Multivariate Profile Monitoring Method

Q2 Social Sciences
Rafael Herzer, A. Korzenowski, Cristiano Richter, Janine Fleith de Medeiros, L. S. Goecks, Taciana Mareth
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引用次数: 0

Abstract

Several authors refer to product portfolio management as an essential process because it may be used as a corporate management tool. However, the product portfolio management methods which are often adopted have limitations that prevent its use in practice, mainly due to the high dimensionality of selecting an optimal portfolio. Moreover, the large amount of available data is a relevant issue for practical applications. Thus, the contribution of this article is to propose a method for the product life cycle to monitor time-series behaviour patterns. The goal is to identify changes that may indicate that the product portfolio needs to be revised. The proposed method uses a multivariate regression model to relate financial variables associated with the products portfolio, the performance of products against competition, and even macroeconomic data. The objective is, through profile monitoring, to identify the specific time for the product portfolio review decision-making. We adopted three tools to develop a method – principal component analysis, multivariate regression model, and profile monitoring with Hotelling T 2 Control chart. A Monte Carlo simulation validated the approach. The results showed false alarm rate and average time to signal to be similar to previous studies. Finally, the application of the model is illustrated in a real case, using data provided by a company’s portfolio of agricultural equipment.
多变量剖面监测方法
几位作者将产品组合管理称为一个重要的过程,因为它可以用作企业管理工具。然而,通常采用的产品组合管理方法有局限性,阻碍了其在实践中的使用,主要是由于选择最佳组合的维度很高。此外,大量的可用数据对于实际应用来说是一个相关的问题。因此,本文的贡献是为产品生命周期提出一种监测时间序列行为模式的方法。目标是识别可能表明产品组合需要修改的变化。所提出的方法使用多元回归模型来关联与产品组合相关的财务变量、产品在竞争中的表现,甚至宏观经济数据。目标是通过概况监测,确定产品组合审查决策的具体时间。我们采用了三种工具来开发一种方法——主成分分析、多元回归模型和Hotelling T剖面监测 2控制图。蒙特卡洛模拟验证了该方法。结果显示,误报率和发出信号的平均时间与以前的研究相似。最后,使用一家公司的农业设备组合提供的数据,在一个实际案例中说明了该模型的应用。
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
Periodica Polytechnica, Social and Management Sciences
Periodica Polytechnica, Social and Management Sciences Social Sciences-Social Sciences (all)
CiteScore
1.50
自引率
0.00%
发文量
26
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