半监督情感分析的文档-词协同正则化

Vikas Sindhwani, Prem Melville
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引用次数: 220

摘要

情绪预测的目标是自动识别给定的文本对感兴趣的话题表达的是积极的还是消极的观点。人们可以将情感预测作为一个标准的文本分类问题,但是收集标记数据是一个瓶颈。幸运的是,背景知识通常以词汇中单词情感极性的先验信息的形式提供。此外,在许多应用中,大量的未标记数据也是可用的。在本文中,我们提出了一种新的半监督情感预测算法,该算法利用词汇先验知识与未标记示例相结合。我们的方法是基于基于数据的二部图表示的文档和单词的联合情感分析。我们对各种情绪预测问题进行了实证研究,证实了我们的半监督词汇模型明显优于纯监督和竞争的半监督技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Document-Word Co-regularization for Semi-supervised Sentiment Analysis
The goal of sentiment prediction is to automatically identify whether a given piece of text expresses positive or negative opinion towards a topic of interest. One can pose sentiment prediction as a standard text categorization problem, but gathering labeled data turns out to be a bottleneck. Fortunately, background knowledge is often available in the form of prior information about the sentiment polarity of words in a lexicon. Moreover, in many applications abundant unlabeled data is also available. In this paper, we propose a novel semi-supervised sentiment prediction algorithm that utilizes lexical prior knowledge in conjunction with unlabeled examples. Our method is based on joint sentiment analysis of documents and words based on a bipartite graph representation of the data. We present an empirical study on a diverse collection of sentiment prediction problems which confirms that our semi-supervised lexical models significantly outperform purely supervised and competing semi-supervised techniques.
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