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A Unified Framework for Creating Domain Dependent Polarity Lexicons from User Generated Reviews

机译:从用户生成的评论创建依赖域的极性词表的统一框架

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摘要

The exponential increase in the explosion of Web-based user generated reviews has resulted in the emergence of Opinion Mining (OM) applications for analyzing the users’ opinions toward products, services, and policies. The polarity lexicons often play a pivotal role in the OM, indicating the positivity and negativity of a term along with the numeric score. However, the commonly available domain independent lexicons are not an optimal choice for all of the domains within the OM applications. The aforementioned is due to the fact that the polarity of a term changes from one domain to other and such lexicons do not contain the correct polarity of a term for every domain. In this work, we focus on the problem of adapting a domain dependent polarity lexicon from set of labeled user reviews and domain independent lexicon to propose a unified learning framework based on the information theory concepts that can assign the terms with correct polarity (+ive, -ive) scores. The benchmarking on three datasets (car, hotel, and drug reviews) shows that our approach improves the performance of the polarity classification by achieving higher accuracy. Moreover, using the derived domain dependent lexicon changed the polarity of terms, and the experimental results show that our approach is more effective than the base line methods.
机译:基于Web的用户生成的评论数量激增,导致出现了用于分析用户对产品,服务和政策的观点的Opinion Mining(OM)应用程序。极性词典通常在OM中起关键作用,指示一个术语的正负性以及数字分数。但是,对于OM应用程序中的所有域,通用的独立于域的词典都不是最佳选择。前述是由于以下事实:术语的极性从一个域变为另一域,并且这样的词典对于每个域都不包含术语的正确极性。在这项工作中,我们专注于从标记的用户评论集和领域独立词典中适应域相关的极性词典的问题,以基于信息理论概念提出一个统一的学习框架,该框架可以为术语分配正确的极性(+ ive, -ive)得分。对三个数据集(汽车,旅馆和药品评论)的基准测试表明,我们的方法通过实现更高的准确性来改善极性分类的性能。此外,使用派生的依赖域的词典更改了术语的极性,并且实验结果表明,我们的方法比基线方法更有效。

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