垂直分区数据上BDI多智能体系统的协同数据挖掘

Jorge Melgoza-Gutierrez, A. Guerra-Hernández, N. Cruz-Ramírez
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引用次数: 3

摘要

本文提出了一种协作学习协议,处理训练数据中的垂直分区,即实例的属性分布在不同的数据源中。协议已经按照代理和工件范例进行建模和实现。工件提供基于Weka的学习工具来诱导和评估决策树(J48的修改版本),而代理使用这些工具管理学习过程的工作流。使用UCI存储库的一些已知训练集对所提出的协议和稍快的变化进行了测试,并将获得的准确性与集中式场景中获得的准确性进行了比较。我们的协作学习协议达到了与集中式数据相同的精度,同时保护了隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Data Mining on a BDI Multi-agent System over Vertically Partitioned Data
This paper presents a collaborative learning protocol dealing with vertical partitions in training data, i.e., The attributes of the instances are distributed in different data sources. The protocol has been modeled and implemented following the Agents and Artifacts paradigm. The artifacts provide Weka based learning tools to induce and evaluate Decision Trees (a modified version of J48), While the agents manage the workflow of the learning process, using such tools. The proposed protocol, and slightly faster variation, are tested with some known training sets of the UCI repository, comparing the obtained accuracy against that obtained in a centralized scenario. Our collaborative learning protocol achieves equivalent accuracy to that obtained with centralized data, while preserving privacy.
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