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  • 0 posts edited
  • 16 helpful flags
  • 63 votes cast
Jul
17
comment Dimensionality reduction being way too slow using PCA and a small dataset
Yes currently sourceforge.net is down for maintenance... Try again later if possible...
Jul
17
comment Dimensionality reduction being way too slow using PCA and a small dataset
i've left it for a whole night...
Jul
17
comment Dimensionality reduction being way too slow using PCA and a small dataset
If i use the timer the 100x100 example dataset takes less than five minutes.... my dataset takes more than 8 hours and the process is not completed....
Jul
17
comment Dimensionality reduction being way too slow using PCA and a small dataset
less than five minutes
Jul
17
comment Dimensionality reduction being way too slow using PCA and a small dataset
per hours leaving my laptop running the algorithm... still though it should end in a more logical amount of time... i've left my laptop awake for more than 8 hours and the process had not been completed...
Jul
17
comment Dimensionality reduction being way too slow using PCA and a small dataset
yes the fast pca example they offer in the documentation of the mlpy project produces random matrices of size (100,100) that are processed much faster... mlpy.sourceforge.net/docs/3.2/dim_red.html
Jul
17
reviewed Approve Dimensionality reduction being way too slow using PCA and a small dataset
Jul
17
revised Dimensionality reduction being way too slow using PCA and a small dataset
removed a live from code, about feature normalization
Jul
17
revised Dimensionality reduction being way too slow using PCA and a small dataset
added 2 characters in body
Jul
17
asked Dimensionality reduction being way too slow using PCA and a small dataset
Jul
16
comment Principal Component Analysis is too slow (MLPY Python)
It is still extremely slow for these values as input... [[ 25.41715598 61.24100568 78.21774582 ..., 35.7725319 25.55635452 59.67770427] [ 24.10177417 54.48008719 77.36612692 ..., 36.5470486 28.06270381 65.33576772] [ 99.95571486 25.75287331 2.44697065 ..., 57.27236989 47.66697259 61.76482782] ..., [ 14.08662172 34.55754975 78.76162523 ..., 69.90008149 53.78012629 65.20897517] [ 57.27756422 84.82954608 32.89872091 ..., 70.30544719 70.07598884 74.17392067] [ 29.07113797 54.09999414 91.27929386 ..., 38.99013613 0. 35.37752174]]
Jul
16
awarded  Custodian
Jul
16
comment Principal Component Analysis is too slow (MLPY Python)
Actually the algorithm runs for an infinate amount of time for the 7.55302582e-05 value...
Jul
16
reviewed Edit Principal Component Analysis is too slow (MLPY Python)
Jul
16
revised Principal Component Analysis is too slow (MLPY Python)
fix spelling
Jul
16
comment Principal Component Analysis is too slow (MLPY Python)
n=100 d=100 i'll correct this in the main post too..
Jul
16
asked Principal Component Analysis being too slow (MLPY Python)
Jul
16
asked Principal Component Analysis is too slow (MLPY Python)
Mar
15
awarded  Popular Question
Jan
19
revised Ideas for generating random lobulated pulmonary nodule contours
deleted 1 character in body