Due to outstanding feature extraction ability, neural networks have recently achieved great success in sentiment analysis. However, one of the remaining challenges of sentiment analysis is to model long texts to consider the intrinsic relations between two sentences in the semantic meaning of a document. Moreover, most existing methods are not powerful enough to differentiate the importance of different document features. To address these problems, this paper proposes a new neural network model: AttBiLSTM-2DCNN, which entails two perspectives. First, a two-layer, bidirectional long short-term memory (BiLSTM) network is utilized to obtain the sentiment semantics of a document. The first BiLSTM layer learns the sentiment semantic representati...
In recent years, deep learning network models have been widely used in the aspect of text emotion cl...
Sentiment Classification is a key area of natural language processing research that is frequently ut...
Abstract Concerning the problems that the traditional Convolutional Neural Network (CNN) ignores con...
Due to the increasing growth of social media content on websites such as Twitter and Facebook, analy...
The fabulous results of Deep Convolution Neural Networks in computer vision and image analysis have ...
Although the traditional recurrent neural network (RNN) model can cover the time information of the ...
Text sentiment classification is an essential research field of natural language processing. Recentl...
Part 3: Big Data Analysis and Machine LearningInternational audienceSentiment analysis has been a ho...
Text sentiment analysis is an important but challenging task. Remarkable success has been achieved a...
Aspect-based sentiment analysis has become one of the hot research directions of natural language pr...
Sentiment analysis has been a hot research topic in NLP and data mining fields in the last decade. T...
Sentiment classification is an important task in Natural Language Processing (NLP) area. Deep neural...
Document level sentiment classification remains a challenge: encoding the intrin-sic relations betwe...
Neural attention mechanism has achieved many successes in various tasks in natural language processi...
Sentiment analysis, also known as opinion mining is a key natural language processing (NLP) task tha...
In recent years, deep learning network models have been widely used in the aspect of text emotion cl...
Sentiment Classification is a key area of natural language processing research that is frequently ut...
Abstract Concerning the problems that the traditional Convolutional Neural Network (CNN) ignores con...
Due to the increasing growth of social media content on websites such as Twitter and Facebook, analy...
The fabulous results of Deep Convolution Neural Networks in computer vision and image analysis have ...
Although the traditional recurrent neural network (RNN) model can cover the time information of the ...
Text sentiment classification is an essential research field of natural language processing. Recentl...
Part 3: Big Data Analysis and Machine LearningInternational audienceSentiment analysis has been a ho...
Text sentiment analysis is an important but challenging task. Remarkable success has been achieved a...
Aspect-based sentiment analysis has become one of the hot research directions of natural language pr...
Sentiment analysis has been a hot research topic in NLP and data mining fields in the last decade. T...
Sentiment classification is an important task in Natural Language Processing (NLP) area. Deep neural...
Document level sentiment classification remains a challenge: encoding the intrin-sic relations betwe...
Neural attention mechanism has achieved many successes in various tasks in natural language processi...
Sentiment analysis, also known as opinion mining is a key natural language processing (NLP) task tha...
In recent years, deep learning network models have been widely used in the aspect of text emotion cl...
Sentiment Classification is a key area of natural language processing research that is frequently ut...
Abstract Concerning the problems that the traditional Convolutional Neural Network (CNN) ignores con...