Hello all, I have been thrown headfirst into SPSS (limited experince) and have been asked to model outcomes. Based on my research, I see that modeling a variable that is binary can be done with logistic regression. I have created a "model" to the best of my ability based on theory and statistics, but wonder on its application. I know (think) that models can be created for a variety of reasons, but to put one into action, is there a statistically accepted cutoff? Is it the various r-square measures? Predicted group membership success? Statistically significant variables? I know all of this matters, but to make decisions based on a model, it seems that there should be some criterion that can be used. Not to bring in multiple regression, but an r-square of .05 might not be applicable in a practical sense. Anyway, I know this may be off topic, but I figure SPSS users have war stories/experience that they can share on the matter. Many thanks in advance. Brock
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Brock,
I was in the same situation several years ago. I found Andy Field's book tremendously helpful in understanding the basics. Several analogous R-squared measures have been proposed for logistic regression and a few of those are talked about in Andy Field's book. As far as cut-offs in my experience it depends on how the data is being used. I have had times where the selected cases were going to be mailed a very expensive (for the company producing it) offer and the model had to be very accurate (high predicted membership success). I have had other times where a client is going to mail (a relatively cheap offer) to half the customers on file and they want more guidance than picking half randomly. Have a great day, Jason _____ From: SPSSX(r) Discussion [mailto:[hidden email]] On Behalf Of [hidden email] Sent: Thursday, October 26, 2006 9:01 PM To: [hidden email] Subject: Logistic Regression Evaluation Hello all, I have been thrown headfirst into SPSS (limited experince) and have been asked to model outcomes. Based on my research, I see that modeling a variable that is binary can be done with logistic regression. I have created a "model" to the best of my ability based on theory and statistics, but wonder on its application. I know (think) that models can be created for a variety of reasons, but to put one into action, is there a statistically accepted cutoff? Is it the various r-square measures? Predicted group membership success? Statistically significant variables? I know all of this matters, but to make decisions based on a model, it seems that there should be some criterion that can be used. Not to bring in multiple regression, but an r-square of .05 might not be applicable in a practical sense. Anyway, I know this may be off topic, but I figure SPSS users have war stories/experience that they can share on the matter. Many thanks in advance. Brock |
In reply to this post by Brock-15
Hi Jason,
Thanks for your willingness to respond. My model could have some serious implications if the outcomes do not occur. I guess I am getting hung up on the concept of what a fundamentally sound model is. I have read in various texts that the various R-square measures will not be as high as if you were doing a Linear Multiple Regression. In short, that simply comparing an R-square from a Logistic to a MR is no comparable because the Logistic will be lower. Therefore, sometimes people will throw away results of a Logistic model because it may only explain .44% of the variance. However, that leaves me to evaluate a model on classification. From your experience, when client campaigns were successful, were there any traits of the model that were common throughout? Is there a level of (for lack of a better term) inaccuracy in which you would simply tell your client we can not act upon this information? Many thanks again. I have been doing countless searches for information on the topic. I know sometimes its a judgement call, but it appears as if many of the texts I read simply talk about the estimated coefficients, etc, and never discuss if it would be practical to put this model into practice. I appreciate your time, Brock |
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