Cheating with Models

IF 8.1 1区 经济学 Q1 ECONOMICS American Economic Review-Insights Pub Date : 2021-12-01 DOI:10.1257/aeri.20200635
K. Eliaz, R. Spiegler, Y. Weiss
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引用次数: 10

Abstract

Beliefs and decisions are often based on confronting models with data. What is the largest “fake” correlation that a misspecified model can generate, even when it passes an elementary misspecification test? We study an “analyst” who fits a model, represented by a directed acyclic graph, to an objective (multivariate) Gaussian distribution. We characterize the maximal estimated pairwise correlation for generic Gaussian objective distributions, subject to the constraint that the estimated model preserves the marginal distribution of any individual variable. As the number of model variables grows, the estimated correlation can become arbitrarily close to one regardless of the objective correlation. (JEL D83, C13, C46, C51)
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模特作弊
信念和决策通常是基于用数据面对模型。错误指定的模型即使通过了基本的错误指定测试,也能产生最大的“假”相关性是什么?我们研究了一个“分析师”,他将由有向无环图表示的模型拟合为客观(多元)高斯分布。在估计模型保持任何单个变量的边际分布的约束下,我们刻画了一般高斯目标分布的最大估计成对相关性。随着模型变量数量的增长,无论客观相关性如何,估计的相关性都可能任意接近1。(JEL D83,C13,C46,C51)
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期刊介绍: The journal American Economic Review: Insights (AER: Insights) is a publication that caters to a wide audience interested in economics. It shares the same standards of quality and significance as the American Economic Review (AER) but focuses specifically on papers that offer important insights communicated concisely. AER: Insights releases four issues annually, covering a diverse range of topics in economics.
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