ECAT: an Enhanced Confidence-aware Trust-based recommendation system

Maryam Taherpour, Mehrdad Jalali, Hasan Shakeri
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引用次数: 1

Abstract

One of the most widely employed recommendation approaches is collaborative filtering. There are some limitations to this approach, such as the cold-start user problem. Trust-based recommendation approaches are solutions to prevent traditional collaborative filtering-based approaches generating a poor recommendation. We have introduced a unique recommendation approach in our conference paper, called Confidence-aware Trust (CAT), which considers a confidence estimate in both direct and indirect trust calculations. However, the CAT recommendation approach does not involve some vital aspects, namely: the number of neighbors of active users/ target items, consistency in rating values, and the level of confidence in the predicted rating value as well. To address these aspects, we further propose an innovative approach, called an Enhanced Confidence-aware trust (ECAT), which improves the CAT recommendation approach. The Movielens dataset was evaluated. The experimental results show an improved performance by ECAT over its counterparts with respect to the accuracy of recommendations, especially tackle the issue of cold -start users.
ECAT:一个增强的基于信任的推荐系统
最广泛使用的推荐方法之一是协同过滤。这种方法有一些限制,比如冷启动用户问题。基于信任的推荐方法是防止传统的基于协同过滤的方法产生不良推荐的解决方案。我们在会议论文中引入了一种独特的推荐方法,称为信任感知信任(confidence -aware Trust, CAT),它在直接和间接信任计算中都考虑了置信度估计。然而,CAT推荐方法没有涉及到一些至关重要的方面,即:活跃用户/目标项目的邻居数量、评分值的一致性以及预测评分值的置信度。为了解决这些问题,我们进一步提出了一种创新的方法,称为增强信心感知信任(Enhanced Confidence-aware trust, ECAT),它改进了CAT推荐方法。对Movielens数据集进行了评估。实验结果表明,ECAT在推荐的准确性方面优于其他同类算法,特别是在解决冷启动用户的问题方面。
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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