Hi Miki and Chunhao, << Rusers (Anna, and Mark {thank you guys}) provide me a vary valuable << information.
Also see Gavin Simpson's posting earlier today: apparently multcomp does now work with lmer objects (it's gone through phases of not working, then working: it's still being developed). Beware, though, that random effects are specified differently, so it's not as easy to recast an aov(... + Error(...)) term structure as an equivalent random effect's structure. HTH, Mark. ctu wrote: > > Hi Miki, > I just got the same problem with you couple hours ago. > Rusers (Anna, and Mark {thank you guys}) provide me a vary valuable > information. > link to following address. > > http://www.nabble.com/Tukey-HSD-(or-other-post-hoc-tests)-following-repeated-measures-ANOVA-td17508294.html#a17559307 > for the A vs. B, A vs. C.... > You could install and download the multcomp package and perform the > post hoc test > such as > summary(glht(lmel,linfct=mcp(treatment="Tukey"))) > > hopefully it helps > Chunhao > > > Quoting M Ensbey <[EMAIL PROTECTED]>: > >> Hi, >> >> >> >> I have searched the archives and can't quite confirm the answer to this. >> I appreciate your time... >> >> >> >> I have 4 treatments (fixed) and I would like to know if there is a >> significant difference in metal volume (metal) between the treatments. >> The experiment has 5 blocks (random) in each treatment and no block is >> repeated across treatments. Within each plot there are varying numbers >> of replicates (random) (some plots have 4 individuals in them some have >> 14 and a range in between). NOTE the plots in one treatment are not >> replicated in the others. >> >> >> >> So I end up with a data.frame with 4 treatments repeated down one column >> (treatment=A, B, C, D), 20 plots repeated down the next (block= 1 to 20) >> and records for metal volume (metal- 124 of these) >> >> I have made treatment and block a factor. But haven't grouped them (do I >> need to and how if so) >> >> >> >> The main question is in 3 parts: >> >> >> >> 1. is this the correct formula to use for this situation: >> lme1<-lme(metal~treatment,data=data,random=~1|block) (or is lme even the >> right thing to use here?) >> >> >> >> I get: >> >>> summary(lme1) >> >> Linear mixed-effects model fit by REML >> >> Data: data >> >> AIC BIC logLik >> >> 365.8327 382.5576 -176.9163 >> >> >> >> Random effects: >> >> Formula: ~1 | block >> >> (Intercept) Residual >> >> StdDev: 0.4306096 0.9450976 >> >> >> >> Fixed effects: Cu ~ Treatment >> >> Value Std.Error DF t-value p-value >> >> (Intercept) 5.587839 0.2632831 104 21.223688 0.0000 *** >> >> TreatmentB -0.970384 0.3729675 16 -2.601792 0.0193 *** >> >> TreatmentC -1.449250 0.3656351 16 -3.963651 0.0011 *** >> >> TreatmentD -1.319564 0.3633837 16 -3.631323 0.0022 *** >> >> Correlation: >> >> (Intr) TrtmAN TrtmCH >> >> TreatmentB -0.706 >> >> TreatmentC -0.720 0.508 >> >> TreatmentD -0.725 0.511 0.522 >> >> >> >> Standardized Within-Group Residuals: >> >> Min Q1 Med Q3 Max >> >> -2.85762206 -0.68568460 -0.09004478 0.56237152 3.20650288 >> >> >> >> Number of Observations: 124 >> >> Number of Groups: 20 >> >> >> >> 2. if so how can I get p values for comparisons between every >> group... ie is A different from B, is A different from C, is A different >> from D, is B different from C, is B different from D etc... is there a >> way to get all of these instead of just "is A different from B, is A >> different from C, is A different from D" which summary seems to give? >> 3. last of all what is the best way to print out all the residuals >> for lme... I can get qqplot(lme1) is there a pre-programmed call for >> multiple diagnostic plots like in some other functions... >> >> >> >> >> >> Thankyou so Much for your time.... >> >> >> >> It is much appreciated >> >> ;-) >> >> >> >> Miki >> >> >> >> >> [[alternative HTML version deleted]] >> >> ______________________________________________ >> R-help@r-project.org mailing list >> https://stat.ethz.ch/mailman/listinfo/r-help >> PLEASE do read the posting guide >> http://www.R-project.org/posting-guide.html >> and provide commented, minimal, self-contained, reproducible code. >> > > ______________________________________________ > R-help@r-project.org mailing list > https://stat.ethz.ch/mailman/listinfo/r-help > PLEASE do read the posting guide > http://www.R-project.org/posting-guide.html > and provide commented, minimal, self-contained, reproducible code. > > -- View this message in context: http://www.nabble.com/Mixed-effects-model-where-nested-factor-is-not-the-repeated-across-treatments-lme----tp18732327p18738202.html Sent from the R help mailing list archive at Nabble.com. ______________________________________________ R-help@r-project.org mailing list https://stat.ethz.ch/mailman/listinfo/r-help PLEASE do read the posting guide http://www.R-project.org/posting-guide.html and provide commented, minimal, self-contained, reproducible code.