Background: I am currently analyzing data from an experiment where I fed ant colonies either treated or untreated diet continuously for a month and then measured the weight of individual offspring from each colony at the conclusion of the experiment. Because each colony was only fed one of the diets continuously it seems to me that each colony is nested under treatment.
Question: How I include colony, as a random or fixed effect, nested under treatment has a major implication on the statistical outcome of the analysis (see output). Should [colony nested under treatment] be a fixed or random effect?
While the debate on fixed vs random effect questions seems to be somewhat contentious, the most consistent answer appears to be that nested should always be run as random without much discussion as to why the alternative is ALWAYS wrong:
Why would JMP give the option to include nested as a fixed if it goes against conventional wisdom?
Looking at the dataset globally, it is clear that there is a treatment effect, but it appears that one of the colonies was unaffected by the treatment (see image). This leads me to think that there is a colony by treatment effect and that some colonies are more tolerant to the treatment while others are not. I am aware that with a non-factorial design (no crossing) I cannot prove this statistically. With the fixed model I get significance of the nested colony treatment and the treatment itself. When ran as random I lose the significance of the treatment variable. I don’t understand how randomizing the effect of colony can be separated from the treatment effect in an instance like this. Before I get called out for my non factorial design, let me say that there would be no practical way to cross in this type of study.
Thanks in advance for any advice or suggestions you have!
Joe