Peter Dalgaard <[EMAIL PROTECTED]> writes: > Bela Bauer <[EMAIL PROTECTED]> writes: > > > Hi, > > > > I'm still not quite there with my H-F (G-G) correction code. I have it > > working for the main effects, but I just can't figure out how to do it > > for the effect interactions. The thing I really don't know (and can't > > find anything about) is how to calculate the covariance matrix for the > > interaction between the two (or even n) main factors. > > I've looked through some books here and I've tried everything that came > > to my mind, but I can't seem to be able to figure out an algorithm that > > does it for me. > > > > Could anyone give me a hint about how I could do this? > > (I'll append my code at the end, in case that helps in any way...) > > I have given it to you before: My plan is to drop the explicit formula > involving on/off diagonal elements of S and go directly at Box (1954), > theorems 3.1 and 6.1, involving eigenvalues of TST', where T is the > relevant residual operator. In the case where one of the factors have > only two levels, I believe you just take differences and use the usual > formula, but more than two levels is tricky.
[moved to r-devel since this is getting technical] Now I am getting confused: I can reproduce the G-G epsilon in all the cases I have tried but the H-F epsilon eludes me. Consider this SAS code proc glm; model bmc1-bmc7= / nouni; repeated visit 7/printe; This ends up with Greenhouse-Geisser Epsilon 0.6047 Huynh-Feldt Epsilon 0.7466 This makes OK sense since there are 22 observations > (22*6*0.6047 -2)/(6*(21-6*.6047)) [1] 0.7466162 However, consider the following small change: proc glm; class grp; model bmc1-bmc7= grp / nouni; repeated visit 7/printe; Now I get Greenhouse-Geisser Epsilon 0.6677 Huynh-Feldt Epsilon 0.8976 Since we have one less DF for the covariance matrix, I would expect that the H-F epsilon would be > (21*6*0.6677)/(6*(20-6*.6677)) [1] 0.876696 The discrepancy gets worse as more covariates are added. If bmc1 is moved to the rhs, I get Greenhouse-Geisser Epsilon 0.6917 Huynh-Feldt Epsilon 0.9533 Where I would have expected > (20*5*0.6917-2)/(5*(19-5*.6917)) [1] 0.8643953 Does anyone have a clue as to what is going on here? Is mighty SAS simply doing the wrong thing? The G-G epsilon depends only on the eigenvalues of the observed covariance matrix, so surely the H-F correction should depend only on the dimension and the DF for the empirical covariance matrix? -- O__ ---- Peter Dalgaard Blegdamsvej 3 c/ /'_ --- Dept. of Biostatistics 2200 Cph. N (*) \(*) -- University of Copenhagen Denmark Ph: (+45) 35327918 ~~~~~~~~~~ - ([EMAIL PROTECTED]) FAX: (+45) 35327907 ______________________________________________ R-devel@stat.math.ethz.ch mailing list https://stat.ethz.ch/mailman/listinfo/r-devel