Polarity shift in opinion mining

Mukta Y. Raut, M. Kulkarni
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引用次数: 3

Abstract

In recent times, the availability of online reviews is ever increasing. This results in opinion mining being one of the core areas of affective computing. Classification of opinions or sentiments is the core task in opinion mining. To accomplish this task, often Bag-Of-Words(BOW) is used as a feature for training a classifier in statistical machine learning. However, the fundamental limitations in handling the polarity shift problem in turn limits the performance of BOW in some cases. Also the external dictionaries used for generating training sets for opinion classification are not domain specific. This further limits the task of deriving the accurate sentiment or consumer opinion in certain cases. We address these two problems in opinion classification. To handle the problem of polarity shift, we propose a Dual Opinion mining Model. The data expansion technique used in this model creates a review which has opposite opinion as that of the original test review for each training and test review. Based on this we propose a dual training algorithm which uses the pairs of the original and the reversed review to learn an opinion classifier. A dual prediction algorithm is used for classification of test reviews by considering both positive and negative sides of each review. At the end we build a pseudo-opposites dictionary using a corpus based method. By this we tackle the problem of having to depend upon an external opposites dictionary for opposites of reviews. By doing this we also get a domain adaptive dictionary for training a classifier which increases the accuracy of the dual opinion mining model.
意见挖掘的极性转移
近年来,在线评论的可用性不断增加。这使得意见挖掘成为情感计算的核心领域之一。意见或情感的分类是意见挖掘的核心任务。为了完成这项任务,通常使用词袋(BOW)作为统计机器学习中训练分类器的特征。然而,处理极性转移问题的基本限制反过来又限制了BOW在某些情况下的性能。此外,用于生成意见分类训练集的外部字典也不是特定于领域的。这进一步限制了在某些情况下获得准确的情绪或消费者意见的任务。我们在意见分类中解决了这两个问题。为了处理极性转移问题,我们提出了一种双意见挖掘模型。该模型中使用的数据扩展技术为每个训练和测试评审创建了一个与原始测试评审意见相反的评审。在此基础上,我们提出了一种使用原始评论和反向评论对学习意见分类器的对偶训练算法。采用双重预测算法对测试评价进行分类,同时考虑每个评价的正负两方面。最后,我们使用基于语料库的方法构建了一个伪对立词典。通过这种方式,我们解决了必须依赖外部对立词典来进行对立评论的问题。通过这样做,我们还得到了一个用于训练分类器的领域自适应字典,从而提高了双意见挖掘模型的准确性。
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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