电视节目精准推荐的竞争意识方法

Hong-Kyun Bae, Yeon-Chang Lee, Kyungsik Han, Sang-Wook Kim
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引用次数: 0

摘要

随着电视节目数量的增加,设计推荐系统为用户提供他们喜欢的电视节目变得更加重要。在电视节目领域中,在同一时间段播放的电视节目中观看一个电视节目(即对该节目给予隐式反馈)意味着当前观看的节目是与其他节目(即输家)竞争的赢家。然而,在以往的研究中,在评估用户对电视节目的偏好时,并没有考虑到这种有限竞争的概念。在本文中,我们提出了一个新的推荐框架,以考虑到这一新的概念,基于成对模型。我们的框架由以下想法组成:(i)通过确定竞争电视节目对来确定赢家和输家;(ii)基于对胜者和败者配对偏好的置信度来学习竞争电视节目的配对;(iii)结合用户和电视节目的时间因素,推荐最受欢迎的电视节目。使用真实世界的电视节目数据集,我们的实验结果表明,与最先进的方法相比,我们提出的框架始终如一地将推荐的准确性提高了38%。我们的框架的代码和数据集可以在外部链接(https://github.com/hongkyun-bae/tvshow_rs)中获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Competition-Aware Approach to Accurate TV Show Recommendation
As the number of TV shows increases, designing recommendation systems to provide users with their favorable TV shows becomes more important. In a TV show domain, watching a TV show (i.e., giving implicit feedback to the show) among the TV shows broadcast at the same time frame implies that the currently watching show is the winner in the competition with others (i.e., losers). However, in previous studies, such a notion of limited competitions has not been considered in estimating the user’s preferences for TV shows. In this paper, we propose a new recommendation framework to take this new notion into account based on pair-wise models. Our framework is composed of the following ideas: (i) identify winners and losers by determining pairs of competing TV shows; (ii) learn the pairs of competing TV shows based on the confidence for the pair-wise preference between the winner and the loser; (iii) recommend the most favorable TV shows by considering the time factors with respect to users and TV shows. Using a real-world TV show dataset, our experimental results show that our proposed framework consistently improves the accuracy of recommendation by up to 38%, compared with the best state-of-the-art method. The code and datasets of our framework are available in an external link (https://github.com/hongkyun-bae/tvshow_rs).
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