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Visually Communicating and Teaching Intuition for Influence Functions

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  • Aaron Fisher
  • Edward H. Kennedy

Abstract

Estimators based on influence functions (IFs) have been shown to be effective in many settings, especially when combined with machine learning techniques. By focusing on estimating a specific target of interest (e.g., the average effect of a treatment), rather than on estimating the full underlying data generating distribution, IF-based estimators are often able to achieve asymptotically optimal mean-squared error. Still, many researchers find IF-based estimators to be opaque or overly technical, which makes their use less prevalent and their benefits less available. To help foster understanding and trust in IF-based estimators, we present tangible, visual illustrations of when and how IF-based estimators can outperform standard “plug-in” estimators. The figures we show are based on connections between IFs, gradients, linear approximations, and Newton–Raphson.

Suggested Citation

  • Aaron Fisher & Edward H. Kennedy, 2021. "Visually Communicating and Teaching Intuition for Influence Functions," The American Statistician, Taylor & Francis Journals, vol. 75(2), pages 162-172, May.
  • Handle: RePEc:taf:amstat:v:75:y:2021:i:2:p:162-172
    DOI: 10.1080/00031305.2020.1717620
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    Cited by:

    1. Abhinandan Dalal & Patrick Blobaum & Shiva Kasiviswanathan & Aaditya Ramdas, 2024. "Anytime-Valid Inference for Double/Debiased Machine Learning of Causal Parameters," Papers 2408.09598, arXiv.org, revised Sep 2024.
    2. Guanghui Pan, 2024. "Methodological Foundations of Modern Causal Inference in Social Science Research," Papers 2408.00032, arXiv.org.
    3. Denis Chetverikov & Yukun Liu & Aleh Tsyvinski, 2022. "Weighted-average quantile regression," Papers 2203.03032, arXiv.org.

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