[R] Interpreting and visualising lme results
David Winsemius
dwinsemius at comcast.net
Fri Oct 26 08:00:21 CEST 2012
On Oct 25, 2012, at 10:32 PM, Santini Silvana wrote:
> Dear R users,
> I have used the following function (in blue)
No, we do not do "in blue" here. This is a monochrome mailing list.
> aiming to find the linear regression between MOE and XLA and nesting my data by Species. I have obtained the following results (in green).
> model4<-lme(MOE~XLA, random = ~ XLA|Species, method="ML")summary(model4)
> Linear mixed-effects model fit by maximum likelihood Data: NULL AIC BIC logLik -1.040187 8.78533 6.520094
> Random effects: Formula: ~XLA | Species Structure: General positive-definite, Log-Cholesky parametrization StdDev Corr (Intercept) 1.944574e-01 (Intr)XLA 6.134158e-06 -0.884Residual 1.636428e-01
> Fixed effects: MOE ~ XLA Value Std.Error DF t-value p-value(Intercept) 3.0558697 0.15075939 32 20.269847 0.0000XLA 0.0000005 0.00000335 32 0.150811 0.8811 Correlation: (Intr)XLA -0.861
> Standardized Within-Group Residuals: Min Q1 Med Q3 Max -1.8354171 -0.4704322 0.1414749 0.5500273 1.5950338
> Number of Observations: 38Number of Groups: 5
> I have read that large correlation values such as,Correlation: (Intr)XLA -0.861"reflect an ill-conditioned model", in addition XLA does not have an effect on the model p=0.88. These results are not logic when I look at my data and therefore I think I am missing something in the model? It would be very helpful if someone has some tips on this? In addition, I was wondering if somebody knows what is the best way to visualise this kind of data (nested data)?
> Thank you very much for any help and time.
>
>
> [[alternative HTML version deleted]]
We also do not do HTML. This message is mangled.
--
David Winsemius, MD
Alameda, CA, USA
More information about the R-help
mailing list