基于协同邻近过滤的新颖性学习

Arun Kumar, Paul Schrater
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引用次数: 5

摘要

绝大多数推荐系统将偏好建模为静态的,或者由于可观察到的用户体验而缓慢变化。然而,用户偏好的自发变化在媒体消费等许多领域是普遍存在的,而驱动偏好变化的关键因素并不能直接观察到。这些潜在的偏好变化来源构成了新的挑战。当系统不能跟踪和适应用户的口味时,用户就会失去信心和信任,从而增加用户流失的风险。为了应对这些挑战,我们开发了一种新奇偏好模型,可以学习和跟踪潜在用户的口味。我们结合了三个创新:一种基于消费共现模式的物品相似度的新度量;偏好自发变化模型;还有一个学习代理,它可以跟踪每个用户的动态偏好,并学习个性化的策略。由此产生的框架自适应地为用户提供了根据他们对更改本身的偏好量身定制的新颖性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novelty Learning via Collaborative Proximity Filtering
The vast majority of recommender systems model preferences as static or slowly changing due to observable user experience. However, spontaneous changes in user preferences are ubiquitous in many domains like media consumption and key factors that drive changes in preferences are not directly observable. These latent sources of preference change pose new challenges. When systems do not track and adapt to users' tastes, users lose confidence and trust, increasing the risk of user churn. We meet these challenges by developing a model of novelty preferences that learns and tracks latent user tastes. We combine three innovations: a new measure of item similarity based on patterns of consumption co-occurrence; model for spontaneous changes in preferences; and a learning agent that tracks each user's dynamic preferences and learns individualized policies for variety. The resulting framework adaptively provides users with novelty tailored to their preferences for change per se.
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