Ana Carolina M. Pilatti de Paula, B. C. Ávila, E. Scalabrin, F. Enembreck
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引用次数: 5
摘要
本文提出了一种基于多智能体环境的分布式数据挖掘技术,称为SMAMDD (multiagent system for distributed data mining),该技术采用模型集成技术。模型集成包括将局部模型合并为一个全局的、一致的模型。在每个子集中,代理在本地执行挖掘任务,然后将结果合并到全局模型中。为了实现这一目标,智能体通过交换信息进行合作,旨在改进知识发现过程,产生准确的结果。本文提出的用于分布式数据挖掘的多智能体系统与基于模型集成的经典机器学习算法进行了比较,模拟了分布式环境。结果表明,SMAMDD可以生成高精度的数据模型
This paper presents a distributed data mining technique based on a multiagent environment, called SMAMDD (multiagent system for distributed data mining), which uses model integration. Model integration consists in the amalgamation of local models into a global, consistent one. In each subset, agents perform mining tasks locally and, afterwards, results are merged into a global model. In order to achieve that, agents cooperate by exchanging messages, aiming to improve the process of knowledge discover generating accurate results. The multiagent system for distributed data mining proposed in this paper has been compared with classical machine learning algorithms which are based on model integration as well, simulating a distributed environment. The results obtained show that SMAMDD can produce highly accurate data models