用OWA方法解决推荐系统冷启动问题

Mohammad Soleymannejad, Alireza Basiri
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引用次数: 1

摘要

激增的电子商务已经使推荐系统成为令人印象深刻的工具,它们利用数据的力量使任何企业受益的能力是不可忽视的。它们的目的是有效地提供最符合用户偏好的道具。各种各样的技术和方法已经被设计和开发用于推荐系统,如协同过滤和基于人口统计的过滤。本研究提出了一种新的混合推荐系统,其重点是在“新用户冷启动”的不良情况下,提高运行的性能和效率,这种情况是由于用户恰好没有评分或只有少量评分而导致的。在这种混合方法中,我们采用了乐观指数型有序加权平均(OWA)算子来组合四种推荐系统策略的输出结果。在MovieLens数据集上进行了实验,结果表明所提出的混合方法在处理冷启动条件方面具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using OWA Approach to Solve Cold-Start Problem of Recommender Systems
The proliferating electronic commerce has led recommender systems to become impressive tools that their ability to leverage the power of data to benefit any enterprise is non-negligible. They are purposed to effectively proffer those items that meet the users' preferences best. A variety of techniques and methods have been designed and developed for recommender systems such as collaborative filtering and demographic-based filtering. This study proposes a new hybrid recommender system that its concentration is mainly on improving the performance and efficiency of operation under an undesirable condition called the "new user cold-start" which is caused by the existence of users that happen to have no ratings or only a small number of ratings. In this hybrid method, we have applied the optimistic exponential type of ordered weighted averaging (OWA) operator to combine the outcoming results of four recommender system strategies. Experiments were conducted over the MovieLens dataset and resulted in a predominance of the proposed hybrid approach dealing with the cold-start conditions.
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