Deriving Item Features Relevance from Past User Interactions

Leonardo Cella, Stefano Cereda, Massimo Quadrana, P. Cremonesi
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引用次数: 9

Abstract

Item-based recommender systems suggest products based on the similarities between items computed either from past user preferences (collaborative filtering) or from item content features (content-based filtering). Collaborative filtering has been proven to outperform content-based filtering in a variety of scenarios. However, in item cold-start, collaborative filtering cannot be used directly since past user interactions are not available for the newly added items. Hence, content-based filtering is usually the only viable option left.
从过去的用户交互中得出项目特征的相关性
基于物品的推荐系统根据物品之间的相似度来推荐产品,这些相似度是根据用户过去的偏好(协同过滤)或物品的内容特征(基于内容的过滤)计算出来的。协作过滤已被证明在各种场景中优于基于内容的过滤。然而,在项目冷启动中,协作过滤不能直接使用,因为过去的用户交互对新添加的项目不可用。因此,基于内容的过滤通常是唯一可行的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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