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The False Promise of Big Data: Can Data Mining Replace Hypothesis-Driven Learning in the Identification of Predictive Performance Metrics?

机译:大数据的虚假承诺:在确定预测绩效指标时,数据挖掘能否取代假设驱动的学习?

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This paper argues US manufacturers still fail to identify metrics that predict performance results despite two decades of intensive investment in data-mining applications because indicators with the power to predict complex results must have high information content as well as a high impact on those results. But data mining cannot substitute for experimental hypothesis testing in the search for predictive metrics with high information contentnot even in the aggregatebecause the low-information metrics it provides require improbably complex theories to explain complex results. So theories should always be simple but predictive factors may need to be complex. This means the widespread belief that data mining can help managers find prescriptions for success is a fantasy. Instead of trying to substitute data mining for experimental hypothesis testing, managers confronted with complex results should lay out specific strategies, test them, adapt themand repeat the process. Copyright (c) 2013 John Wiley & Sons, Ltd.
机译:本文认为,尽管在数据挖掘应用程序上进行了二十年的大量投资,美国制造商仍无法识别可预测性能结果的指标,因为具有预测复杂结果的能力的指标必须具有较高的信息含量并对这些结果具有较高的影响。但是,数据挖掘不能替代实验假设检验来搜索具有高信息含量的预测指标,即使是在汇总中也是如此,因为它提供的低信息指标要求难以解释的复杂理论来解释复杂结果。因此,理论应始终简单,但预测因素可能需要复杂。这意味着人们普遍认为数据挖掘可以帮助管理人员找到成功的秘诀是一种幻想。面对复杂结果的管理人员不要试图用数据挖掘代替实验假设检验,而应制定具体策略,进行测试,调整策略并重复该过程。版权所有(c)2013 John Wiley&Sons,Ltd.

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