More Accurate Knowledge Search in Technological Development for Robust Parameter Design

IF 1.8 Q3 MANAGEMENT
K. Oyama, Masato Ohkubo, Yasushi Nagata
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引用次数: 0

Abstract

Purpose: The causality search Taguchi (CS-T) method was proposed to support system selection in a robust parameter design. However, the target of the analysis is likely to be quasi-experimental data. This can be difficult to analyse with the CS-T method. Therefore, this study proposes a new analysis approach that can perform a more accurate knowledge search by applying the instrumental variable. Methodology/Approach: Using the CS-T method, appropriate knowledge search is difficult with quasi-experimental data, including endogeneity. We examined an analytical process that addresses the endogeneity between mechanism and output by utilizing the control and noise factors that constitute the mechanism as instrumental variables. Findings: The results show that 1) the proposed method has sufficient practical accuracy, even for quasi-experimental data including endogeneity; and 2) the extracted mechanism is less likely to fluctuate depending on the number of experimental conditions used. Moreover, we can clarify the position of the CS-T and proposed methods in system selection. Research Limitation/Implication: We perform estimation under the assumption that the threshold is known. However, the extracted mechanism may change depending on the threshold; this requires discussing how to determine them. Originality/Value of paper: Technological development requires a high degree of engineer sophistication. However, this study’s analytical process allows conducting more accurate knowledge search in a realistic and systematic way without requiring a high level of engineer input.
鲁棒参数设计技术开发中更精确的知识搜索
目的:提出因果搜索田口法(CS-T)来支持稳健参数设计中的系统选择。然而,分析的目标很可能是准实验数据。这可能很难用CS-T方法分析。因此,本研究提出了一种新的分析方法,通过应用工具变量来进行更准确的知识搜索。方法/途径:使用CS-T方法,准实验数据难以进行适当的知识搜索,包括内生性。我们研究了一个分析过程,通过利用构成机制的控制和噪声因素作为工具变量来解决机制和输出之间的内生性。结果表明:1)对于包含内生性的准实验数据,该方法具有足够的实际精度;2)所提取的机理不太可能因所使用的实验条件的数量而波动。此外,我们可以明确CS-T在系统选择中的地位和方法。研究局限/启示:我们在阈值已知的假设下进行估计。然而,提取的机制可能会根据阈值而变化;这需要讨论如何确定它们。纸张的原创性/价值:技术发展需要高度的工程师经验。然而,本研究的分析过程允许以现实和系统的方式进行更准确的知识搜索,而不需要高水平的工程师输入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.10
自引率
13.30%
发文量
16
审稿时长
6 weeks
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