problem of convergence of simulated data
I've faced the same problem with fitting models before. I'm simulating different permutations of data sets, starting off with the baseline that has almost no variance at all, hence it is difficult for the algorithm to converge. Having said that, the estimates will be more than adequate if I could relax the convergence criteria even a little. Is there a way to do such with the lme procedure? Thanks for any suggestions. J Error in lme.formula(nmalor ~ 0 + nmatr1 + nmatr3, ~1 | trtpair, data = fednmadat, : nlminb problem, convergence error code = 1 message = singular convergence (7)
Dr. Jim Maas University of East Anglia