为“开放卡累利阿”信息系统建立推荐系统的邻近点方法

T. A. Berlenko, K. Krinkin, M. Zaslavskiy
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引用次数: 1

摘要

本文描述了构建推荐系统的邻近点方法。这种方法适用于内容(对象)是具有弱链接的半结构化数据的信息系统。所描述的方法用于实施“开放卡累利阿”推荐系统。本文详细介绍了针对特定领域和用例的接近准则选择和测试。并给出了在全文域下使用Sphinx搜索引擎的具体实现细节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proximity points approach for building recommendation system for the “Open Karelia” information system
This paper describes proximity points approach for building recommendation systems. This approach is applicable for information systems which content (objects) is a semi-structured data with weak links. The described approach was used for implementing the "Open Karelia" recommendation system. The paper gives details about the proximity criterion selection and testing for specific domain field and use case. The work also enlightens of the concrete comparing criterion choosing approach and gives implementation details about using Sphinx search engine in case of full text fields.
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