计算机科学
推荐系统
多元化(营销策略)
协同过滤
情报检索
相似性(几何)
主题模型
万维网
数据挖掘
数据科学
人工智能
营销
业务
图像(数学)
作者
Cai-Nicolas Ziegler,Sean M. McNee,Joseph A. Konstan,Georg Lausen
标识
DOI:10.1145/1060745.1060754
摘要
In this work we present topic diversification, a novel method designed to balance and diversify personalized recommendation lists in order to reflect the user's complete spectrum of interests. Though being detrimental to average accuracy, we show that our method improves user satisfaction with recommendation lists, in particular for lists generated using the common item-based collaborative filtering algorithm.Our work builds upon prior research on recommender systems, looking at properties of recommendation lists as entities in their own right rather than specifically focusing on the accuracy of individual recommendations. We introduce the intra-list similarity metric to assess the topical diversity of recommendation lists and the topic diversification approach for decreasing the intra-list similarity. We evaluate our method using book recommendation data, including offline analysis on 361, !, 349 ratings and an online study involving more than 2, !, 100 subjects.
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