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    <title>topic Re: How to Interpret: Generalized Regression Model with Binary (Categorical) Variables in Discussions</title>
    <link>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307826#M56223</link>
    <description>Hello, have you had the chance to review the JMP Documentation Library under the Help menu in JMP? The examples in the Documentation Library should help you to interpret your results.&lt;BR /&gt;Sincerely,&lt;BR /&gt;MG</description>
    <pubDate>Tue, 15 Sep 2020 14:22:13 GMT</pubDate>
    <dc:creator>G_M</dc:creator>
    <dc:date>2020-09-15T14:22:13Z</dc:date>
    <item>
      <title>How to Interpret: Generalized Regression Model with Binary (Categorical) Variables</title>
      <link>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307749#M56213</link>
      <description>&lt;P&gt;We’re fitting a model that tests the efficacy of a treatment (e.g., a pharmaceutical product). The DV is &lt;EM&gt;Recovered&lt;/EM&gt;, a binary variable (0/1), defined as numeric nominal. The research question is whether the treatment affects the expression of a precondition and thus improves recovery. We expect that people with certain level of the precondition will react differently to the treatment, i.e., an interaction effect.&lt;/P&gt;&lt;P&gt;We fit a generalized regression model with binomial distribution. The predictors are 1) whether the person received treatment (&lt;EM&gt;Treatment&lt;/EM&gt;; binary), 2) the variable whose expression should be affected by the treatment (&lt;EM&gt;Precondition&lt;/EM&gt;, continuous), 3-4) two continuous control variables (&lt;EM&gt;Period &lt;/EM&gt;and &lt;EM&gt;Q&lt;/EM&gt;), as well as an 5) interaction term between &lt;EM&gt;Treatment&lt;/EM&gt; and &lt;EM&gt;Precondition&lt;/EM&gt;.&lt;/P&gt;&lt;OL&gt;&lt;LI&gt;The regression equation defaults to calculate the likelihood of Recovered=0, but we’re interested in predicting Recovered=1. How do we change the default?&lt;/LI&gt;&lt;LI&gt;Confusingly, the parameter estimates shows the treatment parameter as “Treatment[0-1]”. Does this mean that this is the effect of no treatment or treatment? A very important distinction, obviously.&lt;/LI&gt;&lt;LI&gt;What’s the right way to interpret the interaction effect? Specifically, what does “-226.24” mean?&lt;/LI&gt;&lt;/OL&gt;&lt;P&gt;The output is below. Thanks for your help!&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;STRONG&gt;Generalized Regression for Recovered = 0&lt;/STRONG&gt;&lt;/P&gt;&lt;P&gt;&lt;STRONG&gt;Model Comparison&lt;/STRONG&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;TABLE&gt;&lt;TBODY&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Show&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Response Distribution&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Estimation Method&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Validation Method&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Nonzero Parameters&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;AICc&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;BIC&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Generalized RSquare&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;[x]&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;Binomial&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;Logistic Regression&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;None&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;5&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;3677.7423&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;3708.3526&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.1934902&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;/TBODY&gt;&lt;/TABLE&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;STRONG&gt;Model Launch&lt;/STRONG&gt;&lt;/P&gt;&lt;P&gt;Binomial&lt;/P&gt;&lt;P&gt;Lasso [ ] Adaptive&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;AICc&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;TABLE&gt;&lt;TBODY&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;[ ] Early Stopping&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;/TBODY&gt;&lt;/TABLE&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;STRONG&gt;Logistic Regression&lt;/STRONG&gt;&lt;/P&gt;&lt;P&gt;&lt;STRONG&gt;Model Summary&lt;/STRONG&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;TABLE&gt;&lt;TBODY&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Response&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;Recovered&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Distribution&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;Binomial&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Estimation Method&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;Logistic Regression&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Validation Method&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;None&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Probability Model Link&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;Logit&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;/TBODY&gt;&lt;/TABLE&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;TABLE&gt;&lt;TBODY&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Measure&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;&amp;nbsp;&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Number of rows&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;6128&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Sum of Frequencies&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;3380&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;-LogLikelihood&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;1833.8622&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Number of Parameters&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;5&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;BIC&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;3708.3526&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;AICc&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;3677.7423&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Generalized RSquare&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.1934902&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;/TBODY&gt;&lt;/TABLE&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;STRONG&gt;Parameter Estimates for Original Predictors&lt;/STRONG&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;TABLE&gt;&lt;TBODY&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Term&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Estimate&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Std Error&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Wald ChiSquare&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Prob &amp;gt; ChiSquare&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Lower 95%&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&lt;STRONG&gt;Upper 95%&lt;/STRONG&gt;&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Intercept&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.8755145&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.1101971&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;63.122825&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&amp;lt;.0001*&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.6595322&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;1.0914968&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Treatment[0-1]&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0643045&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0696953&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.8512868&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.3562&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;-0.072296&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.2009047&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Period&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.1015936&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0130748&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;60.375781&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&amp;lt;.0001*&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0759675&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.1272197&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Q&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0012641&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0004935&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;6.5606499&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0104*&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0002968&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0022314&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;Precondition&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;-0.000095&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0001314&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.522411&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.4698&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;&amp;nbsp;-0.000352&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0001626&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;TR&gt;&lt;TD&gt;&lt;P&gt;(Precondition-226.24)*Treatment[0-1]&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0009875&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0003172&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;9.6914587&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0019*&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0003658&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&lt;P&gt;0.0016093&lt;/P&gt;&lt;/TD&gt;&lt;TD&gt;&amp;nbsp;&lt;/TD&gt;&lt;/TR&gt;&lt;/TBODY&gt;&lt;/TABLE&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;(All the variable names are aliases due to confidentiality requirements).&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;</description>
      <pubDate>Fri, 09 Jun 2023 00:21:22 GMT</pubDate>
      <guid>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307749#M56213</guid>
      <dc:creator>Juter</dc:creator>
      <dc:date>2023-06-09T00:21:22Z</dc:date>
    </item>
    <item>
      <title>Re: How to Interpret: Generalized Regression Model with Binary (Categorical) Variables</title>
      <link>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307826#M56223</link>
      <description>Hello, have you had the chance to review the JMP Documentation Library under the Help menu in JMP? The examples in the Documentation Library should help you to interpret your results.&lt;BR /&gt;Sincerely,&lt;BR /&gt;MG</description>
      <pubDate>Tue, 15 Sep 2020 14:22:13 GMT</pubDate>
      <guid>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307826#M56223</guid>
      <dc:creator>G_M</dc:creator>
      <dc:date>2020-09-15T14:22:13Z</dc:date>
    </item>
    <item>
      <title>Re: How to Interpret: Generalized Regression Model with Binary (Categorical) Variables</title>
      <link>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307830#M56227</link>
      <description>&lt;P&gt;Thanks for the response. We did a broad search before posting the question, including in this forum, but we may have missed something. Could you point us to 1) how to change the predicted DV level and how to interpret results 2) &amp;amp; 3)? The numbers refer to the original questions.&lt;/P&gt;</description>
      <pubDate>Tue, 15 Sep 2020 15:17:04 GMT</pubDate>
      <guid>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307830#M56227</guid>
      <dc:creator>Juter</dc:creator>
      <dc:date>2020-09-15T15:17:04Z</dc:date>
    </item>
    <item>
      <title>Re: How to Interpret: Generalized Regression Model with Binary (Categorical) Variables</title>
      <link>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307871#M56231</link>
      <description>Ok, well you can change the target outcome from 0 to 1 in the Fit Model Platform Dialog. Once you have selected the Personality = Generalized Regression and Distribution = Binomial, you can select the Target Level = 1 (default is 0). In terms of interpretation you, should look at the Prediction Profiler under the Red Triangle associated with your Model Fit. The Prediction Profiler will enable you to visualize the change in Y for given changes in the X. For quantitative interpretation, in your case, you may want to save the Prediction Formula (an option under the same Red Triangle) from the model fit to column(s) in your data table. Then, you can open the formula for inspection which should assist you in your interpretation.</description>
      <pubDate>Tue, 15 Sep 2020 15:43:26 GMT</pubDate>
      <guid>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307871#M56231</guid>
      <dc:creator>G_M</dc:creator>
      <dc:date>2020-09-15T15:43:26Z</dc:date>
    </item>
    <item>
      <title>Re: How to Interpret: Generalized Regression Model with Binary (Categorical) Variables</title>
      <link>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307971#M56234</link>
      <description>&lt;P&gt;Thank you! We're making progress here.&lt;/P&gt;&lt;OL&gt;&lt;LI&gt;How do we have JMP calcualte the effect for the &lt;EM&gt;presence&lt;/EM&gt; of treatment (i.e., Treatment=1). Right now, it calculates the effect of the &lt;EM&gt;absence&lt;/EM&gt; of treatment (i.e., Treatment=0).&lt;/LI&gt;&lt;LI&gt;Just to be clear, specification of Target Level is available for Generalized Regression but not for a Generalized Linear Model, correct? At least we can't find such an option.&lt;/LI&gt;&lt;/OL&gt;</description>
      <pubDate>Tue, 15 Sep 2020 20:22:07 GMT</pubDate>
      <guid>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/307971#M56234</guid>
      <dc:creator>Juter</dc:creator>
      <dc:date>2020-09-15T20:22:07Z</dc:date>
    </item>
    <item>
      <title>Re: How to Interpret: Generalized Regression Model with Binary (Categorical) Variables</title>
      <link>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/308277#M56266</link>
      <description>1) Perhaps you can recode your data so that Treatment = 0 and rerun the model? Or, you may be able to leave it as is but change the modeling type to continuous.&lt;BR /&gt;2) I think you are correct. There is also the Personality = Nominal Logistic in which you can toggle the Target Level of the outcome.</description>
      <pubDate>Wed, 16 Sep 2020 20:08:04 GMT</pubDate>
      <guid>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/308277#M56266</guid>
      <dc:creator>G_M</dc:creator>
      <dc:date>2020-09-16T20:08:04Z</dc:date>
    </item>
    <item>
      <title>Re: How to Interpret: Generalized Regression Model with Binary (Categorical) Variables</title>
      <link>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/308369#M56272</link>
      <description>&lt;P&gt;In order to have the model for Treatment = 1 instead of 0, turn on the Value Ordering property for the Treatment column. Move the 1 level up, so it is on the top of the list and re-run your model.&amp;nbsp;&lt;/P&gt;
&lt;P&gt;&amp;nbsp;&lt;/P&gt;
&lt;P&gt;You can use the same approach to predict the probability of a 1 for Recovered when using a General Linear Model.&lt;/P&gt;</description>
      <pubDate>Thu, 17 Sep 2020 01:30:34 GMT</pubDate>
      <guid>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/308369#M56272</guid>
      <dc:creator>Dan_Obermiller</dc:creator>
      <dc:date>2020-09-17T01:30:34Z</dc:date>
    </item>
    <item>
      <title>Re: How to Interpret: Generalized Regression Model with Binary (Categorical) Variables</title>
      <link>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/308748#M56295</link>
      <description>&lt;P&gt;&lt;a href="https://community.jmp.com/t5/user/viewprofilepage/user-id/16376"&gt;@G_M&lt;/a&gt;and &lt;a href="https://community.jmp.com/t5/user/viewprofilepage/user-id/3194"&gt;@Dan_Obermiller&lt;/a&gt;: Through your answers, we managed to complete the interpretation, and proceed with the research. Thank you!&lt;/P&gt;&lt;DIV class="jmp-author-rank"&gt;&amp;nbsp;&lt;/DIV&gt;</description>
      <pubDate>Thu, 17 Sep 2020 21:51:50 GMT</pubDate>
      <guid>https://community.jmp.com/t5/Discussions/How-to-Interpret-Generalized-Regression-Model-with-Binary/m-p/308748#M56295</guid>
      <dc:creator>Juter</dc:creator>
      <dc:date>2020-09-17T21:51:50Z</dc:date>
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