Anomaly Attribution with Likelihood Compensation
Abstract
This paper addresses the task of explaining anomalous predictions of a black-box regression model. When using a black-box model, such as one to predict building energy consumption from many sensor measurements, we often have a situation where some observed samples may significantly deviate from their prediction. It may be due to a sub-optimal black-box model, or simply because those samples are outliers. In either case, one would ideally want to compute a ``responsibility score'' indicative of the extent to which an input variable is responsible for the anomalous output. In this work, we formalize this task as a statistical inverse problem: Given model deviation from the expected value, infer the responsibility score of each of the input variables. We propose a new method called likelihood compensation (LC), which is founded on the likelihood principle and computes a correction to each input variable. To the best of our knowledge, this is the first principled framework that computes a responsibility score for real valued anomalous model deviations. We apply our approach to a real-world building energy prediction task and confirm its utility based on expert feedback.
Keywords
Cite
@article{arxiv.2208.10679,
title = {Anomaly Attribution with Likelihood Compensation},
author = {Tsuyoshi Idé and Amit Dhurandhar and Jiří Navrátil and Moninder Singh and Naoki Abe},
journal= {arXiv preprint arXiv:2208.10679},
year = {2022}
}
Comments
8 pages, 7 figures