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Using Distributed Data Mining and Distributed Artificial Intelligence for Knowledge Integration

机译:使用分布式数据挖掘和分布式人工智能进行知识集成

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In this paper we study Distributed Data Mining from a Distributed Artificial Intelligence perspective. Very often, databases are very large to be mined. Then Distributed Data Mining can be used for discovering knowledge (rule sets) generated from parts of the entire training data set. This process requires cooperation and coordination between the processors because incon-sistent, incomplete and useless knowledge can be generated, since each processor uses partial data. Cooperation and coordination are important issues in Distributed Artificial Intelligence and can be accomplished with different techniques: planning (centralized, partially distributed and distributed), negotiation, reaction, etc. In this work we discuss a coordination protocol for cooperative learning agents of a MAS developed previously, comparing it conceptually with other learning systems. This cooperative process is hierarchical and works under the coordination of a manager agent. The proposed model aims to select the best rules for integration into the global model without, however, decreasing its accuracy rate. We have also done experiments comparing accuracy and complexity of the knowledge generated by the cooperative agents.
机译:在本文中,我们研究了分布式人工智能视角的分布式数据挖掘。通常,数据库很大才能开采。然后,分布式数据挖掘可用于发现从整个训练数据集的部分生成的知识(规则集)。此过程需要处理器之间的合作和协调,因为可以生成Incon-sistent,不完整和无用的知识,因为每个处理器使用部分数据。合作与协调是分布式人工智能的重要问题,可以采用不同的技术完成:规划(集中,部分分布和分发),谈判,反应等。在这项工作中,我们讨论了MAS开发的合作学习代理的协调议定书以前,将其与其他学习系统相比。该合作过程是分层的,在经理代理的协调下工作。该拟议的模型旨在选择集成到全球模型的最佳规则,但不得不降低其准确率。我们还完成了比较合作社产生的知识的准确性和复杂性的实验。

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