My apologies for the somewhat convoluted title. Let me explain:
We are conducting a greenhouse study in which we are looking at plant genotype (factor A) and irrigation (factor B). Plants are grown in pots to which we randomly assigned both genotype and irrigation. The study is a full factorial RCBD with five blocks. In analyzing the data, I notice that the effect of irrigation is very strong, and I wonder if the variability associated with it overshadows potential interactions? Here is an example of analyzed data for stomatal conductance in which we took two subsamples per plant.
SAS Output
SAS Output
Type III Tests of Fixed Effects
Effect Num DF Den DF F Value Pr > F
Genotype 2 50 3.06 0.0559
Irrigation 1 50 1168.62 <.0001
Interaction 2 50 1.97 0.1506
Any input would be much appreciated!
David
If you truly have a full factorial, then the answer to your question is NO. Each factor and interaction explains a certain amount of variability of the response, independently of the others, and so the big value you get is because the effect of irrigation is huge, and the effect of genotype and interaction is quite small.
If you truly have a full factorial, then the answer to your question is NO. Each factor and interaction explains a certain amount of variability of the response, independently of the others, and so the big value you get is because the effect of irrigation is huge, and the effect of genotype and interaction is quite small.
That's the beauty of designed experiments: the factors are not correlated
Build your skills. Make connections. Enjoy creative freedom. Maybe change the world. Registration is now open through August 30th. Visit the SAS Hackathon homepage.
Register today!ANOVA, or Analysis Of Variance, is used to compare the averages or means of two or more populations to better understand how they differ. Watch this tutorial for more.
Find more tutorials on the SAS Users YouTube channel.