推荐系统的发展与公共图书馆个性化信息服务探讨


阮光册1 夏 磊2 (1. 华东师范大学 ;2. 上海图书馆)

    

    
〔关键词〕 推荐系统 数字图书馆 公共图书馆 个性化信息服务

〔摘 要〕 文章探讨了推荐系统的发展,对目前国内外图书馆推荐系统发展的情况进行了总结,并对公共图书馆运用推荐系统为读者提供个性化信息服务提出了一些思考,以期为公共图书馆的数字化服务提供理论借鉴。


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