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TCFACO: Trust-aware collaborative filtering method based on ant colony optimization

机译:TCFACO:基于蚁群优化的信任感知协同过滤方法

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Recommender systems (RSs) aim to help users to find relevant information based on their preferences instead of searching through extensive volume of information using search engines. Accurate prediction of unknown ratings is one of the key challenges in the analysis of RSs. Collaborative Filtering (CF) is a well-known recommendation method that estimates missing ratings by employing a set of similar users to the target user. An outstanding topic in CF is picking out an appropriate set of users and using them in the rating prediction process. In this paper, a novel CF method is proposed to predict missing ratings accurately. The proposed method called TCFACO uses trust statements as a rich side information with Ant Colony Optimization (ACO) method. TCFACO consists of three main steps. In the first step, users are ranked considering available rating values and social trust relationships. Then, in the second step, the ACO method is utilized to assign proper weight values to users to show how they are similar to the target user. A set of top similar users is filter out in the third step to be used in predicting unknown ratings for the target user. In other words, to speed up identifying similar users, the proposed method first filters out a majority part of dissimilar users and then runs the ACO on only a reduced set of users to weight them. Several experiments were performed on three real-world datasets to evaluate the effectiveness of the proposed method and the results show that the proposed method performs better than the state-of-the-art methods. (C) 2018 Elsevier Ltd. All rights reserved.
机译:推荐系统(RSs)旨在帮助用户根据自己的喜好查找相关信息,而不是使用搜索引擎搜索大量信息。未知收视率的准确预测是RSS分析中的关键挑战之一。协同过滤(CF)是一种众所周知的推荐方法,它通过采用一组与目标用户相似的用户来估计缺少的评分。 CF中的一个突出主题是选择一组合适的用户,并将其用于收视率预测过程。在本文中,提出了一种新颖的CF方法来准确地预测缺失评分。所提出的称为TCFACO的方法使用蚁群优化(ACO)方法将信任声明用作丰富的附带信息。 TCFACO包括三个主要步骤。第一步,考虑可用的评级值和社会信任关系对用户进行排名。然后,在第二步中,使用ACO方法为用户分配适当的权重值,以显示它们与目标用户的相似程度。在第三步中将筛选出一组顶级相似用户,以用于预测目标用户的未知评分。换句话说,为了加快识别相似用户的速度,建议的方法首先过滤掉大部分不相似的用户,然后仅对减少的一组用户运行ACO对其进行加权。在三个真实的数据集上进行了几次实验,以评估该方法的有效性,结果表明该方法的性能优于最新方法。 (C)2018 Elsevier Ltd.保留所有权利。

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