基于内容的标签过滤:第一个系统

P. Lops, M. Degemmis, G. Semeraro, P. Gissi, C. Musto, F. Narducci
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引用次数: 6

摘要

基本的内容个性化包括将用户配置文件(其中存储了首选项和兴趣)的属性与内容对象的属性进行匹配。本文描述了一个基于内容的推荐系统,称为FIRSt,它将用户生成内容(UGC)与内容的语义分析相结合。FIRSt的主要贡献是一种集成策略,它使基于内容的推荐者能够通过应用机器学习技术推断用户的兴趣,包括出版商提供的官方项目描述和用户用来注释相关项目的自由关键词。静态内容和动态内容通过先进的语言技术进行预防性分析,以捕获用户兴趣的语义,通常隐藏在关键字后面。该方法已在文化遗产个性化领域进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Content-Based Filtering with Tags: The FIRSt System
Basic content personalization consists in matching up the attributes of a user profile, in which preferences and interests are stored, against the attributes of a content object. This paper describes a content-based recommender system, called FIRSt, that integrates user generated content (UGC) with semantic analysis of content. The main contribution of FIRSt is an integrated strategy that enables a content-based recommender to infer user interests by applying machine learning techniques, both on official item descriptions provided by a publisher and on freely keywords which users adopt to annotate relevant items. Static content and dynamic content are preventively analyzed by advanced linguistic techniques in order to capture the semantics of the user interests, often hidden behind keywords. The proposed approach has been evaluated in the domain of cultural heritage personalization.
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