Aspect Sentiment Model for Micro Reviews

Reinald Kim Amplayo, Seung-won Hwang
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引用次数: 14

Abstract

This paper aims at an aspect sentiment model for aspect-based sentiment analysis (ABSA) focused on micro reviews. This task is important in order to understand short reviews majority of the users write, while existing topic models are targeted for expert-level long reviews with sufficient co-occurrence patterns to observe. Current methods on aggregating micro reviews using metadata information may not be effective as well due to metadata absence, topical heterogeneity, and cold start problems. To this end, we propose a model called Micro Aspect Sentiment Model (MicroASM). MicroASM is based on the observation that short reviews 1) are viewed with sentiment-aspect word pairs as building blocks of information, and 2) can be clustered into larger reviews. When compared to the current state-of-the-art aspect sentiment models, experiments show that our model provides better performance on aspect-level tasks such as aspect term extraction and document-level tasks such as sentiment classification.
面向微评论的面向情感模型
本文旨在建立面向微评论的面向情感分析(ABSA)的面向情感模型。为了理解大多数用户写的简短评论,这个任务很重要,而现有的主题模型的目标是专家级的长评论,有足够的共生模式可以观察。由于元数据缺失、主题异质性和冷启动等问题,目前使用元数据信息聚合微评论的方法可能效果不佳。为此,我们提出了一个微面向情感模型(MicroASM)。MicroASM基于以下观察:1)将短评论与情感方面的词对一起视为信息的构建块,2)可以聚类成更大的评论。与当前最先进的方面情感模型相比,实验表明我们的模型在方面级任务(如方面术语提取)和文档级任务(如情感分类)上提供了更好的性能。
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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