Hello all,

I have been searching for some advice on appropriate non-parametric statistics 
for the analysis of a dependent variable that fails normality and homogeneity 
assumptions under both sqrt and ln transformations.

First I will describe the dataset.  The data are from a field sample.  I have 4 
years of data from the same set of ecological populations.  The number of 
populations varies year to year.  The number of individuals sampled in a 
population may have varied within and among years.

Here is a description of the model I would like to implement.  Let’s say the 
Dependent Variable is # seeds eaten / plant.  So, I want to implement 
individual plant nested within population (i.e.  a mixed model with population 
identifier as random variable or SUBJECT(PopID)).  YEAR is a categorical 
independent variable, Population Size is one continuous independent variable.  
Total # Seeds produced / plant is another continuous independent variable.  I 
would also like to test interactions.

As I said before, I was not successful in transforming my dependent variable 
using my standard choices (ln and sqrt).  I had found references to using rank 
transformed data in an ANOVA / ANCOVA model, but this was rejected by a 
reviewer.  I am familiar with simple nonparametric tests like Kruskal-Wallis, 
but I do not see how to preserve the complex model with such tests.

My first hope is to find a method, generally accepted by ecologists, that is 
easily implemented in SPSS.  If this is not possible, I can explore more 
complicated analyses with the help of my campus math / stats consultant.

Thanks for you advice.

|   /      \   |  Alan B. Griffith, PhD
\  \  ̗  ̖  /  /   Associate Professor
  \  \( )/  /    Department of Biological Sciences
   \ (   ) /      University of Mary Washington
    /(   )\       (540) 654-1422
  / / ( ) \ \     [email protected]
/  |  ¦¦  |  \
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