Python 2.7.3 numpy 1.8.0
Hi all, I am using numpy for a few months and I need help with some basic stuff. The code below should work and the bit I need help with is highlighted (# <<<<<<<):
import numpy as np rng = np.random.RandomState(12345) samples = np.array(np.arange(400).reshape(50, 8)) nSamples = samples.shape FOLDS = 15 foldSize = nSamples / FOLDS indices = np.arange(nSamples) rng.shuffle(indices) slices = [slice(i * foldSize , (i + 1) * foldSize, 1) for i in xrange(FOLDS + 1)] for i in xrange(len(slices)): y = samples[indices[slices[i]]] x = np.array([x for x in samples if x not in samples[slices[i]]]) # <<<<<<< #do some processing with x and y
Basically random slices a 2D array row-wisely, use the full array to process and test in the sliced bit, then repeat for the for another slice util everything is done (It called an cross-validation experiment).
My question is: Is there a better way to select all rows in a ndarray but a slice? Am I missing something? What is the advised way to [x for x in samples if x not in samples[indices][0:3]] ?
Thanks in advance.
ps: masked arrays does not solve my problem. ps1: I know it's already implemented elsewhere, I just need to learn.