Steven Brady
2010-Jun-21 18:01 UTC
[R] Contrast interaction effects in lmer object for reciprocal transplant experiment
Dear All: I am using lmer() {lme4} to analyze results from a reciprocal transplant experiment where the response variable is modeled as a function of two fixed effects and their interaction. Example data follow: #library(lme4) #library(gmodels) env=c("r","r","w","w","r","r","w","w","r","r","w","w","r","r","w","w") # type of environment to where populations were transplanted (fixed effect) origin =c("r","r","r","r","r","r","r","r","w","w","w","w","w","w","w","w") # type of environment from where populations originated (fixed effect) survival=c(rnorm(16,0.75, sd = 0.1)) #percent survival (response variable) population =c("a","a","a","a","b","b","b","b","c","c","c","c","d","d","d","d") #local population (random effect) exp=data.frame(pond=pond, env=env,origin=origin,survival=survival) #make data frame g<-lmer(survival~origin*env + (1|population), data = exp) # mixed model pvals.fnc(g) #evaluate fixed effects My question is this: How do I perform contrasts on the interaction of the fixed effects using, say estimable() in the library {gmodels}? I have seen how to do this for levels within a factor, however, I am unsure how to apply these to levels among factors (i.e. the interaction terms). Biologically speaking, I am interested in evaluating the difference in survival between the two origin types in each of two types of environments. In other words: 1. does origin r differ from origin w within env w? and, 2. does origin r differ from origin w within env r? Part of my misunderstanding concerns the reporting of the fixed effects of the model, which are named as the fixed term concatenated with a level (e.g. originw). Does the way lmer names the fixed effects influence the contrast matrix I should specify? Many thanks in advance, Steve Brady __________________________________________ Steven P. Brady, Ph.D. Candidate School of Forestry & Environmental Studies Yale University 370 Prospect Street New Haven, CT 06511 Email: steven.brady at yale.edu Phone: 203-432-5321 Fax: 203-432-3929 Web: http://www.cbc.yale.edu/people/skelly/steveb.html
Steven Brady
2010-Jun-21 18:47 UTC
[R] Contrast interaction effects in lmer object for reciprocal transplant experiment
Dear All: My apologies, but my formatting of the original message was poor. Here it is again with more appropriate spacing for copying into the terminal. I am using lmer() {lme4} to analyze results from a reciprocal transplant experiment where the response variable is modeled as a function of two fixed effects and their interaction. Example data follow: #library(lme4) #library(gmodels) env=c("r","r","w","w","r","r","w","w","r","r", "w","w","r","r","w","w") #type of environment to where populations #were transplanted (fixed effect) origin=c("r","r","r","r","r","r","r", "r","w","w","w","w","w","w","w","w") #type of environment from where populations #originated (fixed effect) survival=c(rnorm(16,0.75, sd = 0.1)) #percent survival (response variable) population=c("a","a","a","a","b","b","b","b", "c","c","c","c","d","d","d","d") #local population (random effect) exp=data.frame(pond=pond, env=env, origin=origin,survival=survival) #make data frame g<-lmer(survival~origin*env + (1|population), data = exp) # mixed model pvals.fnc(g) #evaluate fixed effects My question is this: How do I perform contrasts on the interaction of the fixed effects using, say estimable() in the library {gmodels}? I have seen how to do this for levels within a factor, however, I am unsure how to apply these to levels among factors (i.e. the interaction terms). Biologically speaking, I am interested in evaluating the difference in survival between the two origin types in each of two types of environments. In other words: 1. does origin r differ from origin w within env w? and, 2. does origin r differ from origin w within env r? Part of my misunderstanding concerns the reporting of the fixed effects of the model, which are named as the fixed term concatenated with a level (e.g. originw). Does the way lmer names the fixed effects influence the contrast matrix I should specify? Many thanks in advance, Steve Brady __________________________________________ Steven P. Brady, Ph.D. Candidate School of Forestry & Environmental Studies Yale University 370 Prospect Street New Haven, CT 06511 Email: steven.brady at yale.edu Phone: 203-432-5321 Fax: 203-432-3929 Web: http://www.cbc.yale.edu/people/skelly/steveb.html