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NextitNet_TF_Pretrain.py
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NextitNet_TF_Pretrain.py
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import tensorflow as tf
import data_loader_recsys
import generator_recsys_cau
import utils
import shutil
import time
import math
import eval
import numpy as np
import argparse
import sys
def generatesubsequence(train_set,padtoken):
# create subsession only for training
subseqtrain = []
for i in range(len(train_set)):
# print x_train[i]
seq = train_set[i]
lenseq = len(seq)
# session lens=100 shortest subsession=5 realvalue+95 0
copyseq = list(seq)
padcount = copyseq.count(padtoken) # the number of padding elements
copyseq = copyseq[padcount:] # the remaining elements
lenseq_nopad = len(copyseq)
# session lens=100 shortest subsession=5 realvalue+95 0
if (lenseq_nopad - 4) < 1:
subseqtrain.append(seq)
continue
for j in range(lenseq_nopad - 4):
subseqend = seq[:len(seq) - j]
subseqbeg = [padtoken] * j
subseq = list(subseqbeg) + list(subseqend)
# subseq= np.append(subseqbeg,subseqbeg)
# beginseq=padzero+subseq
# newsubseq=pad+subseq
subseqtrain.append(subseq)
x_train = np.array(subseqtrain) # list to ndarray
del subseqtrain
# Randomly shuffle data
np.random.seed(10)
shuffle_train = np.random.permutation(np.arange(len(x_train)))
x_train = x_train[shuffle_train]
print "generating subsessions is done!"
return x_train
def main():
parser = argparse.ArgumentParser()
parser.add_argument('--top_k', type=int, default=5,
help='Sample from top k predictions')
parser.add_argument('--beta1', type=float, default=0.9,
help='hyperpara-Adam')
#history_sequences_20181014_fajie_smalltest.csv
parser.add_argument('--datapath', type=str, default='Data/Session/history_sequences_20181014_fajie_transfer_pretrain_small.csv',
help='data path')
parser.add_argument('--eval_iter', type=int, default=10,
help='Sample generator output evry x steps')
parser.add_argument('--save_para_every', type=int, default=10,
help='save model parameters every')
parser.add_argument('--tt_percentage', type=float, default=0.5,
help='0.2 means 80% training 20% testing')
parser.add_argument('--is_generatesubsession', type=bool, default=False,
help='whether generating a subsessions, e.g., 12345-->01234,00123,00012 It may be useful for very some very long sequences')
parser.add_argument('--padtoken', type=str, default='0',
help='is the padding token in the beggining of the sequence')
args = parser.parse_args()
dl = data_loader_recsys.Data_Loader({'model_type': 'generator', 'dir_name': args.datapath})
all_samples = dl.item
items = dl.item_dict
print "len(items)",len(items)
if items.has_key(args.padtoken):
padtoken = items[args.padtoken] # is the padding token in the beggining of the sentence
else:
# padtoken = sys.maxint
padtoken = len(items) + 1
# Randomly shuffle data
np.random.seed(10)
shuffle_indices = np.random.permutation(np.arange(len(all_samples)))
all_samples = all_samples[shuffle_indices]
# Split train/test set
dev_sample_index = -1 * int(args.tt_percentage * float(len(all_samples)))
train_set, valid_set = all_samples[:dev_sample_index], all_samples[dev_sample_index:]
if args.is_generatesubsession:
train_set = generatesubsequence(train_set,padtoken)
model_para = {
#if you changed the parameters here, also do not forget to change paramters in nextitrec_generate.py
'item_size': len(items),
'dilated_channels': 64,
# if you use nextitnet_residual_block, you can use [1, 4, ],
# if you use nextitnet_residual_block_one, you can tune and i suggest [1, 2, 4, ], for a trial
# when you change it do not forget to change it in nextitrec_generate.py
# if you find removing residual network, the performance does not obviously decrease, then I think your data does not have strong seqeunce. Change a dataset and try again.
'dilations': [1,4,1,4,1,4,1,4,],
'kernel_size': 3,
'learning_rate':0.001,
'batch_size':2, #change it if you use real dataset, suggest you use 64 128 258
'iterations':2,
'is_negsample':False #False denotes using full softmax
}
itemrec = generator_recsys_cau.NextItNet_Decoder(model_para)
itemrec.train_graph(model_para['is_negsample'])
optimizer = tf.train.AdamOptimizer(model_para['learning_rate'], beta1=args.beta1).minimize(itemrec.loss)
itemrec.predict_graph(model_para['is_negsample'],reuse=True)
tf.add_to_collection("dilate_input", itemrec.dilate_input)
tf.add_to_collection("context_embedding", itemrec.context_embedding)
# sess= tf.Session(config=tf.ConfigProto(log_device_placement=True))
sess = tf.Session()
init=tf.global_variables_initializer()
sess.run(init)
saver = tf.train.Saver()
numIters = 1
for iter in range(model_para['iterations']):
batch_no = 0
batch_size = model_para['batch_size']
while (batch_no + 1) * batch_size < train_set.shape[0]:
start = time.time()
item_batch = train_set[batch_no * batch_size: (batch_no + 1) * batch_size, :]
_, loss, results = sess.run(
[optimizer, itemrec.loss,
itemrec.arg_max_prediction],
feed_dict={
itemrec.itemseq_input: item_batch
})
end = time.time()
if numIters % args.eval_iter == 0:
print "-------------------------------------------------------train1"
print "LOSS: {}\tITER: {}\tBATCH_NO: {}\t STEP:{}\t total_batches:{}".format(
loss, iter, batch_no, numIters, train_set.shape[0] / batch_size)
print "TIME FOR BATCH", end - start
print "TIME FOR ITER (mins)", (end - start) * (train_set.shape[0] / batch_size) / 60.0
if numIters % args.eval_iter == 0:
print "-------------------------------------------------------test1"
if (batch_no + 1) * batch_size < valid_set.shape[0]:
# it is well written here when train_set is much larger than valid_set, 'if' may not hold. it will not have impact on the final results.
item_batch = valid_set[(batch_no) * batch_size: (batch_no + 1) * batch_size, :]
loss = sess.run(
[itemrec.loss_test],
feed_dict={
itemrec.input_predict: item_batch
})
print "LOSS: {}\tITER: {}\tBATCH_NO: {}\t STEP:{}\t total_batches:{}".format(
loss, iter, batch_no, numIters, valid_set.shape[0] / batch_size)
batch_no += 1
if numIters % args.eval_iter == 0:
batch_no_test = 0
batch_size_test = batch_size*1
curr_preds_5=[]
rec_preds_5=[] #1
ndcg_preds_5=[] #1
curr_preds_20 = []
rec_preds_20 = [] # 1
ndcg_preds_20 = [] # 1
while (batch_no_test + 1) * batch_size_test < valid_set.shape[0]:
if (numIters / (args.eval_iter) < 10):
if (batch_no_test > 20):
break
else:
if (batch_no_test > 500):
break
item_batch = valid_set[batch_no_test * batch_size_test: (batch_no_test + 1) * batch_size_test, :]
[probs] = sess.run(
[itemrec.g_probs],
feed_dict={
itemrec.input_predict: item_batch
})
for bi in range(probs.shape[0]):
pred_items_5 = utils.sample_top_k(probs[bi][-1], top_k=args.top_k)#top_k=5
pred_items_20 = utils.sample_top_k(probs[bi][-1], top_k=args.top_k+15)
true_item=item_batch[bi][-1]
predictmap_5={ch : i for i, ch in enumerate(pred_items_5)}
pred_items_20 = {ch: i for i, ch in enumerate(pred_items_20)}
rank_5=predictmap_5.get(true_item)
rank_20 = pred_items_20.get(true_item)
if rank_5 ==None:
curr_preds_5.append(0.0)
rec_preds_5.append(0.0)#2
ndcg_preds_5.append(0.0)#2
else:
MRR_5 = 1.0/(rank_5+1)
Rec_5=1.0#3
ndcg_5 = 1.0 / math.log(rank_5 + 2, 2) # 3
curr_preds_5.append(MRR_5)
rec_preds_5.append(Rec_5)#4
ndcg_preds_5.append(ndcg_5) # 4
if rank_20 ==None:
curr_preds_20.append(0.0)
rec_preds_20.append(0.0)#2
ndcg_preds_20.append(0.0)#2
else:
MRR_20 = 1.0/(rank_20+1)
Rec_20=1.0#3
ndcg_20 = 1.0 / math.log(rank_20 + 2, 2) # 3
curr_preds_20.append(MRR_20)
rec_preds_20.append(Rec_20)#4
ndcg_preds_20.append(ndcg_20) # 4
batch_no_test += 1
print "BATCH_NO: {}".format(batch_no_test)
print "Accuracy mrr_5:",sum(curr_preds_5) / float(len(curr_preds_5))#5
print "Accuracy mrr_20:", sum(curr_preds_20) / float(len(curr_preds_20)) # 5
print "Accuracy hit_5:", sum(rec_preds_5) / float(len(rec_preds_5))#5
print "Accuracy hit_20:", sum(rec_preds_20) / float(len(rec_preds_20)) # 5
print "Accuracy ndcg_5:", sum(ndcg_preds_5) / float(len(ndcg_preds_5)) # 5
print "Accuracy ndcg_20:", sum(ndcg_preds_20) / float(len(ndcg_preds_20)) #
numIters += 1
if numIters % args.save_para_every == 0:
save_path = saver.save(sess,
"Data/Models/generation_model/model_nextitnet_transfer_pretrain.ckpt".format(iter, numIters))
if __name__ == '__main__':
main()