具有个性的推荐系统

A. Azaria, Jason I. Hong
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引用次数: 30

摘要

我们相信,在未来,最常见的推荐系统形式将出现在个人助理中。我们声称这样的智能代理必须是个性化的,即知道其用户的偏好并推荐相关内容,动态学习者,可指导,支持和和蔼可亲。我们描述了当前的艺术状态和这些代理属性中应该解决的挑战,并提供了我们期望未来个人代理如何传达这些属性的示例。
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Recommender Systems with Personality
We believe that in the future, the most common form of recommender systems will be present in a personal assistant. We claim that such an intelligent agent must be personal, i.e., know its user's preferences and recommend relevant content, a dynamic learner, instructable, supportive and affable. We describe the current state of the art and the challenges which should be addressed in each of these agent properties and provide examples of how we expect future personal agents to convey these properties.
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