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Comment on 'Automated Versus Do-It-Yourself Methods for Causal Inference: Lessons Learned from a Data Analysis Competition'

机译:对“因果推理的自动对战自己方法:从数据分析比赛中学到的教训”的评论

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摘要

Statisticians have made great progress in creating methods that reduce our reliance on parametric assumptions. However, this explosion in research has resulted in a breadth of inferential strategies that both create opportunities for more reliable inference as well as complicate the choices that an applied researcher has to make and defend. Relatedly, researchers advocating for new methods typically compare their method to at best 2 or 3 other causal inference strategies and test using simulations that may or may not be designed to equally tease out flaws in all the competing methods. The causal inference data analysis challenge, "Is Your SATT Where It's At?", launched as part of the 2016 Atlantic Causal Inference Conference, sought to make progress with respect to both of these issues. The researchers creating the data testing grounds were distinct from the researchers submitting methods whose efficacy would be evaluated. Results from 30 competitors across the two versions of the competition (black-box algorithms and do-it-yourself analyses) are presented along with post-hoc analyses that reveal information about the characteristics of causal inference strategies and settings that affect performance. The most consistent conclusion was that methods that flexibly model the response surface perform better overall than methods that fail to do so. Finally new methods are proposed that combine features of several of the top-performing submitted methods.
机译:统计学家在创建减少我们对参数假设的依赖的方法方面取得了巨大进步。但是,研究的爆炸性发展导致了广泛的推论策略,这些策略既创造了进行更可靠推论的机会,又使应用研究人员必须做出和捍卫的选择复杂化。相关地,提倡新方法的研究人员通常将他们的方法最多与其他2种或3种因果推论策略进行比较,并使用可能会或可能不会旨在平等地找出所有竞争方法中的缺陷的模拟进行测试。在2016年大西洋因果推论会议的一部分上发起的因果推论数据分析挑战“您的SATT在哪里?”试图在这两个问题上取得进展。创建数据测试依据的研究人员与提交评估其功效的方法的研究人员不同。展示了两个版本的比赛中来自30个参赛者的结果(黑盒算法和自己动手分析)以及事后分析,这些分析揭示了因果推理策略的特征和会影响绩效的设置的信息。最一致的结论是,对响应面进行灵活建模的方法的总体效果要比不这样做的方法更好。最后,提出了新方法,这些方法结合了几种表现最好的提交方法的功能。

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  • 来源
    《Statistical science》 |2019年第1期|82-85|共4页
  • 作者

  • 作者单位

    Columbia Univ Data Sci Inst 475 Riverside Dr Room 320L New York NY 10115 USA;

    NYU Dept Appl Stat Social Sci & Humanities Appl Stat & Data Sci 246 Greene St 3rd Floor New York NY 10003 USA;

    Technion Israel Inst Technol Fac Ind Engn & Management IL-3200003 Haifa Israel;

    NYU Dept Appl Stat Appl Stat 246 Greene St 3rd Floor New York NY 10003 USA;

    Los Angeles Dodgers Quantitat Res 1000 Vin Scully Ave Los Angeles CA 90012 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Causal inference; competition; machine learning; automated algorithms; evaluation;

    机译:因果推理;竞争;机器学习自动算法;评价;

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