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cnn_models.py
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cnn_models.py
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'''
created on July 21, 2017
@author: Beili
'''
from __future__ import print_function
import os
import time
import sys
from util import eval_RMSE
import math
import numpy as np
from text_analysis.models import CNN_module
from text_analysis.aSDAE import aSDAE_module
if sys.version_info.major == 2:
range = xrange
def PHDMF(res_dir, train_user, train_item, valid_user, test_user,
R, CNN_X, aSDAE, vocab_size, init_W=None, give_item_weight=True,
max_iter=50, lambda_u=1, lambda_v=100, dimension=50,
dropout_rate=0.2, emb_dim=200, max_len=300, num_kernel_per_ws=100):
# explicit setting
a = 1
b = 0
aSDAE_encoder_dimension=100
user_feature=42
num_user = R.shape[0]
num_item = R.shape[1]
PREV_LOSS = 1e-50
if not os.path.exists(res_dir):
os.makedirs(res_dir)
f1 = open(res_dir + '/state.log', 'w')
Train_R_I = train_user[1]
Train_R_J = train_item[1]
Test_R = test_user[1]
Valid_R = valid_user[1]
if give_item_weight is True:
item_weight = np.array([math.sqrt(len(i))
for i in Train_R_J], dtype=float)
item_weight = (float(num_item) / item_weight.sum()) * item_weight
else:
item_weight = np.ones(num_item, dtype=float)
pre_val_eval = 1e10
cnn_module = CNN_module(dimension, vocab_size, dropout_rate,emb_dim, max_len, num_kernel_per_ws, init_W)
theta = cnn_module.get_projection_layer(CNN_X)
#asdae_module = aSDAE_module(aSDAE_encoder_dimension,dimension,num_item,user_feature)
#alpha = asdae_module.get_middle_layer(R.toarray(),aSDAE.toarray())
np.random.seed(133)
U = np.random.uniform(size=(num_user, dimension))
#U = alpha
V = theta
endure_count = 5
count = 0
for iteration in range(max_iter):
loss = 0
tic = time.time()
print("%d iteration\t(patience: %d)" % (iteration, count))
VV = b * (V.T.dot(V)) + lambda_u * np.eye(dimension)
sub_loss = np.zeros(num_user)
for i in range(num_user):
idx_item = train_user[0][i]
V_i = V[idx_item]
R_i = Train_R_I[i]
A = VV + (a - b) * (V_i.T.dot(V_i))
B = (a * V_i * (np.tile(R_i, (dimension, 1)).T)).sum(0)
U[i] = np.linalg.solve(A, B)
sub_loss[i] = -0.5 * lambda_u * np.dot(U[i], U[i])
loss = loss + np.sum(sub_loss)
#asdae_seed = np.random.randint(100000)
#asdae_history = asdae_module.train(R.toarray(),aSDAE.toarray(),U,asdae_seed)
#alpha = asdae_module.get_middle_layer(R.toarray(),aSDAE.toarray())
#loss = loss - 0.5 * lambda_u * asdae_history.history['loss'][-1]
sub_loss = np.zeros(num_item)
UU = b * (U.T.dot(U))
for j in range(num_item):
idx_user = train_item[0][j]
U_j = U[idx_user]
R_j = Train_R_J[j]
tmp_A = UU + (a - b) * (U_j.T.dot(U_j))
A = tmp_A + lambda_v * item_weight[j] * np.eye(dimension)
B = (a * U_j * (np.tile(R_j, (dimension, 1)).T)
).sum(0) + lambda_v * item_weight[j] * theta[j]
V[j] = np.linalg.solve(A, B)
sub_loss[j] = -0.5 * np.square(R_j * a).sum()
sub_loss[j] = sub_loss[j] + a * np.sum((U_j.dot(V[j])) * R_j)
sub_loss[j] = sub_loss[j] - 0.5 * np.dot(V[j].dot(tmp_A), V[j])
loss = loss + np.sum(sub_loss)
seed = np.random.randint(100000)
history = cnn_module.train(CNN_X, V, item_weight, seed)
theta = cnn_module.get_projection_layer(CNN_X)
cnn_loss = history.history['loss'][-1]
loss = loss - 0.5 * lambda_v * cnn_loss * num_item
tr_eval = eval_RMSE(Train_R_I, U, V, train_user[0])
val_eval = eval_RMSE(Valid_R, U, V, valid_user[0])
te_eval = eval_RMSE(Test_R, U, V, test_user[0])
toc = time.time()
elapsed = toc - tic
converge = abs((loss - PREV_LOSS) / PREV_LOSS)
if (val_eval < pre_val_eval):
cnn_module.save_model(res_dir + '/CNN_weights.hdf5')
np.savetxt(res_dir + '/U.dat', U)
np.savetxt(res_dir + '/V.dat', V)
np.savetxt(res_dir + '/theta.dat', theta)
#np.savetxt(res_dir + '/alpha.dat', alpha)
else:
count = count + 1
pre_val_eval = val_eval
print("Loss: %.5f Elpased: %.4fs Converge: %.6f Tr: %.5f Val: %.5f Te: %.5f" % (
loss, elapsed, converge, tr_eval, val_eval, te_eval))
f1.write("Loss: %.5f Elpased: %.4fs Converge: %.6f Tr: %.5f Val: %.5f Te: %.5f\n" % (
loss, elapsed, converge, tr_eval, val_eval, te_eval))
if (count == endure_count):
break
PREV_LOSS = loss
f1.close()