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I would like to use the !is.na command to remove rows partially containing NAs:

table=data.frame(col1=c(1:2,NA,4,NA,4),col2=c(7:9,NA,NA,NA),col3=c(2:4,NA,NA,4),col4=c(1:6))

col1 col2 col3 col 4
1    7    2    1     
2    8    3    2 
NA   9    4    3
4    NA   NA   4
NA   NA   NA   5
4    NA   4    6

this should all happen INSIDE an lme-environment, something like:

lme(col1~ log(col2)+col3, random= ~ 1 |col4, data=table[(!is.na(table[c("col1","col2","col3","col4")])),], method="ML")

it won't work with this code - has anyone another suggestion?

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@Roland I'd put that as answer really. –  Maxim.K Apr 23 '13 at 11:22

1 Answer 1

up vote 2 down vote accepted

Read ?lme and pay special attention to the na.action parameter, which you could set to na.omit or na.exclude. However, if you want to compare models, it would be better to do that outside lme, e.g., lme.dat <- na.omit(table). That way all models would use the same data.

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thank you, I adapted your solution by creating a subset for the individual columns. however, when using stepAIC na.omit or na.exclude won't work, only is.na will do –  fr4ktus Apr 23 '13 at 13:26
    
and please tell me how to mark code here in the comments-section ^^ –  fr4ktus Apr 23 '13 at 13:29

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