4.7 Review

Lexicon-Based Sentiment Convolutional Neural Networks for Online Review Analysis

期刊

IEEE TRANSACTIONS ON AFFECTIVE COMPUTING
卷 13, 期 3, 页码 1337-1348

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TAFFC.2020.2997769

关键词

Sentiment analysis; Analytical models; Neural networks; Supervised learning; Feature extraction; Task analysis; Road transportation; Convolutional neural network; sentiment analysis; sentiment lexicon; attention mechanism

资金

  1. Interdisciplinary Research Scheme of the Dean's Research Fund 2018-19 [FLASS/DRF/IDS-3]
  2. Departmental Collaborative Research Fund 2019 of The Education University of Hong Kong [MIT/DCRF-R2/18-19]
  3. HKIBS Research Seed Fund 2019/20 [190-009]
  4. Lingnan University, Hong Kong [102367]

向作者/读者索取更多资源

With the availability and popularity of sentiment-rich resources, new opportunities and challenges have emerged in sentiment analysis. Previous studies have either ignored contextual information of sentences or not considered sentiment information embedded in sentiment words. To address these limitations, we propose a new model, called Sentiment Convolutional Neural Network (SentiCNN), which combines contextual and sentiment information to analyze the sentiments of sentences.
With the growing availability and popularity of sentiment-rich resources like blogs and online reviews, new opportunities and challenges have emerged regarding the identification, extraction, and organization of sentiments from user-generated documents or sentences. Recently, many studies have exploited lexicon-based methods or supervised learning algorithms to conduct sentiment analysis tasks separately; however, the former approaches ignore contextual information of sentences and the latter ones do not take sentiment information embedded in sentiment words into consideration. To tackle these limitations, we propose a new model named Sentiment Convolutional Neural Network (SentiCNN) to analyze the sentiments of sentences with both contextual and sentiment information of sentiment words, in which, contextual information is captured from word embeddings and sentiment information is identified using existing lexicons. We incorporate a Highway Network into our model to adaptively combine sentiment and contextual information from sentences by strengthening the connection between features of both sentences and their sentiment words. Furthermore, we propose three lexicon-based attention mechanisms (LBAMs) for our SentiCNN model to find the most important indicators of sentiments and make predictions more effectively. Experiments over two well-known datasets indicate that sentiment words, the Highway Network, and LBAMs contribute to sentiment analysis.

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