因果模型预测性能评价中的样本选择偏差。

IF 2.1 4区 数学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Statistical Analysis and Data Mining Pub Date : 2022-02-01 DOI:10.1002/sam.11559
James P Long, Min Jin Ha
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引用次数: 2

摘要

众所周知,因果模型很难验证,因为它们对混淆做出了不可检验的假设。新的科学实验提供了利用预测性能评估因果模型的可能性。预测性能度量通常对因果假设的违反具有鲁棒性。然而,预测性能确实依赖于训练集和测试集的选择。特别是有偏差的训练集可以导致对模型性能的乐观评估。在这项工作中,我们回顾了最近提出的几个因果模型的预测性能,这些模型在Kemmeren的遗传扰动数据集上进行了测试[5]。我们发现样本选择偏差可能是模型性能的关键驱动因素。我们建议使用一个较少偏差的评估集来评估预测性能,并在这个新集上比较模型。在这种情况下,与基于标准关联的估计器(如Lasso)相比,因果模型具有类似或更差的性能。最后,我们比较了因果估计器在模拟研究中的性能,这些模拟研究再现了基因敲除实验的Kemmeren结构,但没有任何样本选择偏差。这些结果提供了对几个因果模型性能的更好理解,并为未来的研究如何使用Kemmeren提供了指导。
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Sample Selection Bias in Evaluation of Prediction Performance of Causal Models.

Causal models are notoriously difficult to validate because they make untestable assumptions regarding confounding. New scientific experiments offer the possibility of evaluating causal models using prediction performance. Prediction performance measures are typically robust to violations in causal assumptions. However prediction performance does depend on the selection of training and test sets. In particular biased training sets can lead to optimistic assessments of model performance. In this work, we revisit the prediction performance of several recently proposed causal models tested on a genetic perturbation data set of Kemmeren [5]. We find that sample selection bias is likely a key driver of model performance. We propose using a less-biased evaluation set for assessing prediction performance and compare models on this new set. In this setting, the causal models have similar or worse performance compared to standard association based estimators such as Lasso. Finally we compare the performance of causal estimators in simulation studies which reproduce the Kemmeren structure of genetic knockout experiments but without any sample selection bias. These results provide an improved understanding of the performance of several causal models and offer guidance on how future studies should use Kemmeren.

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来源期刊
Statistical Analysis and Data Mining
Statistical Analysis and Data Mining COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEC-COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
CiteScore
3.20
自引率
7.70%
发文量
43
期刊介绍: Statistical Analysis and Data Mining addresses the broad area of data analysis, including statistical approaches, machine learning, data mining, and applications. Topics include statistical and computational approaches for analyzing massive and complex datasets, novel statistical and/or machine learning methods and theory, and state-of-the-art applications with high impact. Of special interest are articles that describe innovative analytical techniques, and discuss their application to real problems, in such a way that they are accessible and beneficial to domain experts across science, engineering, and commerce. The focus of the journal is on papers which satisfy one or more of the following criteria: Solve data analysis problems associated with massive, complex datasets Develop innovative statistical approaches, machine learning algorithms, or methods integrating ideas across disciplines, e.g., statistics, computer science, electrical engineering, operation research. Formulate and solve high-impact real-world problems which challenge existing paradigms via new statistical and/or computational models Provide survey to prominent research topics.
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