识别活跃家庭成员的时间特征选择

P. Campos, Alejandro Bellogín, F. Díez, Iván Cantador
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引用次数: 8

摘要

Netflix和MoviePilot等流行的在线租赁服务通常管理家庭账户。一个家庭帐户通常是由住在同一栋房子里的不同用户共享的,但通常不提供识别当前活跃用户的机制,因此在做出有效的个性化推荐方面存在相当大的困难。因此,活跃家庭成员的识别,定义为对与系统(例如,点播视频服务)交互的给定家庭用户的歧视,是推荐系统研究社区面临的一个有趣挑战。在本文中,我们将上述任务表述为一个分类问题,并通过全局和局部特征选择方法以及仅利用过去物品消费记录中的时间特征的分类器来解决它。在真实数据集上的一系列实验结果表明,所提出的一些方法能够选择相关的时间特征,从而使简单的分类器能够准确地识别家庭账户的活跃成员。
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Time feature selection for identifying active household members
Popular online rental services such as Netflix and MoviePilot often manage household accounts. A household account is usually shared by various users who live in the same house, but in general does not provide a mechanism by which current active users are identified, and thus leads to considerable difficulties for making effective personalized recommendations. The identification of the active household members, defined as the discrimination of the users from a given household who are interacting with a system (e.g. an on-demand video service), is thus an interesting challenge for the recommender systems research community. In this paper, we formulate the above task as a classification problem, and address it by means of global and local feature selection methods and classifiers that only exploit time features from past item consumption records. The results obtained from a series of experiments on a real dataset show that some of the proposed methods are able to select relevant time features, which allow simple classifiers to accurately identify active members of household accounts.
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