Data-Driven Contextual Valence Shifter Quantification for Multi-Theme Sentiment Analysis.

Hongkun Yu, Jingbo Shang, Meichun Hsu, Malú Castellanos, Jiawei Han
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引用次数: 13

Abstract

Users often write reviews on different themes involving linguistic structures with complex sentiments. The sentiment polarity of a word can be different across themes. Moreover, contextual valence shifters may change sentiment polarity depending on the contexts that they appear in. Both challenges cannot be modeled effectively and explicitly in traditional sentiment analysis. Studying both phenomena requires multi-theme sentiment analysis at the word level, which is very interesting but significantly more challenging than overall polarity classification. To simultaneously resolve the multi-theme and sentiment shifting problems, we propose a data-driven framework to enable both capabilities: (1) polarity predictions of the same word in reviews of different themes, and (2) discovery and quantification of contextual valence shifters. The framework formulates multi-theme sentiment by factorizing the review sentiments with theme/word embeddings and then derives the shifter effect learning problem as a logistic regression. The improvement of sentiment polarity classification accuracy demonstrates not only the importance of multi-theme and sentiment shifting, but also effectiveness of our framework. Human evaluations and case studies further show the success of multi-theme word sentiment predictions and automatic effect quantification of contextual valence shifters.

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基于数据驱动的语境价移量化多主题情感分析。
用户经常写不同主题的评论,涉及语言结构和复杂的情感。一个词的情感极性可能在不同的主题中有所不同。此外,情境效价转移者可能会根据其出现的情境改变情绪极性。在传统的情感分析中,这两个挑战都无法有效和明确地建模。研究这两种现象都需要在单词层面上进行多主题情感分析,这非常有趣,但比整体极性分类更具挑战性。为了同时解决多主题和情感转移问题,我们提出了一个数据驱动的框架来实现这两种功能:(1)在不同主题的评论中对同一词的极性预测,以及(2)发现和量化语境价转移。该框架通过将评论情感与主题/词嵌入进行因子化来形成多主题情感,然后通过逻辑回归推导出移位效应学习问题。情感极性分类准确率的提高不仅证明了多主题和情感转换的重要性,也证明了该框架的有效性。人类评估和案例研究进一步表明,多主题词情感预测和语境价移的自动效果量化是成功的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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