Pls, I need your help. I have a matrix of features X(100*2071 double). Then, I applied svd() on X as in the following code. I read a lot about svd (singular value decompisition) but I can not understand what is the purpose from s as in the code.

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clear; clc;
load X; [ s, ~ ] = svd( X ); D = s( :, 1:20 );%100*20 %%Take only the 20 columns from s
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FAS
FAS on 10 Jan 2018
Thank you so much for your reply. So the purpose from that is to reduce the dimension of features. Actually, from my reading about dictionary learning, I found that svd is used to create the dictionaries. Therefore, from the code above, D is a dictionary, which is 100*20 (only the 20 columns from s).
FAS
FAS on 10 Jan 2018
Edited: FAS on 10 Jan 2018
Pls if you know any elaborated code about this concept tell me. Thank you again.

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