# Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserved # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import sys import paddle.trainer_config_helpers.attrs as attrs from paddle.trainer_config_helpers.poolings import MaxPooling import paddle.v2 as paddle def convolution_net(input_dim, class_dim=2, emb_dim=128, hid_dim=128, is_predict=False): data = paddle.layer.data("word", paddle.data_type.integer_value_sequence(input_dim)) emb = paddle.layer.embedding(input=data, size=emb_dim) conv_3 = paddle.networks.sequence_conv_pool( input=emb, context_len=3, hidden_size=hid_dim) conv_4 = paddle.networks.sequence_conv_pool( input=emb, context_len=4, hidden_size=hid_dim) output = paddle.layer.fc(input=[conv_3, conv_4], size=class_dim, act=paddle.activation.Softmax()) lbl = paddle.layer.data("label", paddle.data_type.integer_value(2)) cost = paddle.layer.classification_cost(input=output, label=lbl) return cost def stacked_lstm_net(input_dim, class_dim=2, emb_dim=128, hid_dim=512, stacked_num=3, is_predict=False): """ A Wrapper for sentiment classification task. This network uses bi-directional recurrent network, consisting three LSTM layers. This configure is referred to the paper as following url, but use fewer layrs. http://www.aclweb.org/anthology/P15-1109 input_dim: here is word dictionary dimension. class_dim: number of categories. emb_dim: dimension of word embedding. hid_dim: dimension of hidden layer. stacked_num: number of stacked lstm-hidden layer. is_predict: is predicting or not. Some layers is not needed in network when predicting. """ assert stacked_num % 2 == 1 layer_attr = attrs.ExtraLayerAttribute(drop_rate=0.5) fc_para_attr = attrs.ParameterAttribute(learning_rate=1e-3) lstm_para_attr = attrs.ParameterAttribute(initial_std=0., learning_rate=1.) para_attr = [fc_para_attr, lstm_para_attr] bias_attr = attrs.ParameterAttribute(initial_std=0., l2_rate=0.) relu = paddle.activation.Relu() linear = paddle.activation.Linear() data = paddle.layer.data("word", paddle.data_type.integer_value_sequence(input_dim)) emb = paddle.layer.embedding(input=data, size=emb_dim) fc1 = paddle.layer.fc(input=emb, size=hid_dim, act=linear, bias_attr=bias_attr) lstm1 = paddle.layer.lstmemory( input=fc1, act=relu, bias_attr=bias_attr, layer_attr=layer_attr) inputs = [fc1, lstm1] for i in range(2, stacked_num + 1): fc = paddle.layer.fc(input=inputs, size=hid_dim, act=linear, param_attr=para_attr, bias_attr=bias_attr) lstm = paddle.layer.lstmemory( input=fc, reverse=(i % 2) == 0, act=relu, bias_attr=bias_attr, layer_attr=layer_attr) inputs = [fc, lstm] fc_last = paddle.layer.pooling(input=inputs[0], pooling_type=MaxPooling()) lstm_last = paddle.layer.pooling(input=inputs[1], pooling_type=MaxPooling()) output = paddle.layer.fc(input=[fc_last, lstm_last], size=class_dim, act=paddle.activation.Softmax(), bias_attr=bias_attr, param_attr=para_attr) lbl = paddle.layer.data("label", paddle.data_type.integer_value(2)) cost = paddle.layer.classification_cost(input=output, label=lbl) return cost if __name__ == '__main__': # init paddle.init(use_gpu=True, trainer_count=4) # network config print 'load dictionary...' word_dict = paddle.dataset.imdb.word_dict() dict_dim = len(word_dict) class_dim = 2 # Please choose the way to build the network # by uncommenting the corresponding line. cost = convolution_net(dict_dim, class_dim=class_dim) # cost = stacked_lstm_net(dict_dim, class_dim=class_dim, stacked_num=3) # create parameters parameters = paddle.parameters.create(cost) # create optimizer adam_optimizer = paddle.optimizer.Adam( learning_rate=2e-3, regularization=paddle.optimizer.L2Regularization(rate=8e-4), model_average=paddle.optimizer.ModelAverage(average_window=0.5)) # End batch and end pass event handler def event_handler(event): if isinstance(event, paddle.event.EndIteration): if event.batch_id % 100 == 0: print "\nPass %d, Batch %d, Cost %f, %s" % ( event.pass_id, event.batch_id, event.cost, event.metrics) else: sys.stdout.write('.') sys.stdout.flush() if isinstance(event, paddle.event.EndPass): result = trainer.test( reader=paddle.reader.batched( lambda: paddle.dataset.imdb.test(word_dict), batch_size=128), reader_dict={'word': 0, 'label': 1}) print "\nTest with Pass %d, %s" % (event.pass_id, result.metrics) # create trainer trainer = paddle.trainer.SGD(cost=cost, parameters=parameters, update_equation=adam_optimizer) trainer.train( reader=paddle.reader.batched( paddle.reader.shuffle( lambda: paddle.dataset.imdb.train(word_dict), buf_size=1000), batch_size=100), event_handler=event_handler, reader_dict={'word': 0, 'label': 1}, num_passes=10)