Editing Statistics and Statistical Programming (Fall 2020)/pset8

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=== Fit a model to test for treatment effects ===
=== Fit a model to test for treatment effects ===


Now, let's construct a test for treatment effects. For a between-groups randomized-controlled trial (RCT) like this, that means we'll focus on the fitted parameter for the treatment assignment variable (<math>\beta_1\mathrm{obama}</math>) which will provide a direct estimate of the causal effect of exposure to the treatment (compared against the control) condition. That said, here are a few tips, notes, and requests:
Now, let's construct a test for treatment effects. For a between-groups randomized-controlled trial (RCT) like this, that means we'll focus on the fitted parameter for the treatment assignment variable (<math>\beta_1 \mathrm{obama}</math>) which will provide a direct estimate of the causal effect of exposure to the treatment (compared against the control) condition. That said, here are a few tips, notes, and requests:
* The outcome is dichotomous, so you can/should use logistic regression to model this data (we can discuss this choice in class). You may want to evaluate whether the conditions necessary to do so are met.
* The outcome is dichotomous, so you can/should use logistic regression to model this data (we can discuss this choice in class). For the sake of simplicity (and because it's not covered in the textbook), we're going to side-step any questions about the assumptions necessary to identify a logistic model as well as specific steps you might take to evaluate the model fit (but rest assured that both exist!).
* You may want/need to convert some of these variables to appropriate types/classes in order to fit a logistic model. I also recommend at least turning <code>year</code> into a factor and creating a centered version of the <code>age</code> variable (we can discuss this in class too).  
* You may want/need to convert some of these variables to appropriate types/classes in order to fit a logistic model. I also recommend at least turning <code>year</code> into a factor and using a centered version of the <code>age</code> variable (we can discuss this in class too).  
* Be sure to state the alternative and null hypotheses related to the experimental treatment under consideration.
* Be sure to state the alternative and null hypotheses related to the experimental treatment under consideration.
* It's a good idea to include the following in the presentation and interpretation of logistic model results: (1) a tabular summary/report of your fitted model including any goodness of fit statistics you can extract from R; (2) a transformation of the coefficient estimating treatment effects into an "odds ratio"; (3) model-predicted probabilities for prototypical study participants. (''please note that examples for all of these are provided in [https://communitydata.science/~ads/teaching/2020/stats/r_tutorials/logistic_regression_interpretation.html Mako Hill's R tutorial on interpreting the results of logistic regression]]'')
* It's a good idea to include the following in the presentation and interpretation of logistic model results: (1) a tabular summary/report of your fitted model including any goodness of fit statistics you can extract from R; (2) a transformation of the coefficient estimating treatment effects into an "odds ratio"; (3) model-predicted probabilities for prototypical study participants. (''please note that examples for all of these are provided in [https://communitydata.science/~ads/teaching/2020/stats/r_tutorials/logistic_regression_interpretation.html Mako Hill's R tutorial on interpreting the results of logistic regression]]'')
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