Improving Collaborative Filtering Algorithms: Sentiment-based Approach in Social Network

Firas Ben Kharrat, A. Elkhlifi, R. Faiz
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引用次数: 4

Abstract

This paper puts forward a new recommendation algorithm based on semantic analysis as well as new measurements. Like Facebook, Social network is considered as one of the most well-prominent Web 2.0 applications and relevant services elaborating into functional ways for sharing opinions. Thereupon, social network web sites have since become valuable data sources for opinion mining. This paper proposes to introduce an external resource a sentiment from comments posted by users in order to anticipate recommendation and also to lessen the cold-start problem. The originality of the suggested approach means that posts are not merely characterized by an opinion score, but receive an opinion grade notion in the post instead. In general, the authors' approach has been implemented with Java and Lenskit framework. The study resulted in two real data sets, namely MovieLens and TripAdvisor, in which the authors have shown positive results. They compared their algorithm to SVD and Slope One algorithms. They have fulfilled an amelioration of 10% in precision and recall along with an improvement of 12% in RMSE and nDCG.
改进协同过滤算法:社交网络中基于情感的方法
本文提出了一种新的基于语义分析的推荐算法和新的度量方法。与Facebook一样,社交网络被认为是最杰出的Web 2.0应用程序和相关服务之一,它详细阐述了分享意见的功能方式。因此,社交网站成为了有价值的意见挖掘数据源。本文提出引入一种外部资源,即来自用户评论的情感,以预测推荐并减少冷启动问题。该方法的独创性在于,在职位中不只是以意见分数为特征,而是以意见等级为概念。总的来说,作者的方法已经用Java和Lenskit框架实现了。这项研究产生了两个真实的数据集,即MovieLens和TripAdvisor,作者在其中显示了积极的结果。他们将自己的算法与SVD和Slope One算法进行了比较。他们在精确度和召回率上提高了10%,在RMSE和nDCG上提高了12%。
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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