识别有偏见或误导性未来展望的数据挖掘方法

A. Yosef, Moti Schneider, E. Shnaider
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引用次数: 6

摘要

在本研究中,我们引入了一种数据挖掘方法来识别对各种因素(如收入、企业利润、生产、国家GDP等)未来表现的偏见和/或误导性展望。该方法由几个部分组成。一个非常重要的组成部分是建立一个通用模型,其中的因变量是一个被怀疑在某些记录中投射出过度乐观印象的因素。模型中的解释变量被视为代表因变量令人满意的表现的潜力。第二个组成部分涉及评估感兴趣的单个记录(特定国家,公司,生产设施等)的潜力,并允许我们识别对未来(因变量)的乐观/乐观预测与低和/或下降潜力之间可能存在的差距。换句话说,低和/或下降的潜力基本上告诉我们,因变量的乐观的未来表现是无法实现的,也可能代表误导性或欺骗性的信息。本研究的重要新颖之处在于,通过使用软回归工具和“绩效潜力”的概念,能够识别高度夸大的未来绩效前景。详细说明了评估过程,包括成功评估的条件。给出了评估预期经济成功的案例研究。
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Data Mining Method for Identifying Biased or Misleading Future Outlook
In this study, we introduce a data mining method to identify biased and/or misleading outlooks for future performance of various factors, such as income, corporate profits, production, countries’ GDP, etc. The method consists of several components. One very important component involves building a general model, where the dependent variable is a factor suspected of projecting an over-optimistic impression in some records. Explanatory variables in the model are viewed as representing the potential for the satisfactory performance of the dependent variable. The second component involves evaluating the potential for the individual records of interest (specific countries, corporations, production facilities, etc.), and allows us to identify possible gaps between the upbeat/optimistic projections into the future (of the dependent variable) versus low and/or declining potential. In other words, low and/or declining potential basically tells us that the optimistic future performance of the dependent variable is unattainable, and could also represent misleading or deceitful information. The important novelty of this study is the capability to identify a highly exaggerated outlook of future performance, by utilizing a soft regression tool and the concept of “performance potential”. The process is explained in detail, including the conditions for successful evaluations. Case studies to evaluate expected economic success are presented.
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