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基于概念格的实体档案馆用户行为研究 被引量:6

Study on Entity Archives' User Behavior Based on Concept Lattice
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摘要 提出基于概念格的实体档案用户行为研究方法。对实体档案用户行为进行实践调研,以此形成实体档案馆用户行为的单值形式背景,构建实体档案馆用户行为概念格,将实体档案馆用户初步细分为7个用户群,并探析不同档案用户群行为特点。最后,提取档案用户行为关联规则,解析历史档案用户群、专门档案用户群、学校档案馆用户群等不同类型档案用户群的行为规律。 The method of archives' user behavior study based on concept lattice is proposed against to the entity archives. The authors carry out market research on archives' users behaviors according to the concept of market segmentation variables to form single valued background. The authors establish the concept lattice of users' behavior and explore the characteristics of seven different user communities. Also in order to mine deep-seated archives' user behavior law hidden behind the concept lattice, authors extract the association rules and the potential routine of archives users' behavior to discover the patterns of variety of users' behaviors, which includes history archives users community, specialized archives users community, and university archives users community etc.
出处 《图书情报工作》 CSSCI 北大核心 2014年第12期109-117,共9页 Library and Information Service
关键词 档案用户行为 聚类分析 关联规则 概念格 archives' user behavior cluster analysis association rule concept lattice
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