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dataset.py
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dataset.py
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# -*- coding: utf-8 -*-
from __future__ import print_function,division
import numpy as np
from scipy import sparse
import os
import pdb
# np.random.seed(2019)
def select_from_one_class(y_train,prob_pi,label,ratio):
# select positive and negative samples respectively
num_sample = y_train[y_train==label].shape[0]
all_idx = np.arange(y_train.shape[0])[y_train==label]
label_prob_pi = prob_pi[all_idx]
obj_sample_size = int(ratio * num_sample)
sb_idx = None
iteration = 0
while True:
rand_prob = np.random.rand(num_sample)
iter_idx = all_idx[rand_prob < label_prob_pi]
if sb_idx is None:
sb_idx = iter_idx
else:
new_idx = np.setdiff1d(iter_idx, sb_idx)
diff_size = obj_sample_size - sb_idx.shape[0]
if new_idx.shape[0] < diff_size:
sb_idx = np.union1d(iter_idx, sb_idx)
else:
new_idx = np.random.choice(new_idx, diff_size, replace=False)
sb_idx = np.union1d(sb_idx, new_idx)
iteration += 1
if sb_idx.shape[0] >= obj_sample_size:
sb_idx = np.random.choice(sb_idx,obj_sample_size,replace=False)
return sb_idx
if iteration > 100:
diff_size = obj_sample_size - sb_idx.shape[0]
leave_idx = np.setdiff1d(all_idx, sb_idx)
# left samples are sorted by their IF
# leave_idx = leave_idx[np.argsort(prob_pi[leave_idx])[-diff_size:]]
leave_idx = np.random.choice(leave_idx,diff_size,replace=False)
sb_idx = np.union1d(sb_idx, leave_idx)
return sb_idx
def load_data_v1(dataset_name,va_ratio=0.1):
"""Set validation ratio to get tr va and te.
"""
if dataset_name == "criteo1%":
train_set = np.load("data/criteo.tr.r100.gbdt0.ffm.npy").item()
te_set = np.load("data/criteo.va.r100.gbdt0.ffm.npy").item()
x_train = train_set["data"].tocsr()
y_train = np.array(train_set["label"]).flatten().astype(int)
x_va = te_set["data"].tocsr()
y_va = np.array(te_set["label"]).flatten().astype(int)
two_label = np.unique(train_set["label"])
y_train[y_train == two_label[0]] = 0
y_train[y_train == two_label[1]] = 1
y_va[y_va == two_label[0]] = 0
y_va[y_va == two_label[1]] = 1
elif dataset_name == "a1a":
train_set = np.load("data/a1a.tr.npy").item()
va_set = np.load("data/a1a.va.npy").item()
x_train = train_set["data"].tocsr()
y_train = np.array(train_set["label"]).flatten().astype(int)
x_va = va_set["data"].tocsr()
y_va = np.array(va_set["label"]).flatten().astype(int)
two_label = np.unique(train_set["label"])
y_train[y_train == two_label[0]] = 0
y_train[y_train == two_label[1]] = 1
y_va[y_va == two_label[0]] = 0
y_va[y_va == two_label[1]] = 1
elif dataset_name == "criteo":
train_set = np.load("data/criteo.tr.r100.gbdt0.ffm.npy").item()
va_set = np.load("data/criteo.va.r100.gbdt0.ffm.npy").item()
x_train = train_set["data"].tocsr()
y_train = np.array(train_set["label"]).flatten().astype(int)
x_va = va_set["data"].tocsr()
y_va = np.array(va_set["label"]).flatten().astype(int)
two_label = np.unique(train_set["label"])
y_train[y_train == two_label[0]] = 0
y_train[y_train == two_label[1]] = 1
y_va[y_va == two_label[0]] = 0
y_va[y_va == two_label[1]] = 1
elif dataset_name == "news20":
train_set = np.load("data/news20.binary.npy").item()
train_set_data = train_set["data"].tocsr()
train_set_label = train_set["label"].flatten().astype(int)
two_label = np.unique(train_set["label"])
train_set_label[train_set_label==two_label[0]] = 0
train_set_label[train_set_label==two_label[1]] = 1
# train_index = np.random.choice(np.arange(train_set_data.shape[0]),15000,replace=False)
train_index = np.arange(train_set_data.shape[0])[:15000]
x_train = train_set_data[train_index]
y_train = train_set_label[train_index]
va_index = np.setdiff1d(np.arange(train_set_data.shape[0]),train_index)
x_va = train_set_data[va_index]
y_va = train_set_label[va_index]
elif dataset_name == "covtype":
train_set = np.load("data/covtype.libsvm.binary.scale.npy").item()
train_set_data = train_set["data"].tocsr()
train_set_label = train_set["label"].flatten().astype(int)
two_label = np.unique(train_set["label"])
train_set_label[train_set_label==two_label[0]] = 0
train_set_label[train_set_label==two_label[1]] = 1
# train_index = np.random.choice(np.arange(train_set_data.shape[0]),400000,replace=False)
train_index = np.arange(train_set_data.shape[0])[:400000]
x_train = train_set_data[train_index]
y_train = train_set_label[train_index]
va_index = np.setdiff1d(np.arange(train_set_data.shape[0]),train_index)
x_va = train_set_data[va_index]
y_va = train_set_label[va_index]
elif dataset_name == "mnist":
x_train,y_train,x_test,y_test = load_mnist()
pos_class = 1
neg_class = 7
x_train,y_train = filter_dataset(x_train,y_train,pos_class,neg_class)
x_va,y_va = filter_dataset(x_test,y_test,pos_class,neg_class)
y_va = y_va.astype(int)
y_train = y_train.astype(int)
elif dataset_name == "cancer":
train_set = np.load("data/breast-cancer_scale.npy").item()
train_set_data = train_set["data"].tocsr()
train_set_label = train_set["label"].flatten().astype(int)
two_label = np.unique(train_set["label"])
train_set_label[train_set_label==two_label[0]] = 0
train_set_label[train_set_label==two_label[1]] = 1
# train_index = np.random.choice(np.arange(train_set_data.shape[0]),500,replace=False)
train_index = np.arange(train_set_data.shape[0])[:500]
x_train = train_set_data[train_index]
y_train = train_set_label[train_index]
va_index = np.setdiff1d(np.arange(train_set_data.shape[0]),train_index)
x_va = train_set_data[va_index]
y_va = train_set_label[va_index]
elif dataset_name == "diabetes":
train_set = np.load("data/diabetes_scale.npy").item()
train_set_data = train_set["data"].tocsr()
train_set_label = train_set["label"].flatten().astype(int)
two_label = np.unique(train_set["label"])
train_set_label[train_set_label==two_label[0]] = 0
train_set_label[train_set_label==two_label[1]] = 1
# train_index = np.random.choice(np.arange(train_set_data.shape[0]),500,replace=False)
train_index = np.arange(train_set_data.shape[0])[:500]
x_train = train_set_data[train_index]
y_train = train_set_label[train_index]
va_index = np.setdiff1d(np.arange(train_set_data.shape[0]),train_index)
x_va = train_set_data[va_index]
y_va = train_set_label[va_index]
elif dataset_name == "skin":
train_set = np.load("data/skin_nonskin.npy").item()
train_set_data = train_set["data"].tocsr()
train_set_label = train_set["label"].flatten().astype(int)
two_label = np.unique(train_set["label"])
train_set_label[train_set_label==two_label[0]] = 0
train_set_label[train_set_label==two_label[1]] = 1
# train_index = np.random.choice(np.arange(train_set_data.shape[0]),200000,replace=False)
train_index = np.arange(train_set_data.shape[0])[:200000]
x_train = train_set_data[train_index]
y_train = train_set_label[train_index]
va_index = np.setdiff1d(np.arange(train_set_data.shape[0]),train_index)
x_va = train_set_data[va_index]
y_va = train_set_label[va_index]
elif dataset_name == "realsim":
train_set = np.load("data/real-sim.npy").item()
train_set_data = train_set["data"].tocsr()
train_set_label = train_set["label"].flatten().astype(int)
two_label = np.unique(train_set["label"])
train_set_label[train_set_label==two_label[0]] = 0
train_set_label[train_set_label==two_label[1]] = 1
# train_index = np.random.choice(np.arange(train_set_data.shape[0]),60000,replace=False)
train_index = np.arange(train_set_data.shape[0])[:60000]
x_train = train_set_data[train_index]
y_train = train_set_label[train_index]
va_index = np.setdiff1d(np.arange(train_set_data.shape[0]),train_index)
x_va = train_set_data[va_index]
y_va = train_set_label[va_index]
elif dataset_name == "phishing":
train_set = np.load("data/phishing.npy").item()
train_set_data = train_set["data"].tocsr()
train_set_label = train_set["label"].flatten().astype(int)
two_label = np.unique(train_set["label"])
train_set_label[train_set_label==two_label[0]] = 0
train_set_label[train_set_label==two_label[1]] = 1
# train_index = np.random.choice(np.arange(train_set_data.shape[0]),8000,replace=False)
train_index = np.arange(train_set_data.shape[0])[:8000]
x_train = train_set_data[train_index]
y_train = train_set_label[train_index]
va_index = np.setdiff1d(np.arange(train_set_data.shape[0]),train_index)
x_va = train_set_data[va_index]
y_va = train_set_label[va_index]
elif dataset_name == "cifar10":
train_set = np.load("data/cifar10.npy").item()
test_set = np.load("data/cifar10.t.npy").item()
x_train = train_set["data"]
x_train = x_train / 255.0
y_train = train_set["label"]
x_va = test_set["data"]
x_va = x_va / 255.0
y_va = test_set["label"]
# cat : 3, dog : 5
pos_class = 3
neg_class = 5
x_train,y_train = filter_dataset(x_train,y_train,pos_class,neg_class)
x_va,y_va = filter_dataset(x_va,y_va,pos_class,neg_class)
y_va = y_va.astype(int)
y_train = y_train.astype(int)
elif dataset_name == "svhn":
train_set = np.load("data/SVHN.scale.npy").item()
test_set = np.load("data/SVHN.scale.t.npy").item()
x_train = train_set["data"]
y_train = train_set["label"]
x_va = test_set["data"]
y_va = test_set["label"]
pos_class = 1
neg_class = 7
x_train, y_train = filter_dataset(x_train, y_train, pos_class, neg_class)
x_va, y_va = filter_dataset(x_va, y_va, pos_class, neg_class)
y_va = y_va.astype(int)
y_train = y_train.astype(int)
else:
print("Cannot find the dataset {}, quit.".format(dataset_name))
return
# split tr and va
# num_va_sample = int(va_ratio * x_va.shape[0])
# vate_idx = np.arange(x_va.shape[0])
# va_idx = np.random.choice(vate_idx, num_va_sample, replace=False)
# te_idx = np.setdiff1d(vate_idx, va_idx)
# x_val = x_va[va_idx]
# y_val = y_va[va_idx]
# x_te = x_va[te_idx]
# y_te = y_va[te_idx]
num_va_sample = int((1-va_ratio) * x_train.shape[0])
x_val = x_train[num_va_sample:]
y_val = y_train[num_va_sample:]
x_train = x_train[:num_va_sample]
y_train = y_train[:num_va_sample]
x_te = x_va
y_te = y_va
return x_train,y_train,x_val,y_val,x_te,y_te
def load_data(dataset_name):
if dataset_name == "avazu_app":
train_set = np.load("data/avazu-app.tr.npy").item()
va_set = np.load("data/avazu-app.val.npy").item()
x_train = train_set["data"].tocsr()
y_train = np.array(train_set["label"]).flatten().astype(int)
x_va = va_set["data"].tocsr()
y_va = np.array(va_set["label"]).flatten().astype(int)
two_label = np.unique(train_set["label"])
y_train[y_train == two_label[0]] = 0
y_train[y_train == two_label[1]] = 1
y_va[y_va == two_label[0]] = 0
y_va[y_va == two_label[1]] = 1
elif dataset_name == "a1a":
train_set = np.load("data/a1a.tr.npy").item()
va_set = np.load("data/a1a.va.npy").item()
x_train = train_set["data"].tocsr()
y_train = np.array(train_set["label"]).flatten().astype(int)
x_va = va_set["data"].tocsr()
y_va = np.array(va_set["label"]).flatten().astype(int)
two_label = np.unique(train_set["label"])
y_train[y_train == two_label[0]] = 0
y_train[y_train == two_label[1]] = 1
y_va[y_va == two_label[0]] = 0
y_va[y_va == two_label[1]] = 1
elif dataset_name == "criteo1%":
train_set = np.load("data/criteo.tr.r100.gbdt0.ffm.npy").item()
va_set = np.load("data/criteo.va.r100.gbdt0.ffm.npy").item()
x_train = train_set["data"].tocsr()
y_train = np.array(train_set["label"]).flatten().astype(int)
x_va = va_set["data"].tocsr()
y_va = np.array(va_set["label"]).flatten().astype(int)
two_label = np.unique(train_set["label"])
y_train[y_train == two_label[0]] = 0
y_train[y_train == two_label[1]] = 1
y_va[y_va == two_label[0]] = 0
y_va[y_va == two_label[1]] = 1
elif dataset_name == "news20":
train_set = np.load("data/news20.binary.npy").item()
train_set_data = train_set["data"].tocsr()
train_set_label = train_set["label"].flatten().astype(int)
two_label = np.unique(train_set["label"])
train_set_label[train_set_label==two_label[0]] = 0
train_set_label[train_set_label==two_label[1]] = 1
train_index = np.random.choice(np.arange(train_set_data.shape[0]),15000,replace=False)
x_train = train_set_data[train_index]
y_train = train_set_label[train_index]
va_index = np.setdiff1d(np.arange(train_set_data.shape[0]),train_index)
x_va = train_set_data[va_index]
y_va = train_set_label[va_index]
elif dataset_name == "covtype":
train_set = np.load("data/covtype.libsvm.binary.scale.npy").item()
train_set_data = train_set["data"].tocsr()
train_set_label = train_set["label"].flatten().astype(int)
two_label = np.unique(train_set["label"])
train_set_label[train_set_label==two_label[0]] = 0
train_set_label[train_set_label==two_label[1]] = 1
train_index = np.random.choice(np.arange(train_set_data.shape[0]),15000,replace=False)
x_train = train_set_data[train_index]
y_train = train_set_label[train_index]
va_index = np.setdiff1d(np.arange(train_set_data.shape[0]),train_index)
x_va = train_set_data[va_index]
y_va = train_set_label[va_index]
else:
print("Cannot find the dataset {}, quit.".format(dataset_name))
return
return x_train,y_train,x_va,y_va
# tool box
def load_mnist(validation_size = 5000):
import gzip
def _read32(bytestream):
dt = np.dtype(np.uint32).newbyteorder(">")
return np.frombuffer(bytestream.read(4),dtype=dt)[0]
def extract_images(f):
print("Extracting",f.name)
with gzip.GzipFile(fileobj=f) as bytestream:
magic = _read32(bytestream)
num_images = _read32(bytestream)
rows = _read32(bytestream)
cols = _read32(bytestream)
buf = bytestream.read(rows * cols * num_images)
data = np.frombuffer(buf,dtype=np.uint8)
data = data.reshape(num_images,rows,cols,1)
return data
def extract_labels(f):
print('Extracting', f.name)
with gzip.GzipFile(fileobj=f) as bytestream:
magic = _read32(bytestream)
num_items = _read32(bytestream)
buf = bytestream.read(num_items)
labels = np.frombuffer(buf, dtype=np.uint8)
return labels
data_dir = "./data"
TRAIN_IMAGES = os.path.join(data_dir,'train-images-idx3-ubyte.gz')
with open(TRAIN_IMAGES,"rb") as f:
train_images = extract_images(f)
TRAIN_LABELS = os.path.join(data_dir,'train-labels-idx1-ubyte.gz')
with open(TRAIN_LABELS,"rb") as f:
train_labels = extract_labels(f)
TEST_IMAGES = os.path.join(data_dir,'t10k-images-idx3-ubyte.gz')
with open(TEST_IMAGES,"rb") as f:
test_images = extract_images(f)
TEST_LABELS = os.path.join(data_dir,'t10k-labels-idx1-ubyte.gz')
with open(TEST_LABELS,"rb") as f:
test_labels = extract_labels(f)
# split train and val
train_images = train_images[validation_size:]
train_labels = train_labels[validation_size:]
# preprocessing
train_images = train_images.astype(np.float32) / 255
test_images = test_images.astype(np.float32) / 255
# reshape for logistic regression
train_images = np.reshape(train_images, [train_images.shape[0], -1])
test_images = np.reshape(test_images, [test_images.shape[0], -1])
return train_images,train_labels,test_images,test_labels
def filter_dataset(X, Y, pos_class, neg_class, mode=None):
"""
Filters out elements of X and Y that aren't one of pos_class or neg_class
then transforms labels of Y so that +1 = pos_class, -1 = neg_class.
"""
assert(X.shape[0] == Y.shape[0])
assert(len(Y.shape) == 1)
Y = Y.astype(int)
pos_idx = Y == pos_class
neg_idx = Y == neg_class
Y[pos_idx] = 1
Y[neg_idx] = -1
idx_to_keep = pos_idx | neg_idx
X = X[idx_to_keep, ...]
Y = Y[idx_to_keep]
if Y.min() == -1 and mode != "svm":
Y = (Y + 1) / 2
Y.astype(int)
return (X, Y)