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mymodel_utils_all_vision_elu_exp_3.py
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mymodel_utils_all_vision_elu_exp_3.py
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# coding: utf-8
import tensorflow as tf
import os
import cPickle as pickle
import numpy
import random
from multiprocessing import Process, Queue
import tensorflow as tf
from collections import defaultdict
import os
import numpy as np
import math
import time
import pdb
import cPickle as pickle
user_ratings_original=np.load('./data/user_favor.npy').item()
test_ratings=np.load('./data/mymodel_test.npy').item()
val_ratings=np.load('./data/mymodel_val.npy').item()
user_ratings=np.load('./data/mymodel_train.npy').item()
user_ups=np.load('./data/user_ups.npy')
ups_user=np.load('./data/ups_user.npy')
user_fellows=np.load('./data/user_fellow.npy')
img_feature=np.load('./data/image_feature.npy').item()
#img_feature=img_feature1/15.0
vision_repre=np.load('./data/user_feature_contnt_style.npy').item()
#vision_repre=vision_repre1/15.0
user_id_mapping=len(user_ratings_original)
item_id_mapping=len(ups_user)
print 'user:',user_id_mapping,'item:',item_id_mapping
u_fellow_all=[[]]*user_id_mapping
u_fellow_user_all=[[]]*user_id_mapping
u_fellow_split_all=[[]]*user_id_mapping
u_vision_f_all_b=[[]]*user_id_mapping
for u in range(user_id_mapping):
u_fellow=[]
u_fellow_user=[]
u_vision_f_b=[]
u_vision_f_a=[]
count_fellow=0
for fellow_i in user_fellows[u]:
u_fellow.append(fellow_i)
u_fellow_user.append(u)
u_vision_f_b.append(vision_repre[fellow_i])
count_fellow=count_fellow+1
u_fellow_all[u]=(u_fellow)
u_fellow_user_all[u]=u_fellow_user
u_fellow_split_all[u]=(count_fellow)
u_vision_f_all_b[u]=u_vision_f_b
u_up_all=[[]]*user_id_mapping
u_up_user_all=[[]]*user_id_mapping
u_up_feature_all=[[]]*user_id_mapping
u_up_split_all=[[]]*user_id_mapping
for u in range(user_id_mapping):
u_up=[]
u_up_user=[]
u_up_feature=[]
count_up=0
for up_i in user_ups[u]:
u_up.append(up_i)
u_up_user.append(u)
u_up_feature.append(img_feature[up_i])
count_up=count_up+1
u_up_all[u]=(u_up)
u_up_user_all[u]=u_up_user
u_up_feature_all[u]=u_up_feature
u_up_split_all[u]=(count_up)
def beatch_train_generator(train_ratings,train_ratings_original,user_count,item_count,batch_size,u_i,index_batch):
t_512=[[]]*batch_size
img_i=[[]]*batch_size
img_j=[[]]*batch_size
u_up_512=[[]]*batch_size
u_up_user_512=[[]]*batch_size
u_up_split_512=[[]]*batch_size
u_up_feature_512=[[]]*batch_size
u_fellow_512=[[]]*batch_size
u_fellow_user_512=[[]]*batch_size
u_fellow_split_512=[[]]*batch_size
vision_repre_512_a=[[]]*batch_size
vision_repre_512_b=[[]]*batch_size
vision_repre_u_aspect_512=[[]]*batch_size
gather_upload=[]
gather_social=[]
#start1=time.time()
count=0
for u,i in u_i:
t = []
j = np.random.randint(item_count)
while j in train_ratings_original[u]:
j = np.random.randint(item_count)
t_512[count]=([u,i,ups_user[i],j,ups_user[j]])
vision_repre_512_a[count]=vision_repre[u]
vision_repre_512_b[count]=u_vision_f_all_b[u]
u_up_512[count]=u_up_all[u]#(u_up)
u_up_user_512[count]= u_up_user_all[u]#(u_up_user)
u_up_split_512[count]= u_up_split_all[u]#(count_up )
u_up_feature_512[count]=u_up_feature_all[u]#(u_up_feature)
#np.zeros(u_up_split_all[u])+count
gather_upload=np.concatenate((gather_upload,np.zeros(u_up_split_all[u])+count))
# for i in range(u_up_split_all[u]):
# gather_upload.append(count)
u_fellow_512[count]=u_fellow_all[u]#(u_fellow)
u_fellow_user_512[count]=u_fellow_user_all[u]#(u_fellow_user)
u_fellow_split_512[count]=u_fellow_split_all[u]#(count_fellow)
#for i in range(u_fellow_split_all[u]):
#gather_social.append(count)
gather_social=np.concatenate((gather_social,np.zeros(u_fellow_split_all[u])+count))
count=count+1
one_part=([numpy.asarray(t_512),numpy.asarray(gather_upload),numpy.asarray(gather_social),numpy.asarray(vision_repre_512_a),numpy.asarray(vision_repre_512_b),numpy.asarray(u_up_512), numpy.asarray(u_up_user_512),numpy.asarray(u_up_split_512),numpy.asarray(u_up_feature_512),numpy.asarray(u_fellow_512),numpy.asarray(u_fellow_user_512),numpy.asarray(u_fellow_split_512)])
#start2=time.time()
#print 'one_part:',start2-start1
return one_part
def one_train_generator(train_ratings,train_ratings_original,user_count,item_count,batch_size):
all_result=[]
result=dict()
result_count=0
for u in range(user_count):
for i in train_ratings[u]:
result[result_count]=[u,i]
result_count=result_count+1
result_count=result_count-1
result_all_train_u=range(result_count)
random.shuffle(result_all_train_u)
batch_size_u_i=[]
add_to_512=batch_size-result_count%batch_size
for k in range(add_to_512):
result_all_train_u.append(result_all_train_u[k])
print len(result_all_train_u)/batch_size
index_batch=0
count=1
for index_ in result_all_train_u:
#u,i=dict[index_]
batch_size_u_i.append(result[index_] )
if count%batch_size==0:
temp_data=beatch_train_generator(train_ratings,train_ratings_original,user_count,item_count,batch_size,batch_size_u_i,str(index_batch))
all_result.append(temp_data)
index_batch=index_batch+1
count=0
batch_size_u_i=[]
count=count+1
return all_result
'''
start_time=time.time()
print 'result_all_train start'
all_result_train=one_train_generator(user_ratings,user_ratings_original,user_id_mapping,item_id_mapping,512)
start_time2=time.time()
print 'result_all_train end',start_time2-start_time,len(all_result_train)
'''
def one_test_val_generator(test_or_val_ratings,train_ratings_original,user_count,item_count,batch_size):
all_result=[]
result=dict()
result_count=0
for u in range(user_count):
i =test_or_val_ratings[u]
result[result_count]=[u,i]
result_count=result_count+1
result_count=result_count-1
result_all_train_u=range(result_count)
random.shuffle(result_all_train_u)
batch_size_u_i=[]
add_to_512=batch_size-result_count%batch_size
for k in range(add_to_512):
result_all_train_u.append(result_all_train_u[k])
print len(result_all_train_u)/batch_size
index_batch=0
count=1
for index_ in result_all_train_u:
#u,i=dict[index_]
batch_size_u_i.append(result[index_] )
if count%batch_size==0:
temp_data=beatch_train_generator(test_or_val_ratings,train_ratings_original,user_count,item_count,batch_size,batch_size_u_i,str(index_batch))
all_result.append(temp_data)
index_batch=index_batch+1
count=0
batch_size_u_i=[]
count=count+1
return all_result
'''
start_time=time.time()
print 'result_all_train start'
all_result_test=one_test_val_generator(test_ratings,user_ratings_original,user_id_mapping,item_id_mapping,512)
start_time2=time.time()
print 'result_all_train end',start_time2-start_time
'''
def generate_negative_100(train_ratings_original, user_ratings_test,item_count):
t=[]
for u in train_ratings_original.keys():
i_p=user_ratings_test[u]
temp=[]
rand_200=[random.randint(1, item_count) for _ in range(200)]
for sel_100 in rand_200:
j_ng = sel_100
if not (j_ng in train_ratings_original[u]):
temp.append(j_ng)
t.append([u,i_p,temp])
return t
def Upload_influence_speed(batch_size,u_ups,u_ups_user,user_emb_p,user_emb_q,item_emb_x,item_emb_w,vision_,e_aj_w,e_aj_b,gather_upload):
u_p=(tf.nn.embedding_lookup(user_emb_p, u_ups_user))
u_q=(tf.nn.embedding_lookup(user_emb_q, u_ups_user))
x_up_img=(tf.nn.embedding_lookup(item_emb_x, u_ups))
w_up_img=(tf.nn.embedding_lookup(item_emb_w, u_ups))
x_up=tf.concat([u_p,u_q,x_up_img,w_up_img,vision_],1) #size_up*60
e_aj_temp=tf.nn.elu(tf.matmul(x_up,e_aj_w)+e_aj_b)#(size_up*60 * 60*20)+20=size_up*20
e_aj_temp_sum=(tf.reduce_sum(e_aj_temp,1, keep_dims=True))
e_aj_temp_sum=tf.where(e_aj_temp_sum>88,tf.ones_like(e_aj_temp_sum)*88,e_aj_temp_sum)
e_aj=e_aj_temp_sum#tf.exp(e_aj_temp_sum)+0.001#size_up*1
molecular_e_aj=tf.multiply(e_aj,x_up_img)#size_up*15
denominator_e_aj=e_aj#size_up*1
part_mole=tf.segment_sum(molecular_e_aj,gather_upload)
part_denom=tf.segment_sum(denominator_e_aj,gather_upload)
alpha_all=tf.multiply(part_mole,tf.reciprocal(part_denom))
alpha_all=tf.where(tf.is_nan(alpha_all),tf.ones_like(alpha_all)*0.001,alpha_all)
return alpha_all
def Social_influence_one_cal(batch_size,u_fellows,u_fellows_user,user_emb_p,user_emb_q,vision_beta_a,vision_beta_b,e_ab_w,e_ab_b,gather_social):
#social influence
fellow_pa=(tf.nn.embedding_lookup(user_emb_p, u_fellows))
fellow_qa=(tf.nn.embedding_lookup(user_emb_q, u_fellows))
fellow_pb=(tf.nn.embedding_lookup(user_emb_p, u_fellows_user))
fellow_qb=(tf.nn.embedding_lookup(user_emb_q, u_fellows_user))
x_fellow=tf.concat([fellow_pa,fellow_pb,fellow_qa,fellow_qb,vision_beta_a,vision_beta_b],1) #size_up*60
e_ab_temp=tf.nn.elu(tf.matmul(x_fellow,e_ab_w)+e_ab_b)#(size_up*60 * 60*20)+20=size_up*20
e_ab_temp_sum=(tf.reduce_sum(e_ab_temp,1, keep_dims=True))
e_ab_temp_sum=tf.where(e_ab_temp_sum>88,tf.ones_like(e_ab_temp_sum)*88,e_ab_temp_sum)
e_ab=e_ab_temp_sum#tf.exp(e_ab_temp_sum)+0.001#tf.exp((tf.reduce_sum(e_ab_temp,1, keep_dims=True)))#size_up*1
molecular_e_ab=tf.multiply(e_ab,fellow_qb)#size_up*15
denominator_e_ab=e_ab#size_up*1
part_mole=tf.segment_sum(molecular_e_ab,gather_social)
part_denom=tf.segment_sum(denominator_e_ab,gather_social)
beta_all=tf.multiply(part_mole,tf.reciprocal(part_denom))
beta_all=tf.where(tf.is_nan(beta_all),tf.ones_like(beta_all)*0.001,beta_all)
return beta_all
def Factor_importance(alpha,beta,u_emb_base,u_emb_external,uploader_influence_i,vision_aspect,h_f_w,h_f_b):
#I_l_a=tf.reshape(I_l_a,[batch_size,1])
f1=tf.concat([alpha,u_emb_base,u_emb_external,vision_aspect],1)
f2=tf.concat([beta,u_emb_base,u_emb_external,vision_aspect],1)
f3=tf.concat([uploader_influence_i,u_emb_base,u_emb_external,vision_aspect],1)
e_a_1_temp=tf.reduce_sum(tf.nn.elu(tf.matmul(f1,h_f_w)+h_f_b))
e_a_1_temp=tf.where(e_a_1_temp>88,tf.ones_like(e_a_1_temp)*88,e_a_1_temp)
e_a_1=e_a_1_temp#tf.exp(e_a_1_temp)+0.001#batch_size*
e_a_2_temp=tf.reduce_sum(tf.nn.elu(tf.matmul(f2,h_f_w)+h_f_b))
e_a_2_temp=tf.where(e_a_2_temp>88,tf.ones_like(e_a_2_temp)*88,e_a_2_temp)
e_a_2=e_a_2_temp#tf.exp(e_a_2_temp)+0.001#batch_size*
e_a_3_temp=tf.reduce_sum(tf.nn.elu(tf.matmul(f3,h_f_w)+h_f_b))
e_a_3_temp=tf.where(e_a_3_temp>88,tf.ones_like(e_a_3_temp)*88,e_a_3_temp)
e_a_3=e_a_3_temp#tf.exp(e_a_3_temp)+0.001#batch_size*
denominator_e_ai=e_a_1+e_a_2+e_a_3#tf.add(tf.add(e_a_1,e_a_2),e_a_3)
gamma_a1= e_a_1/denominator_e_ai#tf.reduce_sum(e_a_1/denominator_e_ai,1, keep_dims=True)
gamma_a2= e_a_2/denominator_e_ai#tf.reduce_sum(e_a_2/denominator_e_ai,1, keep_dims=True)
gamma_a3= e_a_3/denominator_e_ai#tf.reduce_sum(e_a_3/denominator_e_ai,1, keep_dims=True)
return [gamma_a1,gamma_a2,gamma_a3]
user_count = (user_id_mapping)-1
item_count = (item_id_mapping)-1
os.environ["CUDA_VISIBLE_DEVICES"]="1"
with tf.Graph().as_default(), tf.Session() as session:
batch_size = 512
#u, i,i_uploader,I_li_a,j,j_uploader,I_lj_a,u_ups,u_ups_user,u_ups_split,u_fellows,u_fellows_user,u_fellows_split,loss, auc,my_get, train_op,train_ = vbpr(user_count, item_count,batch_size)
#user_count, item_count
hidden_dim=15
hidden_img_dim=15
hidden_dim_upload=20
hidden_dim_social=20
hidden_dim_factor=20
learning_rate = 0.0005
l2_regulization = 0.01
bias_regulization=1.0
u = tf.placeholder(tf.int32, [None])
vision_repre_u_a=tf.placeholder(tf.float32, [None,1808])
vision_repre_u_b=tf.placeholder(tf.float32, [None,1808])
gather_upload=tf.placeholder(tf.int32, [None])
gather_social=tf.placeholder(tf.int32, [None])
i = tf.placeholder(tf.int32, [None])
i_uploader=tf.placeholder(tf.int32, [None])
j = tf.placeholder(tf.int32, [None])
j_uploader=tf.placeholder(tf.int32, [None])
u_ups = tf.placeholder(tf.int32,[None])
u_ups_user = tf.placeholder(tf.int32,[None])
u_ups_split = tf.placeholder(tf.int32,[None])
u_ups_feature=tf.placeholder(tf.float32, [None,1808])
u_fellows = tf.placeholder(tf.int32,[None])
u_fellows_user = tf.placeholder(tf.int32,[None])
u_fellows_split = tf.placeholder(tf.int32,[None])
train_ =tf.placeholder(tf.int32,[None])
user_emb_p= tf.get_variable("user_emb_p", [user_count+1, hidden_dim],
initializer=tf.random_normal_initializer(0, 0.01))
user_emb_q= tf.get_variable("user_emb_q", [user_count+1, hidden_dim],
initializer=tf.random_normal_initializer(0, 0.01))
item_emb_w = tf.get_variable("item_emb_w", [item_count+1, hidden_dim],
initializer=tf.random_normal_initializer(0, 0.01))
item_emb_x = tf.get_variable("item_emb_x", [item_count+1, hidden_dim],
initializer=tf.random_normal_initializer(0, 0.01))
item_b = tf.get_variable("item_b", [item_count+1, 1],
initializer=tf.constant_initializer(0.0))
#upload influence feedforward neural net
e_aj_w=tf.get_variable("e_aj_w", [hidden_dim*5, hidden_dim_upload],
initializer=tf.random_normal_initializer(0, 0.01))
e_aj_b=tf.get_variable("e_aj_b", [hidden_dim_upload],
initializer=tf.constant_initializer(0.0))
#upload influence vision part
e_aj_vision_w=tf.get_variable("e_aj_vision_w", [1808, hidden_dim],
initializer=tf.random_normal_initializer(0, 0.01))
#soclai influence feedforward neural net
e_ab_w=tf.get_variable("e_ab_w", [hidden_dim*6, hidden_dim_social],
initializer=tf.random_normal_initializer(0, 0.01))
e_ab_b=tf.get_variable("e_ab_b", [hidden_dim_social],
initializer=tf.constant_initializer(0.0))
e_ab_vision_w=tf.get_variable("e_ab_vision_w", [1808, hidden_dim],
initializer=tf.random_normal_initializer(0, 0.01))
#factor importance feedforward neural net
h_f_w=tf.get_variable("h_f_w", [hidden_dim, hidden_dim_factor],
initializer=tf.random_normal_initializer(0, 0.01))
h_f_b=tf.get_variable("h_f_b", [hidden_dim_factor],
initializer=tf.constant_initializer(0.0))
h_f_vision_w=tf.get_variable("h_f_vision_w", [1808, hidden_dim],
initializer=tf.random_normal_initializer(0, 0.01))
user_emb_p_1=user_emb_p
user_emb_q_1=user_emb_q
item_emb_w_1=item_emb_w
item_emb_x_1=item_emb_x
item_b_1=item_b
vision_alpha=tf.gather(tf.matmul(vision_repre_u_a,e_aj_vision_w),gather_upload)
alpha=Upload_influence_speed(batch_size,u_ups,u_ups_user,user_emb_p,user_emb_q,item_emb_x,item_emb_w,vision_alpha,e_aj_w,e_aj_b,gather_upload)
#vision_alpha=tf.matmul(u_ups_feature,e_aj_vision_w)
vision_beta_a=tf.gather(tf.matmul(vision_repre_u_a,e_ab_vision_w),gather_social)
vision_beta_b=(tf.matmul(vision_repre_u_b,e_ab_vision_w))
# beta=Social_influence_one_cal(batch_size,u_fellows,u_fellows_user,u_fellows_split,user_emb_p_1,user_emb_q_1,vision_beta_a,vision_beta_b,e_ab_w,e_ab_b)
beta=Social_influence_one_cal(batch_size,u_fellows,u_fellows_user,user_emb_p_1,user_emb_q_1,vision_beta_a,vision_beta_b,e_ab_w,e_ab_b,gather_social)
#uploader Influence
uploader_influence_i=tf.nn.embedding_lookup(user_emb_q_1, i_uploader)
uploader_influence_j=tf.nn.embedding_lookup(user_emb_q_1, j_uploader)
u_emb_base = tf.nn.embedding_lookup(user_emb_p_1, u)
u_emb_external = tf.nn.embedding_lookup(user_emb_q_1, u)
i_emb_base = tf.nn.embedding_lookup(item_emb_w_1, i)
i_emb_external = tf.nn.embedding_lookup(item_emb_x_1, i)
j_emb_base = tf.nn.embedding_lookup(item_emb_w_1, j)
j_emb_external = tf.nn.embedding_lookup(item_emb_x_1, j)
item_b_i=tf.nn.embedding_lookup(item_b_1, i)
item_b_j=tf.nn.embedding_lookup(item_b_1, j)
e_a_1_temp=tf.reduce_sum((tf.matmul(alpha,h_f_w)+h_f_b))
e_a_1_temp=tf.where(e_a_1_temp>88,tf.ones_like(e_a_1_temp)*88,e_a_1_temp)
e_a_1=tf.exp(e_a_1_temp)+0.001
e_a_2_temp=tf.reduce_sum((tf.matmul(beta,h_f_w)+h_f_b))
e_a_2_temp=tf.where(e_a_2_temp>88,tf.ones_like(e_a_2_temp)*88,e_a_2_temp)
e_a_2=tf.exp(e_a_2_temp)+0.001
e_a_3_temp=tf.reduce_sum((tf.matmul(uploader_influence_i,h_f_w)+h_f_b))
e_a_3_temp=tf.where(e_a_3_temp>88,tf.ones_like(e_a_3_temp)*88,e_a_3_temp)
e_a_3=tf.exp(e_a_3_temp)+0.001
e_a_3_temp_j=tf.reduce_sum((tf.matmul(uploader_influence_j,h_f_w)+h_f_b))
e_a_3_temp_j=tf.where(e_a_3_temp_j>88,tf.ones_like(e_a_3_temp_j)*88,e_a_3_temp_j)
e_a_3_j=tf.exp(e_a_3_temp_j)+0.001
denominator_e_ai=e_a_1+e_a_2+e_a_3#tf.add(tf.add(e_a_1,e_a_2),e_a_3)
gamma_a1_i= e_a_1/denominator_e_ai#tf.reduce_sum(e_a_1/denominator_e_ai,1, keep_dims=True)
gamma_a2_i= e_a_2/denominator_e_ai#tf.reduce_sum(e_a_2/denominator_e_ai,1, keep_dims=True)
gamma_a3_i= e_a_3/denominator_e_ai#tf.reduce_sum(e_a_3/denominator_e_ai,1, keep_dims=True)
denominator_e_ai=e_a_1+e_a_2+e_a_3_j#tf.add(tf.add(e_a_1,e_a_2),e_a_3)
gamma_a1_j= e_a_1/denominator_e_ai#tf.reduce_sum(e_a_1/denominator_e_ai,1, keep_dims=True)
gamma_a2_j= e_a_2/denominator_e_ai#tf.reduce_sum(e_a_2/denominator_e_ai,1, keep_dims=True)
gamma_a3_j= e_a_3_j/denominator_e_ai#tf.reduce_sum(e_a_3/denominator_e_ai,1, keep_dims=True)
R_ai_temp=(u_emb_base+gamma_a1_i*alpha+gamma_a2_i*beta+gamma_a3_i*uploader_influence_i)
R_ai= tf.diag_part(tf.matmul(R_ai_temp,tf.transpose(i_emb_base)))
R_aj_temp=(u_emb_base+gamma_a1_j*alpha+gamma_a2_j*beta+gamma_a3_j*uploader_influence_j)
R_aj= tf.diag_part(tf.matmul(R_aj_temp,tf.transpose(j_emb_base)))
x= item_b_i-item_b_j+tf.add(R_ai,-R_aj)
#auc=tf.Variable(0)
auc =[user_emb_p_1,user_emb_q_1,item_emb_w_1,item_emb_x_1,item_b_1,e_aj_w,e_aj_b,e_aj_vision_w,e_ab_w,e_ab_b,e_ab_vision_w,h_f_w,h_f_b,h_f_vision_w]#tf.reduce_mean(tf.to_float(x > 0))
my_get=[alpha,beta,uploader_influence_i,uploader_influence_j,\
R_ai,R_aj,item_b_i,item_b_j,R_ai_temp,i_emb_base,R_aj_temp,j_emb_base,u_emb_base,\
gamma_a1_i,gamma_a2_i,gamma_a3_i,gamma_a1_j,gamma_a2_j,gamma_a3_j]#,\
#u,i,j,alpha_all,molecular_e_aj,denominator_e_aj,split_index_up]#[alpha,x_up,e_aj_temp,e_aj,molecular_e_aj,denominator_e_aj]#[x,tf.sigmoid(x),tf.log(1+tf.sigmoid(x)),alpha,u_emb_base]
loss=-tf.reduce_mean(tf.log(tf.sigmoid(0.1*x)))
learning_rate_get =tf.cond((tf.count_nonzero(train_))>=2, lambda:learning_rate,lambda:0.0)
train_op=tf.train.AdamOptimizer(learning_rate_get).minimize(loss)
session.run(tf.global_variables_initializer())
saver = tf.train.Saver([user_emb_p,item_emb_w,item_b])#,e_aj_w,e_aj_b])
saver.restore(session, '../bpr_model/mymodel199.ckpt')
for epoch in range(1, 130):
Path_vbpr_train='./results_my_elu_exp_0.0001r/mymodel_train_result_all.txt'
wfile_vbpr_train=open(Path_vbpr_train,'a')
if epoch==1:
wfile_vbpr_train.write('\n+mymodel +199bpr model+ 0.1*x')
print "epoch:", epoch
_loss_train = 0.0
temp_count=0
time_start=time.time()
laster_loss=0.0
time_start=time.time()
count =0
#train_batch=train_batch_generator_all(result_all_train,result_all_train_u,result_train_count, batch_size)
time_start1=time.time()
train_batch=one_train_generator(user_ratings,user_ratings_original,user_id_mapping,item_id_mapping,batch_size)
sample_count =len(train_batch)
time_start2=time.time()
print time_start2-time_start1
flag=1
#train_batch_generator(result_all_train,result_train_count, sample_count, batch_size)
for d,gather_upload_,gather_social_,vision_repre_a_,vision_repre_b_,up_,up_user,up_split,up_feature,fellow_,fellow_user,fellow_split in train_batch:
#pdb.set_trace()
# print len(gather_upload_),len(gather_social_)
#time_start3=time.time()
#break
vision_repre_b_end=[]
for i_f in vision_repre_b_:
for j_f in i_f:
vision_repre_b_end.append(j_f)
up_feature_end=[]
for i_f in up_feature:
for j_f in i_f:
up_feature_end.append(j_f)
up_end=[]
for i_up in up_:
for j_up in i_up:
up_end.append(j_up)
up_user_end=[]
for i_up_u in up_user:
for j_up_u in i_up_u:
up_user_end.append(j_up_u)
fellow_user_end=[]
for i_fellow_u in fellow_user:
for j_fellow_u in i_fellow_u:
fellow_user_end.append(j_fellow_u)
fellow_end=[]
for i_fellow in fellow_:
for j_fellow in i_fellow:
fellow_end.append(j_fellow)
if flag==1:
time_start4=time.time()
_loss, _ ,auc_,get_= session.run([loss, train_op,auc,my_get], feed_dict={
u:d[:,0],gather_upload:gather_upload_,gather_social:gather_social_, vision_repre_u_a:vision_repre_a_, vision_repre_u_b:vision_repre_b_end,\
i:d[:,1],i_uploader:d[:,2],j:d[:,3], j_uploader:d[:,4],\
u_ups:up_end,u_ups_user:up_user_end,u_ups_split:up_split,u_ups_feature:up_feature_end,u_fellows:fellow_end,\
u_fellows_user:fellow_user_end,u_fellows_split:fellow_split,train_:[1,2,3]
})
count=count+1
_loss_train += _loss
laster_loss=_loss
temp_count=temp_count+1
if flag==1:
time_start5=time.time()
print 'time:',time_start5-time_start4,#,time_start4-time_start3
#print _loss,
#pdb.set_trace()
#exit()
if flag==1:
print _loss
flag=0
if math.isnan(_loss):
print count-1
pdb.set_trace()
exit()
#break
train_loss=round(_loss_train/sample_count,4)
time_end=time.time()
cost_time=round(time_end-time_start,4)
print cost_time,train_loss
#if epoch>1:
# load_test('./my_model/mymodel'+str(epoch-1)+'.ckpt',train_batch,sample_count,user_count, item_count,batch_size)
wfile_vbpr_train.write('\nepoch:'+str(epoch)+',\tCompute Loss Cost:'+str(cost_time)+'s, ')
wfile_vbpr_train.write('Train_loss:'+str(train_loss)+', ')
count=0
NDCG_test=[0]*51
hint_test=[0]*51
NDCG_val=[0]*51
hint_val=[0]*51
_loss_val = 0.0
_loss_test = 0.0
sum_coun=user_count
all_result_val=one_test_val_generator(val_ratings,user_ratings_original,user_id_mapping,item_id_mapping,batch_size)
sample_count =len(all_result_val)
#pdb.set_trace()
for d,gather_upload_,gather_social_,vision_repre_a_,vision_repre_b_,up_,up_user,up_split,up_feature,fellow_,fellow_user,fellow_split in all_result_val:# train_batch_generator_all(result_all_val,result_all_val_u,result_val_count, batch_size):
# train_batch_generator(result_all_val,result_val_count, sample_count, batch_size):
#break
vision_repre_b_end=[]
for i_f in vision_repre_b_:
for j_f in i_f:
vision_repre_b_end.append(j_f)
up_feature_end=[]
for i_f in up_feature:
for j_f in i_f:
up_feature_end.append(j_f)
up_end=[]
for i_up in up_:
for j_up in i_up:
up_end.append(j_up)
up_user_end=[]
for i_up_u in up_user:
for j_up_u in i_up_u:
up_user_end.append(j_up_u)
fellow_user_end=[]
for i_fellow_u in fellow_user:
for j_fellow_u in i_fellow_u:
fellow_user_end.append(j_fellow_u)
fellow_end=[]
for i_fellow in fellow_:
for j_fellow in i_fellow:
fellow_end.append(j_fellow)
#time_start4=time.time()
_loss,val_auc= session.run([loss,auc], feed_dict={
u:d[:,0],gather_upload:gather_upload_,gather_social:gather_social_, vision_repre_u_a:vision_repre_a_, vision_repre_u_b:vision_repre_b_end,\
i:d[:,1],i_uploader:d[:,2],j:d[:,3], j_uploader:d[:,4],\
u_ups:up_end,u_ups_user:up_user_end,u_ups_split:up_split,u_ups_feature:up_feature_end,u_fellows:fellow_end,\
u_fellows_user:fellow_user_end,u_fellows_split:fellow_split,train_:[0,0,0]
})
_loss_val += _loss
#print _loss
#break
saver = tf.train.Saver()
print 'saver'
saver.save(session, './results_my_elu_exp_0.0001r/my_model_elu_exp/mymodel'+str(epoch)+'.ckpt')
print 'saver end'
#if epoch%5!=1:
#continue
all_result_test=one_test_val_generator(test_ratings,user_ratings_original,user_id_mapping,item_id_mapping,batch_size)
sample_count =len(all_result_test)
for d,gather_upload_,gather_social_,vision_repre_a_,vision_repre_b_,up_,up_user,up_split,up_feature,fellow_,fellow_user,fellow_split in all_result_test:#train_batch_generator_all(result_all_test,result_all_test_u,result_test_count, batch_size):
#train_batch_generator(result_all_test,result_test_count, sample_count, batch_size):
vision_repre_b_end=[]
for i_f in vision_repre_b_:
for j_f in i_f:
vision_repre_b_end.append(j_f)
up_feature_end=[]
for i_f in up_feature:
for j_f in i_f:
up_feature_end.append(j_f)
up_end=[]
for i_up in up_:
for j_up in i_up:
up_end.append(j_up)
up_user_end=[]
for i_up_u in up_user:
for j_up_u in i_up_u:
up_user_end.append(j_up_u)
fellow_user_end=[]
for i_fellow_u in fellow_user:
for j_fellow_u in i_fellow_u:
fellow_user_end.append(j_fellow_u)
fellow_end=[]
for i_fellow in fellow_:
for j_fellow in i_fellow:
fellow_end.append(j_fellow)
#time_start4=time.time()
test_loss,test_auc= session.run([loss,auc], feed_dict={
u:d[:,0],gather_upload:gather_upload_,gather_social:gather_social_, vision_repre_u_a:vision_repre_a_, vision_repre_u_b:vision_repre_b_end,\
i:d[:,1],i_uploader:d[:,2],j:d[:,3], j_uploader:d[:,4],\
u_ups:up_end,u_ups_user:up_user_end,u_ups_split:up_split,u_ups_feature:up_feature_end,u_fellows:fellow_end,\
u_fellows_user:fellow_user_end,u_fellows_split:fellow_split,train_:[0,0,0]
})
auc_get=test_auc
_loss_test += test_loss
#break
#break
val_loss=round(_loss_val/sample_count,4)
print 'val_loss',val_loss
wfile_vbpr_train.write('Val Loss:'+str(val_loss)+', ')
test_loss=round(_loss_test/sample_count,4)
print 'test_loss',test_loss
wfile_vbpr_train.write('Test Loss:'+str(test_loss)+'\n')
[user_emb_p_1,user_emb_q_1,item_emb_w_1,item_emb_x_1,item_b_1,e_aj_w_1,e_aj_b_1,e_aj_vision_w_1,e_ab_w_1,e_ab_b_1,e_ab_vision_w_1,h_f_w_1,h_f_b_1,h_f_vision_w_1]=auc_get
i_j_100_val=generate_negative_100(user_ratings_original, val_ratings,item_count)
for user_id in range (0,sum_coun):
user_sel=i_j_100_val[user_id][0]
i_id=i_j_100_val[user_id][1]
#print user_sel,i_id
molecular_e_aj=[0.0,0.0,0.0,0.0,0.0,0,0,0,0,0,0,0,0,0,0]
denominator_e_aj=0.0
user_sel_list=[]
user_sel_feature=[]
user_sel_feature1=[]
for i_usersel in range(0,len(user_ups[user_sel])):
user_sel_list.append(user_sel)
#user_sel_feature=np.concatenate((user_sel_feature,img_feature[i_usersel]),0)
user_sel_feature1.append(vision_repre[user_sel])
#temp=np.take(user_emb_p,user_sel_list,0)
#print temp
#pdb.set_trace()
vision_user_up=np.matmul(user_sel_feature1,e_aj_vision_w_1)
#vision_user_up=np.matmul(user_sel_feature1,e_aj_vision_w_1)
x_up2=np.concatenate([np.take(user_emb_p_1,user_sel_list,0),np.take(user_emb_q_1,user_sel_list,0),\
np.take(item_emb_x_1,user_ups[user_sel],0),np.take(item_emb_w_1,user_ups[user_sel],0),vision_user_up],1)
e_aj_temp2=(numpy.dot(x_up2,e_aj_w_1)+e_aj_b_1)
e_aj2=np.exp(np.sum(e_aj_temp2,1))+0.001
alpha= np.matmul((e_aj2).T,(np.take(item_emb_x_1,user_ups[user_sel],0)))/np.sum(e_aj2)
user_sel_list=[]
user_sel_feature_a=[]
user_sel_feature_b=[]
for i_usersel in range(0,len(user_fellows[user_sel])):
user_sel_list.append(user_sel)
user_sel_feature_a.append(vision_repre[user_sel])
user_sel_feature_b.append(vision_repre[i_usersel])
vision_user_social_a=np.matmul(user_sel_feature_a,e_ab_vision_w_1)
vision_user_social_b=np.matmul(user_sel_feature_b,e_ab_vision_w_1)
#u_vision_f_all
x_fellow2=np.concatenate([np.take(user_emb_p_1,user_sel_list,0),np.take(user_emb_p_1,user_fellows[user_sel],0),\
np.take(user_emb_q_1,user_sel_list,0),np.take(user_emb_q_1,user_fellows[user_sel],0),vision_user_social_a,vision_user_social_b],1)
e_ab_temp2=(numpy.dot(x_fellow2,e_ab_w_1)+e_ab_b_1)
e_ab2=np.exp(np.sum(e_ab_temp2,1))+0.001
beta= np.matmul((e_ab2).T,(np.take(user_emb_q_1,user_fellows[user_sel],0)))/np.sum(e_ab2)
u_emb_base=user_emb_p_1[user_sel]
u_emb_external=user_emb_q_1[user_sel]
vision_user_ql=np.matmul(vision_repre[user_sel],h_f_vision_w_1)
uploader_influence_i=user_emb_q_1[ups_user[i_id]]
e_a_1=np.exp(np.sum((numpy.dot(alpha,h_f_w_1)+h_f_b_1)))+0.01
e_a_2=np.exp(np.sum((numpy.dot(beta,h_f_w_1)+h_f_b_1)))+0.01 #tf.exp(np.sum(tf.nn.relu(tf.matmul(f2,h_f_w)+h_f_b)))
e_a_3=np.exp(np.sum((numpy.dot(uploader_influence_i,h_f_w_1)+h_f_b_1)))+0.01 #tf.exp(np.sum(tf.nn.relu(tf.matmul(f3,h_f_w)+h_f_b)))
denominator_e_ai=e_a_1+e_a_2+e_a_3
gamma_a1= e_a_1/denominator_e_ai
gamma_a2= e_a_2/denominator_e_ai
gamma_a3= e_a_3/denominator_e_ai
user_i_temp=(u_emb_base+gamma_a1*alpha+gamma_a2*beta+gamma_a3*uploader_influence_i)
#u_emb_base+0.5*alpha+0.5*beta#
user_i=item_b_1[i_id]+np.dot(user_i_temp,(item_emb_w_1[i_id]).T)
idx_=1
negative100=i_j_100_val[user_id][2]
#time2=time.time()
for sel_100 in range(0,100):
j_ng = negative100[sel_100]
uploader_influence_i=user_emb_q_1[ups_user[j_ng]]
e_a_1=np.exp(np.sum((numpy.dot(alpha,h_f_w_1)+h_f_b_1)))+0.01
e_a_2=np.exp(np.sum((numpy.dot(beta,h_f_w_1)+h_f_b_1)))+0.01 #tf.exp(np.sum(tf.nn.relu(tf.matmul(f2,h_f_w)+h_f_b)))
e_a_3=np.exp(np.sum((numpy.dot(uploader_influence_i,h_f_w_1)+h_f_b_1)))+0.01 #tf.exp(np.sum(tf.nn.relu(tf.matmul(f3,h_f_w)+h_f_b)))
denominator_e_ai=e_a_1+e_a_2+e_a_3
gamma_a1= e_a_1/denominator_e_ai
gamma_a2= e_a_2/denominator_e_ai
gamma_a3= e_a_3/denominator_e_ai
user_j_temp=(u_emb_base+gamma_a1*alpha+gamma_a2*beta+gamma_a3*uploader_influence_i)
#u_emb_base+0.5*alpha+0.5*beta#
user_j=item_b_1[j_ng]+np.dot(user_j_temp,(item_emb_w_1[j_ng]).T)
#user_j=item_b[j_ng]+user_item_[user_sel,j_ng]+numpy.dot(numpy.transpose(user_img_w[user_sel]),img_feature[j_ng])+img_feature_b[j_ng]#(,(numpy.dot(image_features[j_ng],img_emb_w)))
if user_j>user_i:
idx_=idx_+1
#time3=time.time()
if idx_<=50:
NDCG_val[idx_]=NDCG_val[idx_]+(math.log(2))/math.log(idx_+1)
hint_val[idx_]=hint_val[idx_]+1
i_j_100_val=generate_negative_100(user_ratings_original, test_ratings,item_count)
g1_all=[]
g2_all=[]
g3_all=[]
for user_id in range (0,sum_coun):
user_sel=i_j_100_val[user_id][0]
i_id=i_j_100_val[user_id][1]
#print user_sel,i_id
molecular_e_aj=[0.0,0.0,0.0,0.0,0.0,0,0,0,0,0,0,0,0,0,0]
denominator_e_aj=0.0
user_sel_list=[]
user_sel_feature=[]
user_sel_feature1=[]
for i_usersel in range(0,len(user_ups[user_sel])):
user_sel_list.append(user_sel)
#user_sel_feature=np.concatenate((user_sel_feature,img_feature[i_usersel]),0)
user_sel_feature1.append(vision_repre[user_sel])
#temp=np.take(user_emb_p,user_sel_list,0)
#print temp
#pdb.set_trace()
vision_user_up=np.matmul(user_sel_feature1,e_aj_vision_w_1)
#vision_user_up=np.matmul(user_sel_feature1,e_aj_vision_w_1)
x_up2=np.concatenate([np.take(user_emb_p_1,user_sel_list,0),np.take(user_emb_q_1,user_sel_list,0),\
np.take(item_emb_x_1,user_ups[user_sel],0),np.take(item_emb_w_1,user_ups[user_sel],0),vision_user_up],1)
e_aj_temp2=(numpy.dot(x_up2,e_aj_w_1)+e_aj_b_1)
e_aj2=np.exp(np.sum(e_aj_temp2,1))+0.001
alpha= np.matmul((e_aj2).T,(np.take(item_emb_x_1,user_ups[user_sel],0)))/np.sum(e_aj2)
user_sel_list=[]
user_sel_feature_a=[]
user_sel_feature_b=[]
for i_usersel in range(0,len(user_fellows[user_sel])):
user_sel_list.append(user_sel)
user_sel_feature_a.append(vision_repre[user_sel])
user_sel_feature_b.append(vision_repre[i_usersel])
vision_user_social_a=np.matmul(user_sel_feature_a,e_ab_vision_w_1)
vision_user_social_b=np.matmul(user_sel_feature_b,e_ab_vision_w_1)
#u_vision_f_all
x_fellow2=np.concatenate([np.take(user_emb_p_1,user_sel_list,0),np.take(user_emb_p_1,user_fellows[user_sel],0),\
np.take(user_emb_q_1,user_sel_list,0),np.take(user_emb_q_1,user_fellows[user_sel],0),vision_user_social_a,vision_user_social_b],1)
e_ab_temp2=(numpy.dot(x_fellow2,e_ab_w_1)+e_ab_b_1)
e_ab2=np.exp(np.sum(e_ab_temp2,1))+0.001
beta= np.matmul((e_ab2).T,(np.take(user_emb_q_1,user_fellows[user_sel],0)))/np.sum(e_ab2)
u_emb_base=user_emb_p_1[user_sel]
u_emb_external=user_emb_q_1[user_sel]
vision_user_ql=np.matmul(vision_repre[user_sel],h_f_vision_w_1)
uploader_influence_i=user_emb_q_1[ups_user[i_id]]
e_a_1=np.exp(np.sum((numpy.dot(alpha,h_f_w_1)+h_f_b_1)))+0.01
e_a_2=np.exp(np.sum((numpy.dot(beta,h_f_w_1)+h_f_b_1)))+0.01 #tf.exp(np.sum(tf.nn.relu(tf.matmul(f2,h_f_w)+h_f_b)))
e_a_3=np.exp(np.sum((numpy.dot(uploader_influence_i,h_f_w_1)+h_f_b_1)))+0.01 #tf.exp(np.sum(tf.nn.relu(tf.matmul(f3,h_f_w)+h_f_b)))
denominator_e_ai=e_a_1+e_a_2+e_a_3
gamma_a1= e_a_1/denominator_e_ai
gamma_a2= e_a_2/denominator_e_ai
gamma_a3= e_a_3/denominator_e_ai
g1_all.append(gamma_a1)
g2_all.append(gamma_a2)
g3_all.append(gamma_a3)
user_i_temp=(u_emb_base+gamma_a1*alpha+gamma_a2*beta+gamma_a3*uploader_influence_i)
#u_emb_base+0.5*alpha+0.5*beta#
user_i=item_b_1[i_id]+np.dot(user_i_temp,(item_emb_w_1[i_id]).T)
idx_=1
negative100=i_j_100_val[user_id][2]
#time2=time.time()
for sel_100 in range(0,100):
j_ng = negative100[sel_100]
uploader_influence_i=user_emb_q_1[ups_user[j_ng]]
e_a_1=np.exp(np.sum((numpy.dot(alpha,h_f_w_1)+h_f_b_1)))+0.01
e_a_2=np.exp(np.sum((numpy.dot(beta,h_f_w_1)+h_f_b_1)))+0.01 #tf.exp(np.sum(tf.nn.relu(tf.matmul(f2,h_f_w)+h_f_b)))
e_a_3=np.exp(np.sum((numpy.dot(uploader_influence_i,h_f_w_1)+h_f_b_1)))+0.01 #tf.exp(np.sum(tf.nn.relu(tf.matmul(f3,h_f_w)+h_f_b)))
denominator_e_ai=e_a_1+e_a_2+e_a_3
gamma_a1= e_a_1/denominator_e_ai
gamma_a2= e_a_2/denominator_e_ai
gamma_a3= e_a_3/denominator_e_ai
user_j_temp=(u_emb_base+gamma_a1*alpha+gamma_a2*beta+gamma_a3*uploader_influence_i)
#u_emb_base+0.5*alpha+0.5*beta#
user_j=item_b_1[j_ng]+np.dot(user_j_temp,(item_emb_w_1[j_ng]).T)
#user_j=item_b[j_ng]+user_item_[user_sel,j_ng]+numpy.dot(numpy.transpose(user_img_w[user_sel]),img_feature[j_ng])+img_feature_b[j_ng]#(,(numpy.dot(image_features[j_ng],img_emb_w)))
if user_j>user_i:
idx_=idx_+1
if idx_<=50:
NDCG_test[idx_]=NDCG_test[idx_]+(math.log(2))/math.log(idx_+1)
hint_test[idx_]=hint_test[idx_]+1
print 'g1:',np.average(g1_all),np.std(g1_all),
print 'g2:',np.average(g2_all),np.std(g2_all),
print 'g3:',np.average(g3_all),np.std(g3_all)
save_id=[1,2,3,4,5,6,7,8,9,10,15,20,25,30]
Path_vbpr_val_wule='./results_my_elu_exp_0.0001r/mymodel_val_top30.txt'
wfile_vbpr_val_wule=open(Path_vbpr_val_wule,'a')
Path_vbpr_val='./results_my_elu_exp_0.0001r/mymodel_val_top50.txt'
wfile_vbpr_val=open(Path_vbpr_val,'a')
wfile_vbpr_train.write('Validation,\tHIT: ')
wfile_vbpr_val.write('epoch:'+str(epoch)+' val Hit_ratio:\n')
wfile_vbpr_val_wule.write('epoch:'+str(epoch)+' val Hit_ratio:\n')
temp_hint=0
for d_i in range(1,51):
temp_hint=temp_hint+hint_val[d_i]
mean_temp_hint=round(temp_hint*1.0/sum_coun,4)
wfile_vbpr_val.write('top'+str(d_i)+':'+str(temp_hint)+' '+ str(mean_temp_hint)+'\n')
if d_i==5:
wfile_vbpr_train.write('top5:'+str(mean_temp_hint)+'\t')
if d_i==10:
wfile_vbpr_train.write('top10:'+str(mean_temp_hint)+'\t')
if d_i in save_id:
wfile_vbpr_val_wule.write('top'+str(d_i)+':'+str(mean_temp_hint)+' ')
wfile_vbpr_val_wule.write('\n')
wfile_vbpr_train.write('NDCG: ')
wfile_vbpr_val.write('epoch:'+str(epoch)+' val NDCG:\n')
wfile_vbpr_val_wule.write('epoch:'+str(epoch)+' val NDCG:\n')
temp_ndcg=0
for d_i in range(1,51):
temp_ndcg=temp_ndcg+NDCG_val[d_i]
mean_temp_ndcg=round(temp_ndcg/sum_coun,4)
wfile_vbpr_val.write('top'+str(d_i)+':'+str(temp_ndcg)+' '+ str(mean_temp_ndcg)+'\n')
if d_i==5:
wfile_vbpr_train.write('top5:'+str(mean_temp_ndcg)+'\t')
if d_i==10:
wfile_vbpr_train.write('top10:'+str(mean_temp_ndcg)+';\t')
if d_i in save_id:
wfile_vbpr_val_wule.write('top'+str(d_i)+':'+str(mean_temp_ndcg)+' ')
wfile_vbpr_val_wule.write('\n')
wfile_vbpr_train.write('\n')
wfile_vbpr_val.write('\n')
wfile_vbpr_val_wule.write('\n')
wfile_vbpr_val.close()
wfile_vbpr_val_wule.close()
Path_vbpr_test_wule='./results_my_elu_exp_0.0001r/mymodel_test_top30.txt'
wfile_vbpr_test_wule=open(Path_vbpr_test_wule,'a')
Path_vbpr_test='./results_my_elu_exp_0.0001r/mymodel_test_top50.txt'
wfile_vbpr_test=open(Path_vbpr_test,'a')
wfile_vbpr_train.write('TEST,\t\tHIT: ')
wfile_vbpr_test.write('epoch:'+str(epoch)+'test Hit_ratio:\n')
wfile_vbpr_test_wule.write('epoch:'+str(epoch)+'test Hit_ratio:\n')
temp_hint=0
for d_i in range(1,51):
temp_hint=temp_hint+hint_test[d_i]
mean_temp_hint=round(temp_hint*1.0/sum_coun,4)
wfile_vbpr_test.write('top'+str(d_i)+':'+str(temp_hint)+' '+ str(mean_temp_hint)+'\n')
if d_i==5:
wfile_vbpr_train.write('top5:'+str(mean_temp_hint)+'\t')
if d_i==10:
wfile_vbpr_train.write('top10:'+str(mean_temp_hint)+'\t')
if d_i in save_id:
wfile_vbpr_test_wule.write('top'+str(d_i)+':'+str(mean_temp_hint)+' ')
wfile_vbpr_test_wule.write('\n')
wfile_vbpr_train.write('NDCG: ')
wfile_vbpr_test.write('epoch:'+str(epoch)+' test NDCG:\n')
wfile_vbpr_test_wule.write('epoch:'+str(epoch)+' test NDCG:\n')
temp_ndcg=0
for d_i in range(1,51):
temp_ndcg=temp_ndcg+NDCG_test[d_i]
mean_temp_ndcg=round(temp_ndcg/sum_coun,4)
wfile_vbpr_test.write('top'+str(d_i)+':'+str(temp_ndcg)+' '+ str(mean_temp_ndcg)+'\n')
if d_i==5:
wfile_vbpr_train.write('top5:'+str(mean_temp_ndcg)+'\t')
if d_i==10:
wfile_vbpr_train.write('top10:'+str(mean_temp_ndcg)+'\n')
if d_i in save_id:
wfile_vbpr_test_wule.write('top'+str(d_i)+':'+str(mean_temp_ndcg)+' ')
wfile_vbpr_test_wule.write('\n')
wfile_vbpr_test.write('\n')
wfile_vbpr_test_wule.write('\n')
wfile_vbpr_test.close()
wfile_vbpr_test_wule.close()
wfile_vbpr_train.close()