Justifying Recommendations through Aspect-based Sentiment Analysis of Users Reviews

C. Musto, P. Lops, M. Degemmis, G. Semeraro
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引用次数: 35

Abstract

In this paper we present a methodology to justify the suggestions generated by a recommendation algorithm through the identification of relevant and distinguishing characteristics of the recommended item, automatically extracted by mining users' reviews. Our approach relies on a combination ofnatural language processing and sentiment analysis techniques, and is based on the following steps: (1) a set of users' reviews discussing the recommended item is gathered and analyzed; (2) the distinguishing aspects that characterize the item are extracted and a ranking function is used to identify the most relevant ones; (3) excerpts of the reviews discussing such aspects are extracted and a natural language template is filled in through the aggregation of these sentences. This represents the final output of the algorithm, which is provided to the user as justification of the recommendation she received. In the experimental evaluation, we carried out a user study (N=296, 73.6% male) aiming to investigate the effectiveness of our methodology in two different domains, as movies and books. Results showed that our technique can provide users with rich and satisfying justifications. Moreover, our experiment also showed that the users prefer review-based justifications to other explanation strategies, and this finding further confirmed the effectiveness of the approach.
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通过基于方面的用户评论情感分析来证明推荐的合理性
在本文中,我们提出了一种方法,通过识别推荐项目的相关和显著特征,通过挖掘用户评论自动提取推荐算法生成的建议。我们的方法依赖于自然语言处理和情感分析技术的结合,并基于以下步骤:(1)收集和分析一组讨论推荐项目的用户评论;(2)提取物品的特征特征,并使用排序函数来识别最相关的特征;(3)提取讨论这些方面的评论摘要,并通过这些句子的聚合填充自然语言模板。这表示算法的最终输出,作为用户收到的推荐的理由提供给用户。在实验评估中,我们进行了一项用户研究(N=296, 73.6%为男性),旨在调查我们的方法在电影和书籍两个不同领域的有效性。结果表明,我们的技术可以为用户提供丰富而令人满意的理由。此外,我们的实验还表明,用户更喜欢基于评论的理由而不是其他解释策略,这一发现进一步证实了该方法的有效性。
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