Collaborating trust and item-prediction with ant colony for recommendation

Abhishek Kaleroun, Shalini Batra
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引用次数: 6

Abstract

Online Recommenders are information filtering systems which works on the implicit or explicit information provided by the users and Collaborative Filtering is most widely used technique for this. But the accuracy of the recommendation process is greatly affected by the sparsity in user-item matrix. Though, collaborative filtering is one of the most promising techniques, it still suffers from the cold start problem due to which it is unable to give recommendations to new users. It is also vulnerable to many attacks like shilling attack, grey sheep, etc. which severely hamper the recommendation systems. A trust-based approach combining trust and swarm intelligence (ant colony) with collaborative filtering has been proposed. It also uses item-based predictions in the process of generating recommendations. Ant Colony exhibit self organizing and distributed properties due to which it is used in real time and constantly changing environment. Trust is updated continuously using pheromone updating strategy of ant colony thus, making the system more accurate. By combining these approaches, effective system is proposed which provide solutions to the above mentioned problems of collaborative filtering and predict whether the user will like the certain item or not. Results have been validated using dataset of movies which is available online.
基于信任和项目预测的蚁群推荐
在线推荐是对用户提供的隐式或显式信息进行过滤的信息过滤系统,协同过滤是应用最广泛的一种过滤技术。但是用户-物品矩阵的稀疏性对推荐过程的准确性有很大的影响。尽管协同过滤是最有前途的技术之一,但它仍然存在冷启动问题,因此无法向新用户提供推荐。它也容易受到许多攻击,如先令攻击,灰羊等,严重阻碍了推荐系统。提出了一种将信任与群体智能(蚁群)相结合的基于信任的协同过滤方法。它还在生成推荐的过程中使用基于项目的预测。蚁群算法具有自组织和分布式的特性,可用于实时、不断变化的环境中。利用蚁群信息素更新策略不断更新信任,使系统更加准确。通过这些方法的结合,提出了有效的系统来解决上述协同过滤问题,并预测用户是否喜欢某项内容。结果已使用在线可用的电影数据集进行验证。
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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