Bayesian calibration for forensic evidence reporting
Machine Learning
2017-10-03 v3 Machine Learning
Applications
Abstract
We introduce a Bayesian solution for the problem in forensic speaker recognition, where there may be very little background material for estimating score calibration parameters. We work within the Bayesian paradigm of evidence reporting and develop a principled probabilistic treatment of the problem, which results in a Bayesian likelihood-ratio as the vehicle for reporting weight of evidence. We show in contrast, that reporting a likelihood-ratio distribution does not solve this problem. Our solution is experimentally exercised on a simulated forensic scenario, using NIST SRE'12 scores, which demonstrates a clear advantage for the proposed method compared to the traditional plugin calibration recipe.
Cite
@article{arxiv.1403.5997,
title = {Bayesian calibration for forensic evidence reporting},
author = {Niko Brümmer and Albert Swart},
journal= {arXiv preprint arXiv:1403.5997},
year = {2017}
}
Comments
accepted for Interspeech 2014