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arxiv: 2302.01332 · v2 · pith:PYRHPLAAnew · submitted 2023-02-02 · 💻 cs.LG · cs.CV

Bayesian Metric Learning for Uncertainty Quantification in Image Retrieval

classification 💻 cs.LG cs.CV
keywords metricapproximationbayesianfirstlearningproposeactualizeamortization
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We propose the first Bayesian encoder for metric learning. Rather than relying on neural amortization as done in prior works, we learn a distribution over the network weights with the Laplace Approximation. We actualize this by first proving that the contrastive loss is a valid log-posterior. We then propose three methods that ensure a positive definite Hessian. Lastly, we present a novel decomposition of the Generalized Gauss-Newton approximation. Empirically, we show that our Laplacian Metric Learner (LAM) estimates well-calibrated uncertainties, reliably detects out-of-distribution examples, and yields state-of-the-art predictive performance.

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