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An Agent-Based Approach to the Multiple-Objective Selection of Reference Vectors

机译:基于Agent的参考向量多目标选择方法

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The paper proposes an agent-based approach to the multiple-objective selection of reference vectors from original datasets. Effective and dependable selection procedures are of vital importance to machine learning and data mining. The suggested approach is based on the multiple agent paradigm. The authors propose using JABAT middleware as a tool and the original instance reduction procedure as a method for selecting reference vectors under multiple objectives. The paper contains a brief introduction to the multiple objective optimization, followed by the formulation of the multiple-objective, agent-based, reference vectors selection optimization problem. Further sections of the paper provide details on the proposed algorithm generating a non-dominated (or Pareto-optimal) set of reference vector sets. To validate the approach the computational experiment has been planned and carried out. Presentation and discussion of experiment results conclude the paper.
机译:本文提出了一种基于代理的方法,可以从原始数据集中对参考向量进行多目标选择。有效和可靠的选择程序对于机器学习和数据挖掘至关重要。建议的方法基于多主体范例。作者建议使用JABAT中间件作为工具,并使用原始实例简化过程作为在多个目标下选择参考向量的方法。本文简要介绍了多目标优化,然后提出了基于代理的多目标参考矢量选择优化问题。本文的其他部分将详细介绍所提出的算法,该算法可生成参考向量集的非支配(或帕累托最优)集合。为了验证该方法,已经计划并进行了计算实验。实验结果的介绍和讨论结束了本文。

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