Open GoogleCodeExporter opened 9 years ago
could you specify more information?
is it a 32 bit OS or 64 bit OS? 32-bit can have process sizes atmost 2GB or so
for windows and around 3 GB or so for linux, 64 bit dont have that issue
what dataset size are you using like the number of examples, number of
dimensions and the number of trees and type of algorithm
classificaiton/regression
Original comment by abhirana
on 10 Apr 2012 at 1:11
I recently use the random forest to classify the traffical sigh .And the number of the training subset feature of traffical sigh is 39210,the number of the test subset feature is 12630.When I impletment the code in Windows-Precompiled-RF_MexStandalone-v0.02- as follows:
X=importdata('F:\硕士论文\GTSRB\Random
Forest\RF_Class_C\Train_HOG2_LDAData_noLabel_41dim.txt');
Y=importdata('F:\硕士论文\GTSRB\Random
Forest\RF_Class_C\Train_HOG2_LabelData.txt');
ntree=400;
model=classRF_train(X,Y,ntree);
But if I set the parameter ntree more than 300 ,for instance ntree set to
400,it will appear the case represented below:
Error using ==> mexClassRF_train
Out of memory. Type HELP MEMORY for your options.
Error in ==> classRF_train at 347
[nrnodes,ntree,xbestsplit,classwt,cutoff,treemap,nodestatus,nodeclass,bestvar,ndbigtree,mtry ...
Error in ==> Untitled at 13
model=classRF_train(X,Y,ntree);
I would like to ask why this error occur ??Thank you very much
Original comment by 563514...@qq.com
on 14 Apr 2012 at 9:17
??
Original comment by 563514...@qq.com
on 15 Apr 2012 at 1:42
to comment-2,3
i will need the information in comment-1 and additionally the amount of memory
on your machine
Original comment by abhirana
on 15 Apr 2012 at 7:28
To answer comment 1:
Windows 64 bit OS, Matlab 2011, input feature matrix 700000*10, however I
sample every 50 points but still I get out of memory message. We usually need
ML, for very large datasets, what is the data size limit for each algorithm?
Original comment by mahdieh....@gmail.com
on 18 Apr 2012 at 3:55
Original issue reported on code.google.com by
mahdieh....@gmail.com
on 8 Apr 2012 at 5:10