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Optimized Fuzzy Decision Tree Data Mining for Engineering Applications

机译:工程应用中的优化模糊决策树数据挖掘

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Manufacturing organizations are striving to remain competitive in an era of increased competition and every-changing conditions. Manufacturing technology selection is a key factor in the growth of an organization and a fundamental challenge is effectively managing the computation of data to support future decision-making. Classification is a data mining technique used to predict group membership for data instances. Popular methods include decision trees and neural networks. This paper investigates a unique fuzzy reasoning method suited to engineering applications using fuzzy decision trees.The paper focuses on the inference stages of fuzzy decision trees to support decision-engineering tasks. The relaxation of crisp decision tree boundaries through fuzzy principles increases the importance of the degree of confidence exhibited by the inference mechanism. Industrial philosophies have a strong influence on decision practices and such strategic views must be considered. The paper is organized as follows: introduction to the research area, literature review, proposed inference mechanism and numerical example. The research is concluded and future work discussed.
机译:在竞争加剧和瞬息万变的时代,制造组织正在努力保持竞争力。选择制造技术是组织成长的关键因素,而一项基本挑战是有效管理数据计算以支持未来的决策。分类是一种数据挖掘技术,用于预测数据实例的组成员身份。流行的方法包括决策树和神经网络。本文研究了一种适用于使用模糊决策树的工程应用的独特模糊推理方法。本文着重于模糊决策树的推理阶段以支持决策工程任务。通过模糊原理来放松清晰的决策树边界,增加了推理机制展现出的置信度的重要性。产业哲学对决策实践有很大的影响,因此必须考虑这种战略观点。论文组织如下:研究领域介绍,文献综述,提出的推理机制和数值例子。研究结束,讨论了未来的工作。

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