_subtitle":"","pb_authors":[],"pb_section_license":""},"chapter-type":[],"contributor":[],"license":[],"class_list":["post-281","chapter","type-chapter","status-publish","hentry"],"part":276,"_links":{"self":[{"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/pressbooks\/v2\/chapters\/281","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/pressbooks\/v2\/chapters"}],"about":[{"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/wp\/v2\/types\/chapter"}],"author":[{"embeddable":true,"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/wp\/v2\/users\/169134"}],"version-history":[{"count":27,"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/pressbooks\/v2\/chapters\/281\/revisions"}],"predecessor-version":[{"id":3846,"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/pressbooks\/v2\/chapters\/281\/revisions\/3846"}],"part":[{"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/pressbooks\/v2\/parts\/276"}],"metadata":[{"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/pressbooks\/v2\/chapters\/281\/metadata\/"}],"wp:attachment":[{"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/wp\/v2\/media?parent=281"}],"wp:term":[{"taxonomy":"chapter-type","embeddable":true,"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/pressbooks\/v2\/chapter-type?post=281"},{"taxonomy":"contributor","embeddable":true,"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/wp\/v2\/contributor?post=281"},{"taxonomy":"license","embeddable":true,"href":"https:\/\/courses.lumenlearning.com\/introstatscorequisite\/wp-json\/wp\/v2\/license?post=281"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}