上下文推荐的协同临近广播

Yu Sun, Nicholas Jing Yuan, Xing Xie, Kieran McDonald, Rui Zhang
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引用次数: 19

摘要

微软Cortana和Google Now等移动数字助理目前为用户提供了具有吸引力的主动体验,旨在在正确的时间提供正确的信息。为了实现这一目标,准确预测用户的实时意图至关重要。意图与语境密切相关,语境不仅包括时空信息,还包括移动设备可以感知到的用户当前的活动。意图和语境之间的关系是高度动态的,表现出混沌的顺序关联。上下文本身通常是稀疏和异构的。上下文信号之间的动态和协同运动也是难以捉摸和复杂的。传统的推荐模型不能直接应用于主动体验,因为它们不能解决上述挑战。受气象学和宏观经济学中临近预报实践的启发,我们提出了一种创新的协同临近预报模型来有效地解决这些挑战。该模型成功地解决了上下文信号的稀疏性和异质性问题。它还有效地模拟了上下文信号和上下文与意图之间的复杂关联。具体而言,该模型首先提取协同潜在因素,总结上下文信号中共享的时间结构模式,然后利用协同卡尔曼滤波生成序列相关的个性化潜在因素,利用这些潜在因素监测每个用户的实时意图。对来自商业数字助理的真实世界数据集的大量实验证明了协作临近预报模型的有效性。所研究的问题和模型为移动智能设备上的推荐新范式提供了鼓舞人心的启示。
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Collaborative Nowcasting for Contextual Recommendation
Mobile digital assistants such as Microsoft Cortana and Google Now currently offer appealing proactive experiences to users, which aim to deliver the right information at the right time. To achieve this goal, it is crucial to precisely predict users' real-time intent. Intent is closely related to context, which includes not only the spatial-temporal information but also users' current activities that can be sensed by mobile devices. The relationship between intent and context is highly dynamic and exhibits chaotic sequential correlation. The context itself is often sparse and heterogeneous. The dynamics and co-movement among contextual signals are also elusive and complicated. Traditional recommendation models cannot directly apply to proactive experiences because they fail to tackle the above challenges. Inspired by the nowcasting practice in meteorology and macroeconomics, we propose an innovative collaborative nowcasting model to effectively resolve these challenges. The proposed model successfully addresses sparsity and heterogeneity of contextual signals. It also effectively models the convoluted correlation within contextual signals and between context and intent. Specifically, the model first extracts collaborative latent factors, which summarize shared temporal structural patterns in contextual signals, and then exploits the collaborative Kalman Filter to generate serially correlated personalized latent factors, which are utilized to monitor each user's real-time intent. Extensive experiments with real-world data sets from a commercial digital assistant demonstrate the effectiveness of the collaborative nowcasting model. The studied problem and model provide inspiring implications for new paradigms of recommendations on mobile intelligent devices.
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