基于agent的供应链金融协同上下文感知分布式数据挖掘系统体系结构

L. Xiang
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引用次数: 7

摘要

供应链金融数据的无限增长,必然导致获取所需信息的难度越来越大。供应链金融通常需要分析大型数据集,这些数据集通过使用协作式上下文感知分布式数据挖掘(DDM)系统在地理上的银行、供应商和客户分布式站点上维护。对现有方法的研究表明,没有一个单一的解决方案能够满足协作式上下文感知DDM系统的所有需求。其中一个基本障碍是缺乏上下文感知和支持一些开发新化合物所需的计算资源,如数据和信息库、计算模型、执行这些模型的计算能力、专门的数据挖掘算法,这些资源在本地是不可用的,但可以通过全球计算网络基础设施访问。提出了一种基于多agent的供应链金融协同分布式数据挖掘系统体系结构。多代理系统(MAS)的使用创建了一个框架,该框架允许大量异构解决方案的互操作,以执行复杂的供应链金融上下文感知分布式数据挖掘任务,许多数据挖掘任务连接异构资源,如数据源、处理节点和最终用户应用程序。它考虑了一个支持上下文感知的OLAP查询的数据仓库,确保所有数据源的互操作性,然后重点关注分布式集群算法和基于多代理的问题解决方案中的一些潜在应用程序。最后,我们概述了鞋类制造原型的实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Agent-Based Architecture for Supply Chain Finance Cooperative Context-Aware Distributed Data Mining Systems
The unlimited growth of supply chain finance data will inevitably lead to a situation in which it is increasingly difficult to access the desired information. Supply chain finance is often necessary to analyze large data sets, maintained over geographically bank, supplier and customer distributed sites by using cooperative context-aware distributed data mining (DDM) systems. The study of the existing approaches shows that no single solution fulfills all requirements identified for the cooperative context-aware DDM systems. One of the basic obstacles is the lack of context-aware and supporting some of the computational resources - such as data and information bases, computational models, compute power to execute these models, specialized data mining algorithms - required to develop a new compound is not available locally, but accessible via the global computing network infrastructure. This paper proposes a multi-agent-based architecture for supply chain finance cooperative distributed data mining systems. The use of multi-agent-systems (MAS) creates a framework which allows the inter-operation of a vast set of heterogeneous solutions to carry out the complex supply chain finance context-aware distributed data mining tasks, many data mining tasks to connect heterogeneous resources, as data sources, processing nodes and end user applications. It considers a data warehousing that supports context-aware OLAP queries, ensuring the interoperability of all data sources, and then focuses on distributed clustering algorithms and some potential applications in multi-agent-based problem solving scenarios. Finally, we outline the implementation of a prototype for shoes manufacturing.
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