We Ran 9 Billion Regressions: Eliminating False Positives through Computational Model Robustness

IF 2.4 2区 社会学 Q1 SOCIOLOGY Sociological Methodology Pub Date : 2018-07-13 DOI:10.1177/0081175018777988
John Muñoz, Cristobal Young
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引用次数: 37

Abstract

False positive findings are a growing problem in many research literatures. We argue that excessive false positives often stem from model uncertainty. There are many plausible ways of specifying a regression model, but researchers typically report only a few preferred estimates. This raises the concern that such research reveals only a small fraction of the possible results and may easily lead to nonrobust, false positive conclusions. It is often unclear how much the results are driven by model specification and how much the results would change if a different plausible model were used. Computational model robustness analysis addresses this challenge by estimating all possible models from a theoretically informed model space. We use large-scale random noise simulations to show (1) the problem of excess false positive errors under model uncertainty and (2) that computational robustness analysis can identify and eliminate false positives caused by model uncertainty. We also draw on a series of empirical applications to further illustrate issues of model uncertainty and estimate instability. Computational robustness analysis offers a method for relaxing modeling assumptions and improving the transparency of applied research.
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我们运行了90亿次回归:通过计算模型稳健性消除误报
假阳性发现在许多研究文献中是一个日益严重的问题。我们认为,过多的误报往往源于模型的不确定性。有很多合理的方法可以指定回归模型,但研究人员通常只报告一些首选的估计值。这引发了人们的担忧,即此类研究只揭示了可能结果的一小部分,可能很容易导致不可靠的假阳性结论。通常不清楚模型规范在多大程度上驱动了结果,以及如果使用不同的合理模型,结果会发生多大变化。计算模型稳健性分析通过从理论上知情的模型空间估计所有可能的模型来解决这一挑战。我们使用大规模随机噪声模拟来展示(1)模型不确定性下的超额误报误差问题,以及(2)计算鲁棒性分析可以识别和消除由模型不确定性引起的误报。我们还利用一系列经验应用来进一步说明模型的不确定性和估计的不稳定性问题。计算稳健性分析为放宽建模假设和提高应用研究的透明度提供了一种方法。
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来源期刊
CiteScore
4.50
自引率
0.00%
发文量
12
期刊介绍: Sociological Methodology is a compendium of new and sometimes controversial advances in social science methodology. Contributions come from diverse areas and have something useful -- and often surprising -- to say about a wide range of topics ranging from legal and ethical issues surrounding data collection to the methodology of theory construction. In short, Sociological Methodology holds something of value -- and an interesting mix of lively controversy, too -- for nearly everyone who participates in the enterprise of sociological research.
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