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Personalized hybrid recommendation for group of users: Top-N multimedia recommender

机译:针对用户组的个性化混合推荐:Top-N多媒体推荐器

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摘要

Nowadays, the increasing demand for group recommendations can be observed. In this paper we address the problem of recommendation performance for groups of users (group recommendation). We focus on the performance of very Top-N recommendations, which are important when recommending the long lasting items (only a few such items are consumed per session, e.g. movie). To improve existing group recommenders we propose a mixed hybrid recommender for groups combining content-based and collaborative strategies. The principle of proposed group recommender is to generate content and collaborative recommendations for each user, apply an aggregation strategy to solve the group conflict preferences for the content and collaborative sets separately, and finally reorder the collaborative candidates based on the content-based ones. It is based on an idea that candidates recommended by both recommendation strategies at the same time are presumably more appropriate for the group than the candidates recommended by individual strategies. The evaluation is performed by several experiments in the multimedia domain (as typical representative for group recommendations). Both, online and offline experiments were performed in order to compare real users' satisfaction to the standard group recommenders and also, to compare performance of proposed approach to the state-of-the-art recommenders based on the MovieLens dataset. Finally, we experimented with the proposed hybrid recommender to generate the recommendation for a group of size one (i.e. single user recommendation). Obtained results, support our hypothesis that proposed mixed hybrid approach improves the precision of the recommendation for groups of users and for the single-user recommendation respectively on very Top-N recommended items.
机译:如今,可以看到对团体推荐的需求不断增加。在本文中,我们解决了针对用户组(组推荐)的推荐性能问题。我们关注于非常前N个推荐的表现,这在推荐持久项目时非常重要(每个会话仅消耗一些此类项目,例如电影)。为了改善现有的小组推荐者,我们为结合基于内容的策略和协作策略的小组提出了混合混合推荐者。提议组推荐器的原理是为每个用户生成内容和协作推荐,应用聚合策略分别解决内容和协作集的组冲突偏好,最后基于基于内容的协作候选者重新排序。这是基于这样一种思想,即与两个策略所推荐的候选人相比,同时推荐策略所推荐的候选人更适合该群体。评估是通过多媒体领域的一些实验(作为小组推荐的典型代表)进行的。进行了在线和离线实验,目的是将真实用户的满意度与标准组推荐者进行比较,并且将建议方法与基于MovieLens数据集的最新推荐者的性能进行比较。最后,我们对建议的混合式推荐器进行了实验,以生成一组大小为1的推荐(即单用户推荐)。获得的结果支持我们的假设,即提出的混合混合方法分别提高了针对非常前N个推荐项目的用户组和单用户推荐的精度。

著录项

  • 来源
    《Information Processing & Management》 |2016年第3期|459-477|共19页
  • 作者单位

    Slovak University of Technology in Bratislava, Faculty of Informatics and Information Technologies, Ilkovicova 2, Bratislava 4, 842 16, Slovakia;

    Slovak University of Technology in Bratislava, Faculty of Informatics and Information Technologies, Ilkovicova 2, Bratislava 4, 842 16, Slovakia;

    Slovak University of Technology in Bratislava, Faculty of Informatics and Information Technologies, Ilkovicova 2, Bratislava 4, 842 16, Slovakia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Group recommendation; Mixed hybrid recommendation; Top-N recommendation; Multimedia;

    机译:小组推荐;混合混合推荐;前N名推荐;多媒体;
  • 入库时间 2022-08-17 23:20:07

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