An Approach Based on Tree Kernels for Opinion Mining of Online Product Reviews

Peng Jiang, Chunxia Zhang, Hongping Fu, Zhendong Niu, Qing Yang
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引用次数: 39

Abstract

Opinion mining is a challenging task to identify the opinions or sentiments underlying user generated contents, such as online product reviews, blogs, discussion forums, etc. Previous studies that adopt machine learning algorithms mainly focus on designing effective features for this complex task. This paper presents our approach based on tree kernels for opinion mining of online product reviews. Tree kernels alleviate the complexity of feature selection and generate effective features to satisfy the special requirements in opinion mining. In this paper, we define several tree kernels for sentiment expression extraction and sentiment classification, which are subtasks of opinion mining. Our proposed tree kernels encode not only syntactic structure information, but also sentiment related information, such as sentiment boundary and sentiment polarity, which are important features to opinion mining. Experimental results on a benchmark data set indicate that tree kernels can significantly improve the performance of both sentiment expression extraction and sentiment classification. Besides, a linear combination of our proposed tree kernels and traditional feature vector kernel achieves the best performances using the benchmark data set.
基于树核的在线产品评论意见挖掘方法
观点挖掘是一项具有挑战性的任务,它识别用户生成内容(如在线产品评论、博客、论坛等)背后的观点或情绪。以往采用机器学习算法的研究主要集中在为这一复杂任务设计有效的特征。本文提出了一种基于树核的在线产品评论意见挖掘方法。树核降低了特征选择的复杂性,生成了有效的特征以满足意见挖掘的特殊要求。在本文中,我们定义了几个树核用于情感表达提取和情感分类,这是观点挖掘的子任务。我们提出的树核不仅编码句法结构信息,还编码情感相关信息,如情感边界和情感极性,这些都是观点挖掘的重要特征。在一个基准数据集上的实验结果表明,树核可以显著提高情感表达提取和情感分类的性能。此外,我们提出的树核与传统特征向量核的线性组合在基准数据集上获得了最佳性能。
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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