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Time-Dependent User Profiling for TV Recommendation

机译:电视推荐的时间依赖用户分析

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摘要

TV is one of the most important sources of media content consumption. The large amount of TV channels and programs have overwhelm audiences. It poses difficulties for viewers in finding their preferred programs. Tools for searching TV programs such as TV guides and PreVue channel are designed for general public and do not provide personalized recommendation. Developing an effective recommender system for TV is challenging because a TV is often shared by multiple people (e.g., family members) without login, and thus it is hard to acquire individual TV watch log, which is crucial to build an effective recommendation. Existing recommender systems for social networks or web commerce are devised for handling one user per account, and thus are not proper for TV recommender system. This paper proposes a time dependent user profiling technique. Particularly, we do time based analysis in which we first split watch log into certain time slots, and re-merge consecutive time slots by using a clustering technique. Evaluation results show that the proposed method produces higher accuracy than a typical profiling technique.
机译:电视是媒体内容消耗最重要的来源之一。大量的电视频道和节目具有压倒性的受众。观众在找到他们的首选计划时造成困难。搜索电视节目等电视指南和常规频道的工具专为公众设计,并不提供个性化推荐。为电视开发有效的推荐系统是具有挑战性的,因为电视通常被多人(例如,家庭成员)共享而没有登录,因此很难获得个人电视腕表日志,这对构建有效的推荐至关重要。为每个帐户处理一个用户,设计了用于社交网络或Web商务的现有推荐系统,因此不适合电视推荐系统。本文提出了一段时间依赖的用户分析技术。特别是,我们做基于时间的分析,其中我们首先将手表登录到某些时隙,并通过使用聚类技术重新合并连续的时隙。评价结果表明,该方法的方法比典型的分析技术产生更高的精度。

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