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Countering Contextual Bias in TV Watching Behavior: Introducing Social Trend as External Contextual Factor in TV Recommenders

机译:在电视观看行为中应对语境偏差:在电视推荐人中引入社会趋势作为外部语境因素

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摘要

Context-awareness has become a critical factor in improving the predictions of user interest in modern online TV recommendation systems. In addition to individual user preferences, existing context-aware approaches such as tensor factorization incorporate system-level contextual bias to increase predicting accuracy. We analyzed a user interaction dataset from a WebTV platform, and identified that such contextual bias creates a skewed selection of recommended programs which ultimately locks users in a filter bubble. To address this issue, we introduce the Twitter social stream as a source of external context to extend the choice with items related to social media events. We apply two trend indicators, Trend Momentum and SigniScore, to the Twitter histories of relevant programs. The evaluation reveals that Trend Momentum outperforms SigniScore and signalizes 96% of all peaks ahead of time regarding the selected candidate program titles.
机译:上下文感知已成为改善现代在线电视推荐系统中用户兴趣的预测的关键因素。除了个人用户的偏好之外,现有的上下文感知方法(例如张量分解)还结合了系统级上下文偏差,以提高预测准确性。我们分析了来自WebTV平台的用户交互数据集,并确定这种上下文偏差会导致对推荐节目的偏斜选择,最终将用户锁定在过滤器泡中。为了解决这个问题,我们引入了Twitter社交流作为外部环境的来源,以扩展与社交媒体事件相关的项的选择。我们将两个趋势指标趋势动量和SigniScore应用于相关程序的Twitter历史记录。评估显示,趋势动量优于SigniScore,并且在选定的候选程序标题方面提前发出了96%的所有峰值信号。

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