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DATA CLEANSING DECISIONS: INSIGHTS FROM DISCRETE-EVENT SIMULATIONS OF FIRM RESOURCES AND DATA QUALITY

机译:数据清洁决策:企业资源和数据质量离散事件模拟的启示

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摘要

The cost of poor data quality has been measured in the billions of dollars annually. However, deriving coherent data cleansing strategies to improve data quality is challenging because it is often difficult to justify the financial and human capital cost involved in cleaning data. But those who have planned and designed an effective approach to cleaning data report significant benefits. Although extant literature has extensively focused on data quality issues, little attention has been directed toward providing decision-making techniques that help practitioners determine the cost and benefits of adopting data-cleansing approaches. This study advances an approach that illustrates how discrete-event simulation can be used as a decision tool for making data-cleansing decisions, by understanding the interactions among the firms' resources and performance outcomes. To our knowledge, this is one of the first studies to apply discrete-event simulation for evaluating data-cleansing approaches. The article contributes to an understanding of how various organizational resources interact within, and between, two data-cleansing approaches to drive performance outcomes. Simulation approaches such as the one examined here reveal how the complexity of interactions among such factors can produce results that are difficult to anticipate using other approaches.
机译:不良数据质量的成本每年以数十亿美元衡量。但是,推导一致的数据清理策略以提高数据质量具有挑战性,因为通常很难证明清理数据涉及的财务和人力资本成本是合理的。但是那些计划并设计了一种有效的清洁数据方法的人报告了巨大的好处。尽管现有文献广泛地关注数据质量问题,但是很少关注提供决策技术来帮助从业人员确定采用数据清洗方法的成本和收益。这项研究提出了一种方法,该方法通过了解企业资源与绩效成果之间的相互作用,说明了如何将离散事件模拟用作进行数据清理决策的决策工具。就我们所知,这是将离散事件模拟应用于评估数据清洗方法的首批研究之一。本文有助于理解各种组织资源如何在两种数据清洁方法内部和之间相互作用以推动绩效结果。仿真方法(如本文所研究的方法)揭示了这些因素之间相互作用的复杂性如何产生使用其他方法难以预期的结果。

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