CLJan 24, 2014

A Statistical Parsing Framework for Sentiment Classification

arXiv:1401.6330v270 citations
AI Analysis

This work addresses sentiment classification for natural language processing applications, offering a novel method that simplifies training by using only sentence-level polarity labels, but it is incremental as it builds upon existing parsing frameworks.

The authors tackled sentence-level sentiment classification by developing a statistical parser that directly analyzes sentiment structure, handling complex phenomena like negation in a unified probabilistic way, and achieved significant improvements over baseline approaches in experiments on benchmark datasets.

We present a statistical parsing framework for sentence-level sentiment classification in this article. Unlike previous works that employ syntactic parsing results for sentiment analysis, we develop a statistical parser to directly analyze the sentiment structure of a sentence. We show that complicated phenomena in sentiment analysis (e.g., negation, intensification, and contrast) can be handled the same as simple and straightforward sentiment expressions in a unified and probabilistic way. We formulate the sentiment grammar upon Context-Free Grammars (CFGs), and provide a formal description of the sentiment parsing framework. We develop the parsing model to obtain possible sentiment parse trees for a sentence, from which the polarity model is proposed to derive the sentiment strength and polarity, and the ranking model is dedicated to selecting the best sentiment tree. We train the parser directly from examples of sentences annotated only with sentiment polarity labels but without any syntactic annotations or polarity annotations of constituents within sentences. Therefore we can obtain training data easily. In particular, we train a sentiment parser, s.parser, from a large amount of review sentences with users' ratings as rough sentiment polarity labels. Extensive experiments on existing benchmark datasets show significant improvements over baseline sentiment classification approaches.

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