{"id":1193,"date":"2025-07-23T20:10:14","date_gmt":"2025-07-23T20:10:14","guid":{"rendered":"https:\/\/content.one.lumenlearning.com\/precalculus\/?post_type=chapter&#038;p=1193"},"modified":"2026-03-19T18:50:17","modified_gmt":"2026-03-19T18:50:17","slug":"exponential-and-logarithmic-models-learn-it-4-2","status":"publish","type":"chapter","link":"https:\/\/content.one.lumenlearning.com\/precalculus\/chapter\/exponential-and-logarithmic-models-learn-it-4-2\/","title":{"raw":"Exponential and Logarithmic Models: Learn It 4","rendered":"Exponential and Logarithmic Models: Learn It 4"},"content":{"raw":"<h2>Choosing an Appropriate Model for Data<\/h2>\r\nNow that we have discussed various mathematical models, we need to learn how to choose the appropriate model for the raw data we have. Many factors influence the choice of a mathematical model among which are experience, scientific laws, and patterns in the data itself. Not all data can be described by elementary functions. Sometimes a function is chosen that approximates the data over a given interval.\r\n\r\nThree kinds of functions that are often useful in mathematical models are <strong>linear functions<\/strong>, <strong>exponential functions<\/strong>, and <strong>logarithmic functions<\/strong>. If the data lies on a straight line or seems to lie approximately along a straight line, a linear model may be best. If the data is non-linear, we often consider an exponential or logarithmic model although other models, such as quadratic models, may also be considered.\r\n\r\nIn choosing between an exponential model and a logarithmic model, we look at the way the data curves. This is called the <strong>concavity<\/strong>. If we draw a line between two data points, and all (or most) of the data between those two points lies above that line, we say the curve is concave down. We can think of it as a bowl that bends downward and therefore cannot hold water. If all (or most) of the data between those two points lies below the line, we say the curve is concave up. In this case, we can think of a bowl that bends upward and can therefore hold water.\r\n<ul>\r\n \t<li>An <strong>exponential<\/strong> curve, whether rising or falling, whether representing growth or decay, is always <strong>concave up<\/strong> away from its horizontal asymptote.<\/li>\r\n \t<li>A <strong>logarithmic<\/strong> curve is always <strong>concave down<\/strong> away from its vertical asymptote.<\/li>\r\n<\/ul>\r\nIn the case of positive data, which is the most common case, an exponential curve is always concave up and a logarithmic curve always concave down.\r\n\r\nA logistic curve changes concavity. It starts out concave up and then changes to concave down beyond a certain point, called a point of inflection.\r\n\r\nAfter using the graph to help us choose a type of function to use as a model, we substitute points, and solve to find the parameters. We reduce round-off error by choosing points as far apart as possible.\r\n\r\n<section class=\"textbox example\" aria-label=\"Example\">Does a linear, exponential, logarithmic, or logistic model best fit the values listed below? Find the model, and use a graph to check your choice.\r\n<table summary=\"..\">\r\n<tbody>\r\n<tr>\r\n<td><strong>[latex]x[\/latex]<\/strong><\/td>\r\n<td>[latex]1[\/latex]<\/td>\r\n<td>[latex]2[\/latex]<\/td>\r\n<td>[latex]3[\/latex]<\/td>\r\n<td>[latex]4[\/latex]<\/td>\r\n<td>[latex]5[\/latex]<\/td>\r\n<td>[latex]6[\/latex]<\/td>\r\n<td>[latex]7[\/latex]<\/td>\r\n<td>[latex]8[\/latex]<\/td>\r\n<td>[latex]9[\/latex]<\/td>\r\n<\/tr>\r\n<tr>\r\n<td><strong>[latex]y[\/latex]<\/strong><\/td>\r\n<td>[latex]0[\/latex]<\/td>\r\n<td>[latex]1.386[\/latex]<\/td>\r\n<td>[latex]2.197[\/latex]<\/td>\r\n<td>[latex]2.773[\/latex]<\/td>\r\n<td>[latex]3.219[\/latex]<\/td>\r\n<td>[latex]3.584[\/latex]<\/td>\r\n<td>[latex]3.892[\/latex]<\/td>\r\n<td>[latex]4.159[\/latex]<\/td>\r\n<td>[latex]4.394[\/latex]<\/td>\r\n<\/tr>\r\n<\/tbody>\r\n<\/table>\r\n[reveal-answer q=\"852220\"]Show Solution[\/reveal-answer]\r\n[hidden-answer a=\"852220\"]\r\n\r\nFirst, plot the data on a graph as in the graph below. For the purpose of graphing, round the data to two significant digits.\r\n\r\n<img class=\"aligncenter\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/896\/2016\/11\/03181351\/CNX_Precalc_Figure_04_07_0082.jpg\" alt=\"Graph of the previous table\u2019s values.\" width=\"487\" height=\"476\" \/>\r\n\r\nClearly, the points do not lie on a straight line, so we reject a linear model. If we draw a line between any two of the points, most or all of the points between those two points lie above the line, so the graph is concave down, suggesting a logarithmic model. We can try [latex]y=a\\mathrm{ln}\\left(bx\\right)[\/latex]. Plugging in the first point, [latex]\\left(\\text{1,0}\\right)[\/latex], gives [latex]0=a\\mathrm{ln}b[\/latex]. We reject the case that [latex]a\u00a0= 0[\/latex] (if it were, all outputs would be 0), so we know\r\n<p style=\"text-align: center;\">[latex]\\mathrm{ln}\\left(b\\right)=0[\/latex]. Thus <em>b\u00a0<\/em>= 1 and [latex]y=a\\mathrm{ln}\\left(\\text{x}\\right)[\/latex]. Next we can use the point [latex]\\left(\\text{9,4}\\text{.394}\\right)[\/latex] to solve for [latex]a[\/latex]:\r\n[latex]\\begin{array}{l}y=a\\mathrm{ln}\\left(x\\right)\\hfill \\\\ 4.394=a\\mathrm{ln}\\left(9\\right)\\hfill \\\\ a=\\frac{4.394}{\\mathrm{ln}\\left(9\\right)}\\hfill \\end{array}[\/latex]<\/p>\r\nBecause [latex]a=\\frac{4.394}{\\mathrm{ln}\\left(9\\right)}\\approx 2[\/latex], an appropriate model for the data is [latex]y=2\\mathrm{ln}\\left(x\\right)[\/latex].\r\n\r\nTo check the accuracy of the model, we graph the function together with the given points.\r\n\r\n[caption id=\"\" align=\"aligncenter\" width=\"487\"]<img src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/896\/2016\/11\/03181353\/CNX_Precalc_Figure_04_07_009a2.jpg\" alt=\"Graph of previous table\u2019s values showing that it fits the function y=2ln(x) with an asymptote at x=0.\" width=\"487\" height=\"476\" \/> The graph of [latex]y=2\\mathrm{ln}x[\/latex].[\/caption]We can conclude that the model is a good fit to the data. Compare the figure above\u00a0to the graph of [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)[\/latex] shown below.[caption id=\"\" align=\"aligncenter\" width=\"487\"]<img src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/896\/2016\/11\/03181356\/CNX_Precalc_Figure_04_07_009b2.jpg\" alt=\"Graph of previous table\u2019s values showing that it fits the function y=2ln(x) with an asymptote at x=0.\" width=\"487\" height=\"476\" \/> The graph of [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)[\/latex][\/caption]The graphs appear to be identical when [latex]x\u00a0&gt; 0[\/latex]. A quick check confirms this conclusion: [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)=2\\mathrm{ln}\\left(x\\right)[\/latex] for [latex]x\u00a0&gt; 0[\/latex]. However, if [latex]x\u00a0&lt; 0[\/latex], the graph of [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)[\/latex] includes an \"extra\" branch as shown below. This occurs because while [latex]y=2\\mathrm{ln}\\left(x\\right)[\/latex] cannot have negative values in the domain (as such values would force the argument to be negative), the function [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)[\/latex] can have negative domain values.<img src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/896\/2016\/11\/03181358\/CNX_Precalc_Figure_04_07_0102.jpg\" alt=\"Graph of y=ln(x^2).\" width=\"487\" height=\"216\" \/>[\/hidden-answer]<\/section><section aria-label=\"Example\"><section class=\"textbox example\" aria-label=\"Example\">Does a linear, exponential, or logarithmic model best fit the data in the table below? Find the model.\r\n<table summary=\"..\">\r\n<tbody>\r\n<tr>\r\n<td><strong>[latex]x[\/latex]<\/strong><\/td>\r\n<td>[latex]1[\/latex]<\/td>\r\n<td>[latex]2[\/latex]<\/td>\r\n<td>[latex]3[\/latex]<\/td>\r\n<td>[latex]4[\/latex]<\/td>\r\n<td>[latex]5[\/latex]<\/td>\r\n<td>[latex]6[\/latex]<\/td>\r\n<td>[latex]7[\/latex]<\/td>\r\n<td>[latex]8[\/latex]<\/td>\r\n<td>[latex]9[\/latex]<\/td>\r\n<\/tr>\r\n<tr>\r\n<td><strong>[latex]y[\/latex]<\/strong><\/td>\r\n<td>[latex]3.297[\/latex]<\/td>\r\n<td>[latex]5.437[\/latex]<\/td>\r\n<td>[latex]8.963[\/latex]<\/td>\r\n<td>[latex]14.778[\/latex]<\/td>\r\n<td>[latex]24.365[\/latex]<\/td>\r\n<td>[latex]40.172[\/latex]<\/td>\r\n<td>[latex]66.231[\/latex]<\/td>\r\n<td>[latex]109.196[\/latex]<\/td>\r\n<td>[latex]180.034[\/latex]<\/td>\r\n<\/tr>\r\n<\/tbody>\r\n<\/table>\r\n[reveal-answer q=\"842897\"]Show Solution[\/reveal-answer]\r\n[hidden-answer a=\"842897\"]\r\n\r\nExponential. [latex]y=2{e}^{0.5x}[\/latex].[\/hidden-answer]\r\n\r\n<\/section><section class=\"textbox youChoose\" aria-label=\"You Choose\">[choosedataset divId=\"tnh-choose-dataset\" title=\"Choose Your Own Data\" label=\"\" default=\"Choose a Dataset\"]\r\n[datasetoption]\r\n[displayname]Federal Wages[\/displayname]\r\n[ohmid]42417[\/ohmid]\r\n[\/datasetoption][datasetoption]\r\n[displayname]Earthquake Magnitude[\/displayname]\r\n[ohmid]42418[\/ohmid]\r\n[\/datasetoption][datasetoption]\r\n[displayname]COVID Cases[\/displayname]\r\n[ohmid]42419[\/ohmid]\r\n[\/datasetoption]\r\n[\/choosedataset]<\/section><\/section>","rendered":"<h2>Choosing an Appropriate Model for Data<\/h2>\n<p>Now that we have discussed various mathematical models, we need to learn how to choose the appropriate model for the raw data we have. Many factors influence the choice of a mathematical model among which are experience, scientific laws, and patterns in the data itself. Not all data can be described by elementary functions. Sometimes a function is chosen that approximates the data over a given interval.<\/p>\n<p>Three kinds of functions that are often useful in mathematical models are <strong>linear functions<\/strong>, <strong>exponential functions<\/strong>, and <strong>logarithmic functions<\/strong>. If the data lies on a straight line or seems to lie approximately along a straight line, a linear model may be best. If the data is non-linear, we often consider an exponential or logarithmic model although other models, such as quadratic models, may also be considered.<\/p>\n<p>In choosing between an exponential model and a logarithmic model, we look at the way the data curves. This is called the <strong>concavity<\/strong>. If we draw a line between two data points, and all (or most) of the data between those two points lies above that line, we say the curve is concave down. We can think of it as a bowl that bends downward and therefore cannot hold water. If all (or most) of the data between those two points lies below the line, we say the curve is concave up. In this case, we can think of a bowl that bends upward and can therefore hold water.<\/p>\n<ul>\n<li>An <strong>exponential<\/strong> curve, whether rising or falling, whether representing growth or decay, is always <strong>concave up<\/strong> away from its horizontal asymptote.<\/li>\n<li>A <strong>logarithmic<\/strong> curve is always <strong>concave down<\/strong> away from its vertical asymptote.<\/li>\n<\/ul>\n<p>In the case of positive data, which is the most common case, an exponential curve is always concave up and a logarithmic curve always concave down.<\/p>\n<p>A logistic curve changes concavity. It starts out concave up and then changes to concave down beyond a certain point, called a point of inflection.<\/p>\n<p>After using the graph to help us choose a type of function to use as a model, we substitute points, and solve to find the parameters. We reduce round-off error by choosing points as far apart as possible.<\/p>\n<section class=\"textbox example\" aria-label=\"Example\">Does a linear, exponential, logarithmic, or logistic model best fit the values listed below? Find the model, and use a graph to check your choice.<\/p>\n<table summary=\"..\">\n<tbody>\n<tr>\n<td><strong>[latex]x[\/latex]<\/strong><\/td>\n<td>[latex]1[\/latex]<\/td>\n<td>[latex]2[\/latex]<\/td>\n<td>[latex]3[\/latex]<\/td>\n<td>[latex]4[\/latex]<\/td>\n<td>[latex]5[\/latex]<\/td>\n<td>[latex]6[\/latex]<\/td>\n<td>[latex]7[\/latex]<\/td>\n<td>[latex]8[\/latex]<\/td>\n<td>[latex]9[\/latex]<\/td>\n<\/tr>\n<tr>\n<td><strong>[latex]y[\/latex]<\/strong><\/td>\n<td>[latex]0[\/latex]<\/td>\n<td>[latex]1.386[\/latex]<\/td>\n<td>[latex]2.197[\/latex]<\/td>\n<td>[latex]2.773[\/latex]<\/td>\n<td>[latex]3.219[\/latex]<\/td>\n<td>[latex]3.584[\/latex]<\/td>\n<td>[latex]3.892[\/latex]<\/td>\n<td>[latex]4.159[\/latex]<\/td>\n<td>[latex]4.394[\/latex]<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<div class=\"qa-wrapper\" style=\"display: block\"><button class=\"show-answer show-answer-button collapsed\" data-target=\"q852220\">Show Solution<\/button><\/p>\n<div id=\"q852220\" class=\"hidden-answer\" style=\"display: none\">\n<p>First, plot the data on a graph as in the graph below. For the purpose of graphing, round the data to two significant digits.<\/p>\n<p><img loading=\"lazy\" decoding=\"async\" class=\"aligncenter\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/896\/2016\/11\/03181351\/CNX_Precalc_Figure_04_07_0082.jpg\" alt=\"Graph of the previous table\u2019s values.\" width=\"487\" height=\"476\" \/><\/p>\n<p>Clearly, the points do not lie on a straight line, so we reject a linear model. If we draw a line between any two of the points, most or all of the points between those two points lie above the line, so the graph is concave down, suggesting a logarithmic model. We can try [latex]y=a\\mathrm{ln}\\left(bx\\right)[\/latex]. Plugging in the first point, [latex]\\left(\\text{1,0}\\right)[\/latex], gives [latex]0=a\\mathrm{ln}b[\/latex]. We reject the case that [latex]a\u00a0= 0[\/latex] (if it were, all outputs would be 0), so we know<\/p>\n<p style=\"text-align: center;\">[latex]\\mathrm{ln}\\left(b\\right)=0[\/latex]. Thus <em>b\u00a0<\/em>= 1 and [latex]y=a\\mathrm{ln}\\left(\\text{x}\\right)[\/latex]. Next we can use the point [latex]\\left(\\text{9,4}\\text{.394}\\right)[\/latex] to solve for [latex]a[\/latex]:<br \/>\n[latex]\\begin{array}{l}y=a\\mathrm{ln}\\left(x\\right)\\hfill \\\\ 4.394=a\\mathrm{ln}\\left(9\\right)\\hfill \\\\ a=\\frac{4.394}{\\mathrm{ln}\\left(9\\right)}\\hfill \\end{array}[\/latex]<\/p>\n<p>Because [latex]a=\\frac{4.394}{\\mathrm{ln}\\left(9\\right)}\\approx 2[\/latex], an appropriate model for the data is [latex]y=2\\mathrm{ln}\\left(x\\right)[\/latex].<\/p>\n<p>To check the accuracy of the model, we graph the function together with the given points.<\/p>\n<figure style=\"width: 487px\" class=\"wp-caption aligncenter\"><img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/896\/2016\/11\/03181353\/CNX_Precalc_Figure_04_07_009a2.jpg\" alt=\"Graph of previous table\u2019s values showing that it fits the function y=2ln(x) with an asymptote at x=0.\" width=\"487\" height=\"476\" \/><figcaption class=\"wp-caption-text\">The graph of [latex]y=2\\mathrm{ln}x[\/latex].<\/figcaption><\/figure>\n<p>We can conclude that the model is a good fit to the data. Compare the figure above\u00a0to the graph of [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)[\/latex] shown below.<\/p>\n<figure style=\"width: 487px\" class=\"wp-caption aligncenter\"><img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/896\/2016\/11\/03181356\/CNX_Precalc_Figure_04_07_009b2.jpg\" alt=\"Graph of previous table\u2019s values showing that it fits the function y=2ln(x) with an asymptote at x=0.\" width=\"487\" height=\"476\" \/><figcaption class=\"wp-caption-text\">The graph of [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)[\/latex]<\/figcaption><\/figure>\n<p>The graphs appear to be identical when [latex]x\u00a0> 0[\/latex]. A quick check confirms this conclusion: [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)=2\\mathrm{ln}\\left(x\\right)[\/latex] for [latex]x\u00a0> 0[\/latex]. However, if [latex]x\u00a0< 0[\/latex], the graph of [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)[\/latex] includes an &#8220;extra&#8221; branch as shown below. This occurs because while [latex]y=2\\mathrm{ln}\\left(x\\right)[\/latex] cannot have negative values in the domain (as such values would force the argument to be negative), the function [latex]y=\\mathrm{ln}\\left({x}^{2}\\right)[\/latex] can have negative domain values.<img loading=\"lazy\" decoding=\"async\" src=\"https:\/\/s3-us-west-2.amazonaws.com\/courses-images\/wp-content\/uploads\/sites\/896\/2016\/11\/03181358\/CNX_Precalc_Figure_04_07_0102.jpg\" alt=\"Graph of y=ln(x^2).\" width=\"487\" height=\"216\" \/><\/div>\n<\/div>\n<\/section>\n<section aria-label=\"Example\">\n<section class=\"textbox example\" aria-label=\"Example\">Does a linear, exponential, or logarithmic model best fit the data in the table below? Find the model.<\/p>\n<table summary=\"..\">\n<tbody>\n<tr>\n<td><strong>[latex]x[\/latex]<\/strong><\/td>\n<td>[latex]1[\/latex]<\/td>\n<td>[latex]2[\/latex]<\/td>\n<td>[latex]3[\/latex]<\/td>\n<td>[latex]4[\/latex]<\/td>\n<td>[latex]5[\/latex]<\/td>\n<td>[latex]6[\/latex]<\/td>\n<td>[latex]7[\/latex]<\/td>\n<td>[latex]8[\/latex]<\/td>\n<td>[latex]9[\/latex]<\/td>\n<\/tr>\n<tr>\n<td><strong>[latex]y[\/latex]<\/strong><\/td>\n<td>[latex]3.297[\/latex]<\/td>\n<td>[latex]5.437[\/latex]<\/td>\n<td>[latex]8.963[\/latex]<\/td>\n<td>[latex]14.778[\/latex]<\/td>\n<td>[latex]24.365[\/latex]<\/td>\n<td>[latex]40.172[\/latex]<\/td>\n<td>[latex]66.231[\/latex]<\/td>\n<td>[latex]109.196[\/latex]<\/td>\n<td>[latex]180.034[\/latex]<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<div class=\"qa-wrapper\" style=\"display: block\"><button class=\"show-answer show-answer-button collapsed\" data-target=\"q842897\">Show Solution<\/button><\/p>\n<div id=\"q842897\" class=\"hidden-answer\" style=\"display: none\">\n<p>Exponential. [latex]y=2{e}^{0.5x}[\/latex].<\/p><\/div>\n<\/div>\n<\/section>\n<section class=\"textbox youChoose\" aria-label=\"You Choose\">\n<div id=\"tnh-choose-dataset\" class=\"chooseDataset\">\n<h3>Choose Your Own Data<\/h3>\n<form><select name=\"dataset\"><option value=\"\">Choose a Dataset<\/option><option value=\"42417\">Federal Wages<\/option><option value=\"42418\">Earthquake Magnitude<\/option><option value=\"42419\">COVID Cases<\/option><\/select><\/form>\n<div class=\"ohmContainer\"><\/div>\n<\/p><\/div>\n<\/section>\n<\/section>\n","protected":false},"author":13,"menu_order":22,"template":"","meta":{"_candela_citation":"[]","pb_show_title":"on","pb_short_title":"","pb_subtitle":"","pb_authors":[],"pb_section_license":""},"chapter-type":[],"contributor":[],"license":[],"part":510,"module-header":"learn_it","content_attributions":[],"internal_book_links":[],"video_content":null,"cc_video_embed_content":{"cc_scripts":"","media_targets":[]},"try_it_collection":[{"divId":"tnh-choose-dataset","title":"Choose Your Own Data","label":"","default":"Choose a Dataset","try_it_collection":[{"displayName":"Federal Wages","value":"42417"},{"displayName":"Earthquake Magnitude","value":"42418"},{"displayName":"COVID Cases","value":"42419"}]}],"_links":{"self":[{"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/pressbooks\/v2\/chapters\/1193"}],"collection":[{"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/pressbooks\/v2\/chapters"}],"about":[{"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/wp\/v2\/types\/chapter"}],"author":[{"embeddable":true,"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/wp\/v2\/users\/13"}],"version-history":[{"count":4,"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/pressbooks\/v2\/chapters\/1193\/revisions"}],"predecessor-version":[{"id":5923,"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/pressbooks\/v2\/chapters\/1193\/revisions\/5923"}],"part":[{"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/pressbooks\/v2\/parts\/510"}],"metadata":[{"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/pressbooks\/v2\/chapters\/1193\/metadata\/"}],"wp:attachment":[{"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/wp\/v2\/media?parent=1193"}],"wp:term":[{"taxonomy":"chapter-type","embeddable":true,"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/pressbooks\/v2\/chapter-type?post=1193"},{"taxonomy":"contributor","embeddable":true,"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/wp\/v2\/contributor?post=1193"},{"taxonomy":"license","embeddable":true,"href":"https:\/\/content.one.lumenlearning.com\/precalculus\/wp-json\/wp\/v2\/license?post=1193"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}