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A histogram based betting function for conformal martingales
Proceedings of the Ninth Symposium on Conformal and Probabilistic Prediction and Applications, PMLR 128:100-113, 2020.
Abstract
This paper investigates the use of Conformal Martingales (CM) for providing a numerical indication of how likely it is that the exchangeability assumption holds on a set of data. Reliable and fast testing of exchangeability is an important challenge because many machine learning algorithms rely on this assumption. Therefore a technique with only a few parameters to tune, that is able to reject the exchangeability assumption with respect to a significance level should be very beneficial for enhancing the reliability of such machine learning models. Our approach consists of a CM whose betting function is estimated on the previously seen p-values, we compare its computational efficiency and its performance with a kernel betting function and the Kolmogorov-Smirnoff test. We test our approach on two benchmark data-sets, USPS and Statlog Satellite data.