Sentiment Classification Using Negative and Intensive Sentiment Supplement Information

Traditional methods of annotating the sentiment of an unlabeled document are based on sentiment lexicons or machine learning algorithms, which have shown low computational cost or competitive performance. However, these methods ignore the semantic composition problem displaying in several ways such as negative reversing and intensification. In this paper, we propose a new method for sentiment classification using negative and intensive sentiment supplementary information, so as to exploit the linguistic feature of negative and intensive words in conjunction with the context information. Particularly, our method can solve the domain-specific problem without relying on the external sentiment lexicons. Experimental results on two real-world datasets demonstrate the effectiveness of our proposed method.

[1]  Christopher Potts,et al.  Recursive Deep Models for Semantic Compositionality Over a Sentiment Treebank , 2013, EMNLP.

[2]  Haoran Xie,et al.  Sentiment Classification via Supplementary Information Modeling , 2018, APWeb/WAIM.

[3]  Peter D. Turney Thumbs Up or Thumbs Down? Semantic Orientation Applied to Unsupervised Classification of Reviews , 2002, ACL.

[4]  Soo-Min Kim,et al.  Determining the Sentiment of Opinions , 2004, COLING.

[5]  Max J. Cresswell,et al.  Formal philosophy, selected papers of richard montague , 1976 .

[6]  Erik Cambria,et al.  Affective Computing and Sentiment Analysis , 2016, IEEE Intelligent Systems.

[7]  Bo Pang,et al.  Seeing Stars: Exploiting Class Relationships for Sentiment Categorization with Respect to Rating Scales , 2005, ACL.

[8]  Yue Zhang,et al.  Target-Dependent Twitter Sentiment Classification with Rich Automatic Features , 2015, IJCAI.

[9]  Vysoké Učení,et al.  Statistical Language Models Based on Neural Networks , 2012 .

[10]  Terence Parsons Formal Philosophy: Selected Papers of Richard Montague , 1975 .

[11]  Jeffrey Dean,et al.  Efficient Estimation of Word Representations in Vector Space , 2013, ICLR.

[12]  Saif M. Mohammad,et al.  The Effect of Negators, Modals, and Degree Adverbs on Sentiment Composition , 2016, WASSA@NAACL-HLT.

[13]  Juho Kim,et al.  Kapre: On-GPU Audio Preprocessing Layers for a Quick Implementation of Deep Neural Network Models with Keras , 2017, ArXiv.

[14]  Phil Blunsom,et al.  A Convolutional Neural Network for Modelling Sentences , 2014, ACL.

[15]  Yoshua Bengio,et al.  Empirical Evaluation of Gated Recurrent Neural Networks on Sequence Modeling , 2014, ArXiv.

[16]  Yue Zhang,et al.  Context-Sensitive Lexicon Features for Neural Sentiment Analysis , 2016, EMNLP.

[17]  Janyce Wiebe,et al.  Recognizing Contextual Polarity in Phrase-Level Sentiment Analysis , 2005, HLT.

[18]  Maite Taboada,et al.  Lexicon-Based Methods for Sentiment Analysis , 2011, CL.

[19]  Bing Liu,et al.  Mining and summarizing customer reviews , 2004, KDD.

[20]  Regina Barzilay,et al.  Molding CNNs for text: non-linear, non-consecutive convolutions , 2015, EMNLP.

[21]  Hongyu Guo,et al.  Long Short-Term Memory Over Recursive Structures , 2015, ICML.

[22]  Eduard H. Hovy,et al.  When Are Tree Structures Necessary for Deep Learning of Representations? , 2015, EMNLP.

[23]  Marco Guerini,et al.  Sentiment Analysis: How to Derive Prior Polarities from SentiWordNet , 2013, EMNLP.

[24]  Andrea Esuli,et al.  SentiWordNet 3.0: An Enhanced Lexical Resource for Sentiment Analysis and Opinion Mining , 2010, LREC.

[25]  Owen Rambow,et al.  Sentiment Analysis of Twitter Data , 2011 .

[26]  Yuan Yu,et al.  TensorFlow: A system for large-scale machine learning , 2016, OSDI.

[27]  Matthew D. Zeiler ADADELTA: An Adaptive Learning Rate Method , 2012, ArXiv.

[28]  Jeffrey Pennington,et al.  Semi-Supervised Recursive Autoencoders for Predicting Sentiment Distributions , 2011, EMNLP.

[29]  Saif Mohammad,et al.  NRC-Canada: Building the State-of-the-Art in Sentiment Analysis of Tweets , 2013, *SEMEVAL.

[30]  Yoon Kim,et al.  Convolutional Neural Networks for Sentence Classification , 2014, EMNLP.

[31]  Jürgen Schmidhuber,et al.  Long Short-Term Memory , 1997, Neural Computation.

[32]  Yue Zhang,et al.  Context-Sensitive Twitter Sentiment Classification Using Neural Network , 2016, AAAI.

[33]  Christopher D. Manning,et al.  Improved Semantic Representations From Tree-Structured Long Short-Term Memory Networks , 2015, ACL.

[34]  Ming Zhou,et al.  Adaptive Recursive Neural Network for Target-dependent Twitter Sentiment Classification , 2014, ACL.