首页> 外文会议>International Conference on Information Technology Systems and Innovation >Top-N Recommendation for Shared Account on Book Recommender System
【24h】

Top-N Recommendation for Shared Account on Book Recommender System

机译:书本推荐系统共享帐户的Top-N建议

获取原文

摘要

Until recently, recommender systems have been widely applied. Commonly, a single account is used by only one user when interacts with a recommender system. In fact, it is possible that users share their accounts with other users, for example, a single shopping account in an online book store is used by three users in a household. Most recommender systems fail where multiple preferences are mixed in one shared account without contextual information for splitting the shared account. This paper discusses our study and implementation of COVER disambiguating item-based algorithm, a solution for shared account problems because of the absence of contextual information. It applies an item-based top-N collaborative filtering algorithm as a base algorithm. The algorithm aims to improve the item-based top-N collaborative filtering algorithm for tackling the generality, dominance, and presentation problems of the shared account. It has been tested using BookCrossing and Amazon Review datasets and it generates recommendations based on binary and positive-only feedback. To conclude, the proposed COVER disambiguating item-based algorithm has been able to reduce the score of fraction at zero recall. In addition, it can increase the identifiability score of recommendations, in comparison with the item-based top-N collaborative filtering algorithm.
机译:直到最近,推荐系统已被广泛应用。通常,与推荐系统互动时,只有一个用户使用一个帐户。实际上,用户有可能与其他用户共享其帐户,例如,一个家庭中的三个用户使用在线书店中的一个购物帐户。大多数推荐器系统在多个首选项混合到一个共享帐户中而没有用于拆分共享帐户的上下文信息的情况下失败。本文讨论了我们的COVER消歧基于项目的算法的研究和实现,该算法用于解决由于缺少上下文信息而导致的共享帐户问题。它应用了基于项目的top-N协同过滤算法作为基础算法。该算法旨在改进基于项的top-N协作过滤算法,以解决共享帐户的普遍性,支配性和表示问题。已使用BookCrossing和Amazon Review数据集对其进行了测试,并基于二进制和仅肯定的反馈生成建议。总而言之,所提出的基于歧义消除歧义的基于项目的算法已经能够降低零召回时的分数得分。此外,与基于项目的top-N协同过滤算法相比,它可以提高建议的可识别性得分。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号