供应链管理分析中的数据预处理-方法回顾,它们完成的操作,以及它们完成的任务。供应链管理分析中的数据预处理。

Tobechi Obinwanne, Chibuzor Udokwu, Robert Zimmermann, P. Brandtner
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引用次数: 0

摘要

数据预处理被认为是数据分析中最重要的步骤之一。这对于供应链管理(SCM)领域来说尤其如此,在这个领域中,处理大量数据集是常态。数据预处理包括多个任务、操作和方法。因此,本研究的重点是确定SCM分析中的具体数据预处理任务,用于解决这些任务的操作,以及用于满足各自操作目标的方法。为此,我们进行了一项文献综述,涵盖2011年至2022年的文献,分析了SCM中数据预处理的文献方法。结果概述了在SCM分析中数据预处理任务、数据预处理操作和数据预处理方法之间的相互关系。结果表明,数据转换似乎是SCM相关数据预处理中一个常见的研究任务,而数据集成则是一个需要进一步研究的领域。此外,主成分分析(PCA)被认为是数据预处理的单一任务中最常用的方法,进一步强调了通过将特征操作成一种形式来转换数据的重要性,这样当应用分析算法时,它们将给出最佳结果。因此,本研究为研究人员和从业者提供了一个参考点,以确定具体的数据预处理操作所采用的具体数据预处理方法,以完成具体的数据预处理任务。
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Data Preprocessing in Supply Chain Management Analytics - A Review of Methods, the Operations They Fulfill, and the Tasks They Accomplish.: Data Preprocessing in Supply Chain Management Analytics.
Data preprocessing is thought of as one of the most important steps in data analytics. This is especially true for the field of Supply Chain Management (SCM), in which the handling of huge data sets is the norm. Data preprocessing consists of multiple tasks, operations, and methods. Thus, this research focusses on identifying the specific data preprocessing tasks in SCM analytics, the operations used to solve them, and the methods used to meet the goals of the respective operations. To this end, a literature review, covering literature from 2011 to 2022, was conducted to analyze documented approaches to data preprocessing in SCM. The resulting overview presents the interrelationship between data preprocessing tasks, data preprocessing operations, and data preprocessing methods in SCM analytics. Results indicate that data transformation seems to be a commonly investigated task in SCM related data preprocessing, while data integration represents an area requiring further research. Furthermore, Principal Component Analysis (PCA), was found to be the most common method across the single tasks of data preprocessing, further highlighting the importance of transforming data by manipulating the features into a form such that when analytics algorithms are applied, they will give optimal results. This research hence presents researchers and practitioners a point of reference to identify the specific data preprocessing method used for specific data preprocessing operations in order to fulfill a specific data preprocessing task.
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