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Feature-based decision rules for control charts pattern recognition: A comparison between CART and QUEST algorithm

机译:控制图模式识别的基于特征的决策规则:CART和QUEST算法之间的比较

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Control chart pattern (CCP) recognition can act as a problem identification tool in any manufacturing organization. Feature-based rules in the form of decision trees have become quite popular in recent years for CCP recognition. This is because the practitioners can clearly understand how a particular pattern has been identified by the use of relevant shape features. Moreover, since the extracted features represent the main characteristics of the original data in a condensed form, it can also facilitate efficient pattern recognition. The reported feature-based decision trees can recognize eight types of CCPs using extracted values of seven shape features. In this paper, a different set of seven most useful features is presented that can recognize nine main CCPs, including mixture pattern. Based on these features, decision trees are developed using CART (classification and regression tree) and QUEST (quick unbiased efficient statistical tree) algorithms. The relative performance of the CART and QUEST-based decision trees are extensively studied using simulated pattern data. The results show that the CART-based decision trees result in better recognition performance but lesser consistency, whereas, the QUEST-based decision trees give better consistency but lesser recognition performance.
机译:控制图模式(CCP)识别可以在任何制造组织中充当问题识别工具。近年来,以决策树形式出现的基于特征的规则在CCP识别中已变得非常流行。这是因为从业者可以清楚地了解如何通过使用相关的形状特征来识别特定的图案。此外,由于提取的特征以压缩形式表示原始数据的主要特征,因此还可以促进有效的模式识别。报告的基于特征的决策树可以使用七个形状特征的提取值来识别八种类型的CCP。本文介绍了一组七个最有用的功能,它们可以识别九种主要CCP,包括混合模式。基于这些功能,使用CART(分类和回归树)和QUEST(快速无偏有效统计树)算法开发决策树。使用模拟模式数据对CART和基于QUEST的决策树的相对性能进行了广泛研究。结果表明,基于CART的决策树具有更好的识别性能,但一致性较低;而基于QUEST的决策树具有更好的一致性,但识别性能较低。

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