Thirteen Questions About Using Machine Learning in Causal Research (You Won't Believe the Answer to Number 10!)

关于在因果研究中使用机器学习的十三个问题(你绝对想不到第十题的答案!)

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Abstract

Machine learning is gaining prominence in the health sciences, where much of its use has focused on data-driven prediction. However, machine learning can also be embedded within causal analyses, potentially reducing biases arising from model misspecification. Using a question-and-answer format, we provide an introduction and orientation for epidemiologists interested in using machine learning but concerned about potential bias or loss of rigor due to use of "black box" models. We conclude with sample software code that may lower the barrier to entry to using these techniques.

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