Improving the Recommendation Accuracy for Cold Start Users in Trust-Based Recommender Systems

A. Bellaachia, Deema Alathel, Dc Washington, America
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引用次数: 6

Abstract

Recommender systems have become extremely popular in recent years due to their ability to predict a user’s preference or rating of a certain item by analyzing similar users in the network. Trust-based recommender systems generate these predictions by using an explicitly issued trust between the users. In this paper we propose a recommendation algorithm called Averaged Localized Trust-Based Ant Recommender (ALT-BAR) that follows the methodology applied by Ant Colony Optimization algorithms to increase the accuracy of predictions in recommender systems, especially for cold start users. Cold start users are considered challenging to deal with in any recommender system because of the few ratings they have in their profiles. ALT-BAR reinforces the significance of trust between users, to overcome the lack of ratings, by modifying the way the initial pheromone levels of edges are calculated to reflect each edge’s associated trust level. An appropriate initialization of pheromone in ant algorithms in general can guarantee a proper convergence of the system to the optimal solution. ALT-BAR’s approach allows the ants to expand their search scope in the solution space to find ratings for cold start users while exploiting discovered good solutions for the sake of heavy raters. When compared to other algorithms in the literature, ALT-BAR proved to be extremely successful in enhancing the prediction accuracy and coverage for cold start users while still maintaining fairly good results for heavy raters.
在基于信任的推荐系统中提高冷启动用户的推荐准确性
推荐系统近年来变得非常流行,因为它们能够通过分析网络中相似的用户来预测用户的偏好或对特定物品的评级。基于信任的推荐系统通过使用用户之间明确发布的信任来生成这些预测。在本文中,我们提出了一种基于平均局部信任的蚂蚁推荐算法(ALT-BAR),该算法遵循蚁群优化算法用于提高推荐系统预测准确性的方法,特别是对于冷启动用户。冷启动用户被认为在任何推荐系统中都很难处理,因为他们的个人资料中很少有评级。ALT-BAR强化了用户之间信任的重要性,克服了评级的缺乏,通过修改计算边缘的初始信息素水平的方式来反映每个边缘的相关信任水平。蚁群算法中适当的初始化信息素可以保证系统收敛到最优解。ALT-BAR的方法允许蚂蚁扩展其在解决方案空间中的搜索范围,以查找冷启动用户的评分,同时利用已发现的好的解决方案来为高评分者提供评分。与文献中的其他算法相比,ALT-BAR被证明在提高冷启动用户的预测精度和覆盖率方面非常成功,同时对于重评分者仍然保持相当好的结果。
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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