Created
December 28, 2012 00:45
-
-
Save anonymous/4393530 to your computer and use it in GitHub Desktop.
Experiment with soft-threshold cosine to k-means centers feature expansion on MNIST data.
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
"""Experiment with soft-thresholded k-means feature for MNIST classification | |
This is experiment is a tentative alternative to approximate kernel expansions | |
explored on the same dataset by @amueller on this blog post: | |
http://peekaboo-vision.blogspot.fr/2012/12/kernel-approximations-for-efficient.html | |
Meant to be run with ``%run script.py`` in IPython. | |
The 1000-dim k-means based feature expansion should yield ~96% test accuracy | |
when trained on 20k samples in less than 20s (unsupervised feature extraction | |
+ classifier training). | |
The baseline linear model is accuracy 91% on the same dataset. | |
""" | |
# Author: [email protected] | |
# License: Simplified BSD | |
from time import time | |
import numpy as np | |
from sklearn.datasets import fetch_mldata | |
from sklearn.cross_validation import cross_val_score | |
from sklearn.cross_validation import train_test_split | |
from sklearn.pipeline import Pipeline | |
from sklearn.preprocessing import MinMaxScaler | |
from sklearn.preprocessing import normalize | |
from sklearn.decomposition import RandomizedPCA | |
from sklearn.cluster import MiniBatchKMeans | |
from sklearn.svm import LinearSVC | |
mnist = fetch_mldata('MNIST original') | |
# Load 30k samples in the dev set as we will use 3-folds CV, hence 20k samples | |
# for each training set. | |
X_dev, X_test, y_dev, y_test = train_test_split( | |
mnist.data.astype(np.float32), mnist.target, train_size=30000, | |
random_state=1) | |
scaler = MinMaxScaler() | |
X_scaled_dev = scaler.fit_transform(X_dev) | |
X_scaled_test = scaler.transform(X_test) | |
print("n_samples=%d, n_features=%d" % X_dev.shape) | |
print("n_classes=%d" % np.unique(y_dev).shape[0]) | |
class MiniBatchKMeansMapper(MiniBatchKMeans): | |
"""Soft thresholding cosine transfomer k-means | |
This is some kind poors man, non linear sparse coded feature mapping. | |
""" | |
def _transform(self, X): | |
# Compute cosine similarities of samples w.r.t. k-means centers | |
# TODO: optim normalize the centers ones and for all | |
c = normalize(self.cluster_centers_) | |
X = normalize(X) | |
sims = np.dot(X, c.T) | |
# Remove the negative cosine features (~%50% of them) | |
# TODO: make it possible to use a percentile or an absolute parameter | |
# in range (-1, 1) to be cross-validated | |
sims[sims < 0.0] = 0.0 | |
# Project the new features on the unit euclidean ball because it | |
# seems reasonable... | |
# TODO: make normalization optional to be cross validated | |
return normalize(sims, copy=True) | |
mapper = MiniBatchKMeansMapper( | |
n_clusters=1000, n_init=1, init='random', batch_size=1000, | |
init_size=3000, random_state=1, verbose=0, | |
compute_labels=False) | |
models = [ | |
LinearSVC(C=0.01, random_state=1), | |
Pipeline([ | |
# Reduce dimensionality to make K-Means converge faster | |
('dim_reduction', RandomizedPCA(50, whiten=True, random_state=1)), | |
# Non linear feature extraction akin to an approximate kernel | |
# expansion | |
('feature_map', mapper), | |
# Linear classification | |
('svm', LinearSVC(C=1, random_state=1)), | |
]), | |
] | |
def bench(model, X, y, cv=3): | |
print("Computing %d-CV for %r..." % (cv, model)) | |
t0 = time() | |
scores = cross_val_score(model, X, y, cv=cv, verbose=1, n_jobs=1) | |
time_linear = time() - t0 | |
print("score: %0.3f +/- %0.3f" % (np.mean(scores), np.std(scores))) | |
# compute duration for 1 fold, assuming n_jobs=1 | |
duration = time_linear / scores.shape[0] | |
print("duration: %0.3fs" % duration) | |
return np.mean(scores), duration | |
results = [bench(m, X_scaled_dev, y_dev) for m in models] |
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment