4.7 Article Proceedings Paper

Sentiment Embeddings with Applications to Sentiment Analysis

期刊

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2015.2489653

关键词

Natural language processing; word embeddings; sentiment analysis; neural networks

资金

  1. National High Technology Development 863 Program of China [2015AA015407]
  2. National Natural Science Foundation of China [61133012, 61273321]
  3. Baidu Fellowship
  4. IBM Ph.D. Fellowship

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We propose learning sentiment-specific word embeddings dubbed sentiment embeddings in this paper. Existing word embedding learning algorithms typically only use the contexts of words but ignore the sentiment of texts. It is problematic for sentiment analysis because the words with similar contexts but opposite sentiment polarity, such as good and bad, are mapped to neighboring word vectors. We address this issue by encoding sentiment information of texts (e.g., sentences and words) together with contexts of words in sentiment embeddings. By combining context and sentiment level evidences, the nearest neighbors in sentiment embedding space are semantically similar and it favors words with the same sentiment polarity. In order to learn sentiment embeddings effectively, we develop a number of neural networks with tailoring loss functions, and collect massive texts automatically with sentiment signals like emoticons as the training data. Sentiment embeddings can be naturally used as word features for a variety of sentiment analysis tasks without feature engineering. We apply sentiment embeddings to word-level sentiment analysis, sentence level sentiment classification, and building sentiment lexicons. Experimental results show that sentiment embeddings consistently outperform context-based embeddings on several benchmark datasets of these tasks. This work provides insights on the design of neural networks for learning task-specific word embeddings in other natural language processing tasks.

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