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SafePredict: A Meta-Algorithm for Machine Learning That Uses Refusals to Guarantee Correctness

Machine Learning 2017-11-10 v2 Artificial Intelligence Statistics Theory Statistics Theory

Abstract

SafePredict is a novel meta-algorithm that works with any base prediction algorithm for online data to guarantee an arbitrarily chosen correctness rate, 1ϵ1-\epsilon, by allowing refusals. Allowing refusals means that the meta-algorithm may refuse to emit a prediction produced by the base algorithm on occasion so that the error rate on non-refused predictions does not exceed ϵ\epsilon. The SafePredict error bound does not rely on any assumptions on the data distribution or the base predictor. When the base predictor happens not to exceed the target error rate ϵ\epsilon, SafePredict refuses only a finite number of times. When the error rate of the base predictor changes through time SafePredict makes use of a weight-shifting heuristic that adapts to these changes without knowing when the changes occur yet still maintains the correctness guarantee. Empirical results show that (i) SafePredict compares favorably with state-of-the art confidence based refusal mechanisms which fail to offer robust error guarantees; and (ii) combining SafePredict with such refusal mechanisms can in many cases further reduce the number of refusals. Our software (currently in Python) is included in the supplementary material.

Keywords

Cite

@article{arxiv.1708.06425,
  title  = {SafePredict: A Meta-Algorithm for Machine Learning That Uses Refusals to Guarantee Correctness},
  author = {Mustafa A. Kocak and David Ramirez and Elza Erkip and Dennis E. Shasha},
  journal= {arXiv preprint arXiv:1708.06425},
  year   = {2017}
}

Comments

Submitted to IEEE Transactions on Pattern Analysis and Machine Intelligence, August 2017

R2 v1 2026-06-22T21:20:01.970Z