...
首页> 外文期刊>Information Processing & Management >Word of mouth quality classification based on contextual sentiment lexicons
【24h】

Word of mouth quality classification based on contextual sentiment lexicons

机译:基于上下文情感词典的口碑质量分类

获取原文
获取原文并翻译 | 示例

摘要

Word of mouth (WOM), also known as the passing of information from person to person or opinionated text, has become the main information resource for consumers when making purchase decisions. Whether WOM is a valuable reference source for consumers making a purchase is determined by the quality of the WOM. WOM quality classification is useful in filtering significant WOM documents from insignificant ones, and helps consumers to make their purchase decisions more efficiently. When a consumer has a negative experience, a lower rating score and negative text are generally provided and vice versa. Regardless of the sentimental polarity, high-quality WOM (i.e. with a very high or very low rating score) has a stronger influence on consumer behavior than low-quality WOM (i.e. with a medium rating score). We build three contextual lexicons to maintain the relationship between words and their associated sentimental categories. We then apply the technique of preference vector modeling and evaluate our proposed approach by four classifiers. According to the experiments for the internet movie database (IMDb) polarity data set and hotels.com data set, the proposed contextual lexicon-concept-quality (CLCQ) and contextual lexicon-quality (CLQ) models outperform the benchmarks, i.e. the static first-sense SentiWordNet and average-sense SentiWordNet models. These results demonstrate that the proposed models can be used as a viable approach for WOM quality classification. The novel aspects of this paper are three-fold. Firstly, we focus on WOM quality classification instead of traditional sentimental polarity classification. Secondly, we build sentiment lexicons from the contextual information, which are adaptable to domains. Thirdly, we integrate these contextual sentiment lexicons with preference vector modeling for WOM quality classification and achieve an outstanding improvement.
机译:口耳相传(WOM),也称为人与人之间或有目的的文本之间的信息传递,已成为消费者做出购买决定时的主要信息资源。 WOM是否是进行购买的消费者的宝贵参考资源,取决于WOM的质量。 WOM质量分类有助于从不重要的文档中过滤掉重要的WOM文档,并有助于消费者更有效地做出购买决策。当消费者有负面体验时,通常会提供较低的评分分数和负面文字,反之亦然。不论情感极性如何,高质量的WOM(即评分得分非常高或非常低)对消费者行为的影响要比低质量的WOM(评分得分中等)具有更大的影响。我们建立了三个上下文词典来维护单词及其相关的情感类别之间的关系。然后,我们应用偏好矢量建模技术,并通过四个分类器评估我们提出的方法。根据针对互联网电影数据库(IMDb)极性数据集和hotels.com数据集的实验,提出的上下文词汇概念质量(CLCQ)和上下文词汇质量(CLQ)模型的性能优于基准,即静态优先感知SentiWordNet和平均感知SentiWordNet模型。这些结果表明,提出的模型可以用作WOM质量分类的可行方法。本文的新颖之处在于三方面。首先,我们专注于WOM质量分类,而不是传统的情感极性分类。其次,我们从上下文信息中构建了适用于领域的情感词典。第三,我们将这些上下文情感词典与用于WOM质量分类的首选项矢量建模集成在一起,并实现了显着的改进。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号