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Cheating with Models

机译:欺骗与模型

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摘要

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.
机译:通常是基于信念和决定面对模型与数据。“假”misspecified模型的相关性生成,即使它通过一个小学misspecification测试?适合一个模型,由一个有向无环表示客观(多元)高斯图分布。为通用估计两两相关高斯分布目标,主题约束估计模型保留了边缘分布的任何个人变量。作为模型变量数量的增长,估计相关性可以变成任意接近一个不管目标相关性。

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