I am trying to use SOM to learn 80000X10 samples (each sample is a vector of size 10). But I can't even configure 8x8 net with 10000X1 samples. It throws "out of memory" error.
Here is my code (data is 80000X10 matrix):
net=selforgmap([8 8]) net=configure(net,data(1:10000,1))
Matlab help: "Unconfigured networks are automatically configured and initialized the first time train is called."
Even for 8000X1 dataset, it takes a lot of time. I noticed a huge
numWeightElements: 512000 in
net variable (8*8*8000=512000). The weights should be 8*8. SOM training algorithm shouldn't use this much memory. What is wrong?
The output of memory command:
>> memory Maximum possible array: 3014 MB (3.160e+009 bytes) Memory available for all arrays: 3014 MB (3.160e+009 bytes) Memory used by MATLAB: 1154 MB (1.210e+009 bytes) Physical Memory (RAM): 4040 MB (4.236e+009 bytes)