首页> 外文期刊>International Journal of Information Technology & Decision Making >A HYBRID BAYESIAN NETWORK-BASED MULTI-AGENT SYSTEM AND A DISTRIBUTED SYSTEMS ARCHITECTURE FOR THE DRUG CRIME KNOWLEDGE MANAGEMENT
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A HYBRID BAYESIAN NETWORK-BASED MULTI-AGENT SYSTEM AND A DISTRIBUTED SYSTEMS ARCHITECTURE FOR THE DRUG CRIME KNOWLEDGE MANAGEMENT

机译:基于混合贝叶斯网络的药物犯罪知识管理的多代理系统和分布式系统架构

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摘要

In this paper, we describe an approach for building a hybrid Bayesian network-based multi-agent system for drug crime knowledge management. We use distributed artificial intelligence architecture to create a multi-agent information system that integrates distributed knowledge sources and information to aid decision-making. Our comparison of the hybrid system with a previously developed stand-alone expert system Sherpa, which was in use at a large drug crime investigation facility, shows that the current system compares similar to the existing system in terms of efficiency and effectiveness of knowledge management. We illustrate how the proposed hybrid bayesian network-based can be implemented in the distributed computing network environment.
机译:在本文中,我们描述了一种用于构建基于贝叶斯网络的混合多主体系统以进行毒品犯罪知识管理的方法。我们使用分布式人工智能体系结构创建一个多代理信息系统,该系统集成了分布式知识源和信息以帮助决策。我们将混合系统与先前开发的独立专家系统Sherpa进行了比较,该系统已在大型毒品犯罪调查机构中使用,该系统在知识管理的效率和有效性方面与现有系统相似。我们说明了如何在分布式计算网络环境中实现所提出的基于混合贝叶斯网络。

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