集成到电子性能支持系统中的混合内容-协作推荐系统

L. Iaquinta, Anna Lisa Gentile, P. Lops, M. Degemmis, G. Semeraro
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引用次数: 12

摘要

电子绩效支持系统(EPSS)对情境化和个性化信息传递提出了挑战。推荐系统的目标是根据用户的偏好提供和建议相关的信息,因此epss可以利用推荐算法在一个大的可能选择空间中引导用户的效果。JUMP项目旨在整合EPSS和混合推荐系统。协作过滤和基于内容的过滤是迄今为止采用最广泛的推荐技术。本文的主要贡献是一个内容-协作混合推荐,它依靠用户基于内容的个人资料计算用户之间的相似性,其中存储了用户的偏好,而不是比较他们的评分风格。该系统的一个显著特点是,通过机器学习技术与WordNet中包含的语言知识相结合,获得了用户兴趣的统计模型。该模型被命名为“语义用户档案”,用于混合推荐在邻居形成过程中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Content-Collaborative Recommender System Integrated into an Electronic Performance Support System
An electronic performance support system (EPSS) introduces challenges on contextualized and personalized information delivery. Recommender systems aim at delivering and suggesting relevant information according to users preferences, thus EPSSs could take advantage of the recommendation algorithms that have the effect of guiding users in a large space of possible options. The JUMP project aims at integrating an EPSS with a hybrid recommender system. Collaborative and content-based filtering are the recommendation techniques most widely adopted to date. The main contribution of this paper is a content- collaborative hybrid recommender which computes similarities between users relying on their content- based profiles, in which user preferences are stored, instead of comparing their rating styles. A distinctive feature of our system is that a statistical model of the user interests is obtained by machine learning techniques integrated with linguistic knowledge contained in WordNet. This model, named "semantic user profile", is exploited by the hybrid recommender in the neighborhood formation process.
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