在推荐系统中建模和预测用户行为

Tural Gurbanov, F. Ricci, M. Ploner
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引用次数: 8

摘要

许多协同过滤推荐系统收集并使用用户明确输入的偏好,以对物品进行评级的形式。然而,在许多现实世界的场景中,这种形式的反馈可能很难获得或不可用(例如,新闻门户)。在这种情况下,推荐必须通过利用更丰富的隐式反馈数据来构建,这些数据只能间接地表明用户的偏好或意见。这些数据集中的记录是用户对项目执行的操作的结果(例如,该项目被点击或查看)。最先进的隐式反馈推荐系统预测用户是否会对目标物品采取行动,并将这种预测解释为对该物品的发现偏好。这些模型是通过观察单一类型的用户行为来训练的。例如,他们预测用户将使用观察到的视频观看动作数据集来观看视频。在本文中,我们推测可以联合利用多种类型的用户操作来预测一种目标类型的操作。我们提出了一个通用的预测模型(MMF -多动作类型矩阵分解)来实现这一猜想,并举例说明了一些实际的例子。在大型真实数据集上对MMF进行的经验评估表明,使用多个动作是有益的,并且它可以优于仅使用目标动作数据的最先进的隐式反馈模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and Predicting User Actions in Recommender Systems
Many collaborative filtering recommender systems collect and use users' explicitly entered preferences in the form of ratings for items. However, in many real world scenarios, this form of feedback can be difficult to obtain or unavailable (e.g., news portals). In this case recommendations must be built by leveraging more abundant implicit feedback data, which only indirectly signal users' preferences or opinions. A record in such datasets is a result of an action performed by a user on an item (e.g., the item was clicked or viewed). State-of-the-art implicit feedback recommender systems predict whether the user will act on a target item and interpret this prediction as a discovered preference for the item. These models are trained by observations of user actions of one single type. For instance, they predict that a user will watch a video using a dataset of observed video watch actions. In this paper we conjecture that multiple types of user actions may be jointly exploited to predict one target type of actions. We present a general prediction model (MMF - Multiple action types Matrix Factorization) that implements this conjecture and we illustrate some practical examples. The empirical evaluation of MMF, which was conducted on a large real world dataset, shows that using multiple actions is beneficial and it can outperform a state-of-the-art implicit feedback model that uses only the target action data.
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