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Ensemble Belief Rule-Based Model for complex system classification and prediction

机译:基于集合规则的复杂系统分类和预测基于集合规则的模型

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摘要

Belief Rule-Based (BRB) model has been widely used for complex system classification and prediction. However, excessive antecedent attributes will cause the combinatorial explosion problem, which restricts the applicability of the BRB model to high-dimensional problems. In this paper, we propose an Ensemble-BRB model with the use of the bagging framework to downsize the belief rule base and avoid the combinatorial explosion problem. The kernel of the Ensemble-BRB model is to generate several weak BRBs orderly, each of which only consists of a subset of antecedent attributes. Different combination methods can be used to integrate these weak BRBs coherently for classification and prediction respectively. Four benchmark problems are tested to validate the efficiency of the proposed Ensemble-BRB model in classification, and a real case on the health index prediction of engines proves the feasibility of the Ensemble-BRB model in prediction. The results on both classification and prediction show that the Ensemble-BRB model can effectively downsize the BRB as well as reach a high modeling accuracy.
机译:信仰规则的(BRB)模型已广泛用于复杂的系统分类和预测。然而,过度的前一种属性将导致组合爆炸问题,这限制了BRB模型对高维问题的适用性。在本文中,我们提出了一个合奏-BRB模型,利用装袋框架来缩小信仰规则基础,避免组合爆炸问题。 Ensemble-BRB模型的内核是有序地生成多个弱BRB,每个BRBS仅由前一种属性的子集组成。不同的组合方法可用于分别连贯地整合这些弱BRB,分别用于分类和预测。测试了四个基准测试问题以验证所提出的集合-BRB模型在分类中的效率,并且对发动机的健康指数预测的实际情况证明了集合BRB模型在预测中的可行性。对分类和预测的结果表明,集合BRB模型可以有效地降低BRB的尺寸,并达到高建模精度。

著录项

  • 来源
    《Expert systems with applications》 |2021年第2期|113952.1-113952.11|共11页
  • 作者单位

    College of Systems Engineering National University of Defense Technology Changsha 410073 PR China;

    College of Systems Engineering National University of Defense Technology Changsha 410073 PR China;

    Alliance Manchester Business School The University of Manchester Manchester M15 6PB UK;

    College of Systems Engineering National University of Defense Technology Changsha 410073 PR China;

    College of Systems Engineering National University of Defense Technology Changsha 410073 PR China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    BRB model; Bagging framework; Ensemble learning; Classification; Prediction;

    机译:BRB模型;装袋框架;合奏学习;分类;预言;

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