Good afternoon all:

I am looking for some statistical advice, in a situation that has me 
temporarily stumped.

We have data which includes a categorical predictor variable (a landscape 
attribute, habitat patch size), two continuous dependent variables (measures of 
plant and rodent abundance), and many years of observations.  Experimental 
hypotheses involve the question of how patch size affects organism abundance, 
and also about correlations between plant and rodent abundance.

This seems to be set up exactly for the repeated measures ANOVA function in 
SPSS within the GLM section, only no information is given in the printout about 
associations between the dependent variables.  What would you recommend we do 
to formally investigate the relations between plant and rodent abundance (the 
dependent variables), in the light of time and patch size?  So far we can run a 
RMANOVA to investigate time and patch size, and then to run separate analyses 
(e.g. correlations within each year) to look at the association between plant 
and rodent abundance, but there may be a more holistic way to do this.

Thanks for any advice you can give.

Bill Cook

William M. Cook
Assistant Professor
Department of Biological Sciences
St. Cloud State University
720 4th Avenue South
St. Cloud, MN 56301 USA
Phone: (320) 308-2019
E-mail: [EMAIL PROTECTED]

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