Generating Recommendations Based on Robust Term Extraction from Users' Reviews

R. M. D'Addio, M. Conrado, S. O. Rezende, M. Manzato
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引用次数: 13

Abstract

In this paper, we propose a technique to automatically describe items based on users' reviews in order to be used by recommender systems. For that, we extract items' features using a robust term extraction method that applies transductive semi-supervised learning to automatically identify aspects that represent the different subjects of the reviews. Then, we apply sentiment analysis in a sentence level to indicate the polarities, yielding a consensus of users regarding the features of items. Our approach is evaluated using a collaborative filtering method, and comparisons using structured metadata as baselines show promising results.
基于用户评论的鲁棒术语提取生成推荐
在本文中,我们提出了一种基于用户评论的自动描述项目的技术,以供推荐系统使用。为此,我们使用鲁棒的术语提取方法提取项目的特征,该方法应用转换半监督学习来自动识别代表评论不同主题的方面。然后,我们在句子层面上应用情感分析来指示极性,从而得出用户对项目特征的共识。我们的方法使用协同过滤方法进行评估,使用结构化元数据作为基线进行比较显示出有希望的结果。
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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