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Testing for Outliers with Conformal P-Values

Author

Listed:
  • Bates, Stephen

    (UC Berkeley)

  • Candes, Emmanuel

    (Stanford U)

  • Lei, Lihua

    (Stanford U)

  • Romano, Yaniv

    (Israel Institute of Technology)

  • Sesia, Matteo

    (University of Southern California)

Abstract

This paper studies the construction of p-values for nonparametric outlier detection, taking a multiple-testing perspective. The goal is to test whether new independent samples belong to the same distribution as a reference data set or are outliers. We propose a solution based on conformal inference, a broadly applicable framework which yields p-values that are marginally valid but mutually dependent for different test points. We prove these p-values are positively dependent and enable exact false discovery rate control, although in a relatively weak marginal sense. We then introduce a new method to compute p-values that are both valid conditionally on the training data and independent of each other for different test points; this paves the way to stronger type-I error guarantees. Our results depart from classical conformal inference as we leverage concentration inequalities rather than combinatorial arguments to establish our finite-sample guarantees. Furthermore, our techniques also yield a uniform confidence bound for the false positive rate of any outlier detection algorithm, as a function of the threshold applied to its raw statistics. Finally, the relevance of our results is demonstrated by numerical experiments on real and simulated data.

Suggested Citation

  • Bates, Stephen & Candes, Emmanuel & Lei, Lihua & Romano, Yaniv & Sesia, Matteo, 2022. "Testing for Outliers with Conformal P-Values," Research Papers 4027, Stanford University, Graduate School of Business.
  • Handle: RePEc:ecl:stabus:4027
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