SafePredict:一种机器学习元算法,使用拒绝来保证正确性

David Ramirez
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引用次数: 0

摘要

SafePredict是一种新颖的元算法,它可以与任何在线数据的基本预测算法一起工作,通过允许拒绝来保证任意选择的正确率,1−λ。允许拒绝意味着元算法有时可能会拒绝发出由基本算法产生的预测,因此非拒绝预测的错误率不超过λ。SafePredict的误差范围不依赖于对数据分布或基本预测器的任何假设。当基本预测器碰巧不超过目标错误率时,SafePredict只会拒绝有限次。当基本预测器的错误率随时间变化时,SafePredict使用权重转移启发式来适应这些变化,而不知道变化何时发生,但仍然保持正确性保证。实证结果表明:(i) SafePredict优于目前最先进的基于信任的拒绝机制,后者无法提供稳健的错误保证;(ii)将SafePredict与此类拒绝机制相结合,在许多情况下可以进一步减少拒绝次数。我们的软件(目前使用Python)包含在补充材料中。
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SafePredict: A Machine Learning Meta-Algorithm That Uses Refusals to Guarantee Correctness
SafePredict is a novel meta-algorithm that works with any base prediction algorithm for online data to guarantee an arbitrarily chosen correctness rate, 1−ϵ, 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. 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, 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.
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