So...past experience has told me this is usually not the best place for more complex stats questions, but I'm going to give it a try anyways🙂
1) Is anyone aware of a non-parametric analog to a mixed between-within repeated measures ANOVA? The short version is we have data that significantly violates normality (extremely leptokurtic). Traditional transformations do not appear to be helping (they seem more effective for dealing with skew and/or platykurtosis rather than the current situation). Part of me thinks the reason is that leptokurtosis should (I think) inflate power, so people may not be as motivated to look for transformations for things that are more likely to be significant😉The only thing I have found suggest converting the data to an ordinal format and running the usual RM analysis on the ordinal data may have some merit but it is from a dubious source and I cannot find any other papers confirming it. I think GEE might be a solution, and I can use a Poisson link function, but there are some problems with that (see below).
2) I'm not sure if anyone has used GEE before, but my understanding is that main effects are rendered uninterpretable when interactions are included in the model and have to be tested separately. Can anyone confirm this? It poses a problem for the analysis I hope to conduct that is certainly not insurmountable but seems unnecessarily convoluted to me.
Lastly, has anyone ever encountered a situation like this before (extremely non-normal data that they could not correct with transformation)? Reading the literature would imply that this is a rare situation, but based on my experiences it seems to be incredibly common (at least for psychophysiological data). I am increasingly convinced that people just run the RM ANOVA anyways and cross their fingers...something I am sorely tempted to do myself🙂
	
		
			
		
		
	
				
			1) Is anyone aware of a non-parametric analog to a mixed between-within repeated measures ANOVA? The short version is we have data that significantly violates normality (extremely leptokurtic). Traditional transformations do not appear to be helping (they seem more effective for dealing with skew and/or platykurtosis rather than the current situation). Part of me thinks the reason is that leptokurtosis should (I think) inflate power, so people may not be as motivated to look for transformations for things that are more likely to be significant😉The only thing I have found suggest converting the data to an ordinal format and running the usual RM analysis on the ordinal data may have some merit but it is from a dubious source and I cannot find any other papers confirming it. I think GEE might be a solution, and I can use a Poisson link function, but there are some problems with that (see below).
2) I'm not sure if anyone has used GEE before, but my understanding is that main effects are rendered uninterpretable when interactions are included in the model and have to be tested separately. Can anyone confirm this? It poses a problem for the analysis I hope to conduct that is certainly not insurmountable but seems unnecessarily convoluted to me.
Lastly, has anyone ever encountered a situation like this before (extremely non-normal data that they could not correct with transformation)? Reading the literature would imply that this is a rare situation, but based on my experiences it seems to be incredibly common (at least for psychophysiological data). I am increasingly convinced that people just run the RM ANOVA anyways and cross their fingers...something I am sorely tempted to do myself🙂
			
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