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I was running svm-based classification algorithm (using e1071 package) on a pretty large data set, and the R returns the following warning message:

> model1 <- svm(features.training,labels.training,type='C',kernel='linear')
  Error: cannot allocate vector of size 457.8 Mb
  In addition: Warning messages:
 1: In data.frame(y, x) :
   Reached total allocation of 3893Mb: see help(memory.size)
 2: In data.frame(y, x) :
   Reached total allocation of 3893Mb: see help(memory.size)
 3: In data.frame(y, x) :
    Reached total allocation of 3893Mb: see help(memory.size)
 4: In data.frame(y, x) :
    Reached total allocation of 3893Mb: see help(memory.size)

The machine has 4G RAM and runs on windows 7-64bit operating system. How to handle this problem?

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You need to have not just 457.8 Mb of memory but it has to be contiguous. You can try closing other things and restarting R, but the moral of the story is often "you need more memory to do that!" –  Justin Dec 13 '12 at 22:53
1  
The other common confusion with that error message is that it means that R has already filled up nearly all of your available RAM, and then needed a 457MB chunk on top of that that wasn't available (since everything else was in use). –  joran Dec 13 '12 at 23:15
    
Are you running 32- or 64-bit R? If 64-bit, try running in 32-bits. As native pointers are smaller in 32-bit mode, everything takes less space to hold. –  Matthew Lundberg Dec 14 '12 at 5:34
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