A comparison of linear and non-linear calibrations for speaker recognition

02/11/2014
by   Niko Brümmer, et al.
0

In recent work on both generative and discriminative score to log-likelihood-ratio calibration, it was shown that linear transforms give good accuracy only for a limited range of operating points. Moreover, these methods required tailoring of the calibration training objective functions in order to target the desired region of best accuracy. Here, we generalize the linear recipes to non-linear ones. We experiment with a non-linear, non-parametric, discriminative PAV solution, as well as parametric, generative, maximum-likelihood solutions that use Gaussian, Student's T and normal-inverse-Gaussian score distributions. Experiments on NIST SRE'12 scores suggest that the non-linear methods provide wider ranges of optimal accuracy and can be trained without having to resort to objective function tailoring.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/10/2020

Remarks on Optimal Scores for Speaker Recognition

In this article, we first establish the theory of optimal scores for spe...
research
04/18/2021

Tutorial on logistic-regression calibration and fusion: Converting a score to a likelihood ratio

Logistic-regression calibration and fusion are potential steps in the ca...
research
07/20/2021

On some information-theoretic aspects of non-linear statistical inverse problems

Results by van der Vaart (1991) from semi-parametric statistics about th...
research
04/08/2013

The PAV algorithm optimizes binary proper scoring rules

There has been much recent interest in application of the pool-adjacent-...
research
03/09/2023

Adaptive Calibrator Ensemble for Model Calibration under Distribution Shift

Model calibration usually requires optimizing some parameters (e.g., tem...
research
09/18/2019

Bayesian Strategies for Likelihood Ratio Computation in Forensic Voice Comparison with Automatic Systems

This paper explores several strategies for Forensic Voice Comparison (FV...
research
11/08/2013

An Experimental Comparison of Trust Region and Level Sets

High-order (non-linear) functionals have become very popular in segmenta...

Please sign up or login with your details

Forgot password? Click here to reset