Activity Number:
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610
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Type:
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Contributed
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Date/Time:
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Wednesday, August 3, 2016 : 2:00 PM to 3:50 PM
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Sponsor:
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Section on Statistics in Defense and National Security
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Abstract #318967
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View Presentation
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Title:
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Modeling the Upper Tail of the Distribution of Facial Recognition Non-Match Scores
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Author(s):
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Brett Hunter* and Dan Cooley and Geof Givens and J. Ross Beveridge
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Companies:
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and Colorado State University and Colorado State University and Colorado State University
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Keywords:
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M-estimation ;
generalized Pareto ;
quantile regression
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Abstract:
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In facial recognition applications, the upper tail of the distribution of non-match scores is of interest because existing algorithms classify a pair of images as a match if their score exceeds some high quantile of the non-match distribution. We construct a general model for the distribution above the (1-?)th quantile borrowing ideas from extreme value theory. Our resulting distribution can be viewed as a reparameterized generalized Pareto distribution (GPD), but it differs from the traditional GPD in that ? is treated as fixed. Inference for both threshold and the GPD scale and shape parameters is performed via M-estimation, where our objective function is a combination of the quantile regression loss function and reparameterized GPD densities. Parameters are treated as a function of covariates in order to gain understanding of their influence on the tail of the distribution of non-match scores. Our simulation study shows that our method is able to estimate both the set of parameters describing the covariates' influence and high quantiles of the non-match distribution. We apply our method to a data set of non-match scores.
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Authors who are presenting talks have a * after their name.