We mainly investigate word influence in neural sentiment classification, which results in a novel approach to promoting word sentiment and negation as attentions. Particularly, a sentiment and negation neural network (SNNN) is proposed, including a sentiment neural network (SNN) and a negation neural network (NNN). First, we modify the word level by embedding the word sentiment and negation information as the extra layers for the input. Second, we adopt a hierarchical LSTM model to generate the word-level, sentence-level and document-level representations respectively. After that, we enhance word sentiment and negation as attentions over the semantic level. Finally, the experiments conducting on the IMDB and Yelp data sets show that our app...
Opinions have important effects on the process of decision making. With the explosion of text inform...
Sentiment classification aims to classify the sentimental polarities of given texts. Lexicon-based a...
Sentiment lexicons are widely used in computational linguistics, as they represent a resource that d...
Negation handling is an important sub-task in Sentiment Analysis. Negation plays a significant role ...
In this paper, we present a state-of-the-art deep-learning approach for sentiment polarity classific...
In several machine learning problems, a relatively small subproblem is present in which combinations...
Text sentiment analysis is an important but challenging task. Remarkable success has been achieved a...
As millions of messages are posted and thousands of articles are published every day, a lot of infor...
Targeted sentiment analysis classifies the sentiment polarity towards each target entity mention in ...
Neural attention mechanism has achieved many successes in various tasks in natural language processi...
Deep neural networks have gained great success recently for sentiment classification. However, these...
Neural network-based methods, especially deep learning, have been a burgeoning area in AI research a...
Open domain targeted sentiment is the joint information extraction task that finds target mentions t...
Sentiment classification is an important task in Natural Language Processing (NLP) area. Deep neural...
This paper describes the NeuroSent system that participated in SemEval 2018 Task 3. Our system takes...
Opinions have important effects on the process of decision making. With the explosion of text inform...
Sentiment classification aims to classify the sentimental polarities of given texts. Lexicon-based a...
Sentiment lexicons are widely used in computational linguistics, as they represent a resource that d...
Negation handling is an important sub-task in Sentiment Analysis. Negation plays a significant role ...
In this paper, we present a state-of-the-art deep-learning approach for sentiment polarity classific...
In several machine learning problems, a relatively small subproblem is present in which combinations...
Text sentiment analysis is an important but challenging task. Remarkable success has been achieved a...
As millions of messages are posted and thousands of articles are published every day, a lot of infor...
Targeted sentiment analysis classifies the sentiment polarity towards each target entity mention in ...
Neural attention mechanism has achieved many successes in various tasks in natural language processi...
Deep neural networks have gained great success recently for sentiment classification. However, these...
Neural network-based methods, especially deep learning, have been a burgeoning area in AI research a...
Open domain targeted sentiment is the joint information extraction task that finds target mentions t...
Sentiment classification is an important task in Natural Language Processing (NLP) area. Deep neural...
This paper describes the NeuroSent system that participated in SemEval 2018 Task 3. Our system takes...
Opinions have important effects on the process of decision making. With the explosion of text inform...
Sentiment classification aims to classify the sentimental polarities of given texts. Lexicon-based a...
Sentiment lexicons are widely used in computational linguistics, as they represent a resource that d...