基于方面的推荐:基于用户评论推荐具有最有价值方面的项目

Konstantin Bauman, B. Liu, A. Tuzhilin
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引用次数: 160

摘要

在本文中,我们提出了一种推荐技术,该技术不仅可以像传统推荐系统那样向用户推荐感兴趣的商品,还可以推荐商品消费的特定方面,以进一步增强用户对这些商品的体验。例如,它可以推荐用户去一个特定的餐厅(项目),并在那里订购一些特定的食物,例如海鲜(消费的一个方面)。我们的方法被称为情感效用逻辑模型(SULM)。顾名思义,SULM使用用户评论的情感分析。它首先根据用户可能对该物品的各个方面的表达来预测用户可能对该物品的看法,然后确定用户对该物品的潜在体验中最有价值的方面。此外,该方法可以推荐商品以及用户可以控制和选择的最重要方面,例如去餐馆的时间,例如午餐和晚餐,以及在那里点什么,例如海鲜。我们在三个应用程序(餐厅、酒店和美容&水疗)上测试了提出的方法,实验表明,那些在消费商品时遵循我们最有价值方面建议的用户,有更好的体验,这是由总体评分定义的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aspect Based Recommendations: Recommending Items with the Most Valuable Aspects Based on User Reviews
In this paper, we propose a recommendation technique that not only can recommend items of interest to the user as traditional recommendation systems do but also specific aspects of consumption of the items to further enhance the user experience with those items. For example, it can recommend the user to go to a specific restaurant (item) and also order some specific foods there, e.g., seafood (an aspect of consumption). Our method is called Sentiment Utility Logistic Model (SULM). As its name suggests, SULM uses sentiment analysis of user reviews. It first predicts the sentiment that the user may have about the item based on what he/she might express about the aspects of the item and then identifies the most valuable aspects of the user's potential experience with that item. Furthermore, the method can recommend items together with those most important aspects over which the user has control and can potentially select them, such as the time to go to a restaurant, e.g. lunch vs. dinner, and what to order there, e.g., seafood. We tested the proposed method on three applications (restaurant, hotel, and beauty & spa) and experimentally showed that those users who followed our recommendations of the most valuable aspects while consuming the items, had better experiences, as defined by the overall rating.
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