English

Out-of-Distribution Detection using Maximum Entropy Coding

Information Theory 2024-04-29 v1 Machine Learning math.IT

Abstract

Given a default distribution PP and a set of test data xM={x1,x2,,xM}x^M=\{x_1,x_2,\ldots,x_M\} this paper seeks to answer the question if it was likely that xMx^M was generated by PP. For discrete distributions, the definitive answer is in principle given by Kolmogorov-Martin-L\"{o}f randomness. In this paper we seek to generalize this to continuous distributions. We consider a set of statistics T1(xM),T2(xM),T_1(x^M),T_2(x^M),\ldots. To each statistic we associate its maximum entropy distribution and with this a universal source coder. The maximum entropy distributions are subsequently combined to give a total codelength, which is compared with logP(xM)-\log P(x^M). We show that this approach satisfied a number of theoretical properties. For real world data PP usually is unknown. We transform data into a standard distribution in the latent space using a bidirectional generate network and use maximum entropy coding there. We compare the resulting method to other methods that also used generative neural networks to detect anomalies. In most cases, our results show better performance.

Keywords

Cite

@article{arxiv.2404.17023,
  title  = {Out-of-Distribution Detection using Maximum Entropy Coding},
  author = {Mojtaba Abolfazli and Mohammad Zaeri Amirani and Anders Høst-Madsen and June Zhang and Andras Bratincsak},
  journal= {arXiv preprint arXiv:2404.17023},
  year   = {2024}
}
R2 v1 2026-06-28T16:07:04.796Z