基于自适应推理学习和规则生成的模糊神经网络故障预测算法

Vahid Behbood, Jie Lu, Guangquan Zhang
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引用次数: 14

摘要

对于金融行业的决策者和监管者来说,建立一个适用的、精确的故障预测系统是非常可取的。本文提出了一种新的故障预测方法,该方法有效地将基于模糊逻辑的自适应推理系统与神经网络的学习能力相结合,以模糊规则库的形式生成知识。该方法利用预处理阶段来处理数据集不平衡问题,并提出了一种新的模糊神经网络(FNN),该网络在学习算法中包含自适应推理系统及其网络结构和规则生成算法,以减少模糊神经网络方法的预测误差。
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Adaptive inference-based learning and rule generation algorithms in Fuzzy Neural Network for failure prediction
Creating an applicable and precise failure prediction system is highly desirable for decision makers and regulators in the finance industry. This study develops a new Failure Prediction (FP) approach which effectively integrates a fuzzy logic-based adaptive inference system with the learning ability of a neural network to generate knowledge in the form of a fuzzy rule base. This FP approach uses a preprocessing phase to deal with the imbalanced data-sets problem and develops a new Fuzzy Neural Network (FNN) including an adaptive inference system in the learning algorithm along with its network structure and rule generation algorithm as a means to reduce prediction error in the FP approach.
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