Abstract:
In this work, we present a novel perspective on detecting out-of-distribution (OOD) samples and propose an algorithm for sample-aware model selection to enhance the effec...Show MoreMetadata
Abstract:
In this work, we present a novel perspective on detecting out-of-distribution (OOD) samples and propose an algorithm for sample-aware model selection to enhance the effectiveness of OOD detection. Our algorithm determines, for each test input, which pre-trained models in the model zoo are capable of identifying the test input as an OOD sample. If no such models exist in the model zoo, the test input is classified as an in-distribution (ID) sample. We the-oretically demonstrate that our method maintains the true positive rate of ID samples and accurately identifies OOD samples with high probability when there are a sufficient number of diverse pre-trained models in the model zoo. Extensive experiments were conducted to validate our method, demonstrating that it leverages the complementarity among single-model detectors to consistently improve the effective-ness of OOD sample identification. Compared to baseline methods, our approach improved the relative performance by 65.40% and 37.25% on the CIFAR10 and ImageNet benchmarks, respectively.
Date of Conference: 16-22 June 2024
Date Added to IEEE Xplore: 16 September 2024
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