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Agent based buddy finding methodology for knowledge sharing.

机译:基于代理的伙伴发现方法,用于知识共享。

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摘要

The Internet provides opportunity for knowledge sharing among people with similar interests (i.e., buddies). Common methods available for people to identify buddies for knowledge sharing include emails, mailing lists, chat rooms, electronic bulletin boards, and newsgroups. However, these manual buddy finding methods are time consuming and inefficient.;In this thesis, we propose an agent-based buddy finding methodology based on a combination of case-based reasoning methodology and fuzzy logic technique. We performed two experiments to assess the effectiveness of our proposed methodology. The first experiment was comprised of a stock market portfolio knowledge sharing environment in which a conventional cluster analysis was used as a benchmark to assess the technical goodness of the proposed methodology in identifying the clusters of buddies. Statistical analysis showed that there was no significant ranking difference between conventional cluster analysis and the proposed buddy-finding methodology in identifying buddies. Cluster analysis requires centralized database to form buddies (clusters) with similar properties. The unique advantage of our proposed agent-based buddy finding methodology is that it can identify similar buddies in distributed as well as centralized database environments. A second experiment, in the context of sharing musical-knowledge among human subjects, was used to find out whether selection of the buddies by the proposed methodology is as good as those done by human subjects. The findings from this latter empirical test showed that the buddies found by agents are as good as the buddies found manually by humans.
机译:互联网为具有类似兴趣的人(即伙伴)之间的知识共享提供了机会。人们可以用来识别知识共享伙伴的常用方法包括电子邮件,邮件列表,聊天室,电子公告板和新闻组。然而,这些人工伙伴查找方法既耗时又效率低下。本文将基于案例的推理方法与模糊逻辑技术相结合,提出了一种基于智能体的伙伴查找方法。我们进行了两个实验,以评估我们提出的方法的有效性。第一个实验由一个股票市场投资组合知识共享环境组成,在该环境中,常规聚类分析被用作基准,以评估所提出的方法在识别好友聚类中的技术优势。统计分析表明,常规聚类分析与所提出的伙伴发现方法在识别伙伴方面没有显着的排名差异。集群分析需要集中式数据库来形成具有相似属性的伙伴(集群)。我们提出的基于代理的伙伴发现方法的独特优势在于,它可以在分布式数据库和集中式数据库环境中识别相似的伙伴。在人类受试者之间共享音乐知识的背景下,进行了第二个实验,以发现通过所提出的方法对伙伴的选择是否与人类受试者的选择一样好。后一项经验测试的结果表明,代理商发现的伙伴与人类手动发现的伙伴一样好。

著录项

  • 作者

    Li, Xiaoqing.;

  • 作者单位

    McMaster University (Canada).;

  • 授予单位 McMaster University (Canada).;
  • 学科 Business Administration Management.;Mass Communications.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 180 p.
  • 总页数 180
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 贸易经济;传播理论;
  • 关键词

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