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Papers/Outlier Exposure with Confidence Control for Out-of-Distri...

Outlier Exposure with Confidence Control for Out-of-Distribution Detection

Aristotelis-Angelos Papadopoulos, Mohammad Reza Rajati, Nazim Shaikh, Jiamian Wang

2019-06-08Text ClassificationImage ClassificationOut of Distribution (OOD) DetectionAnomaly DetectionOut-of-Distribution Detectiontext-classificationGeneral ClassificationClassification
PaperPDFCode(official)

Abstract

Deep neural networks have achieved great success in classification tasks during the last years. However, one major problem to the path towards artificial intelligence is the inability of neural networks to accurately detect samples from novel class distributions and therefore, most of the existent classification algorithms assume that all classes are known prior to the training stage. In this work, we propose a methodology for training a neural network that allows it to efficiently detect out-of-distribution (OOD) examples without compromising much of its classification accuracy on the test examples from known classes. We propose a novel loss function that gives rise to a novel method, Outlier Exposure with Confidence Control (OECC), which achieves superior results in OOD detection with OE both on image and text classification tasks without requiring access to OOD samples. Additionally, we experimentally show that the combination of OECC with state-of-the-art post-training OOD detection methods, like the Mahalanobis Detector (MD) and the Gramian Matrices (GM) methods, further improves their performance in the OOD detection task, demonstrating the potential of combining training and post-training methods for OOD detection.

Results

TaskDatasetMetricValueModel
Out-of-Distribution DetectionCIFAR-100FPR9528.89WRN 40-2 + OECC
Out-of-Distribution Detection20 NewsgroupsAUROC99.182-layer GRUs + OECC
Out-of-Distribution DetectionCIFAR-100 vs SVHNAUROC98.7OECC + MD
Out-of-Distribution DetectionImageNet dogs vs ImageNet non-dogsAUROC92.5ResNet 34 + OE
Out-of-Distribution DetectionCIFAR-10 vs CIFAR-100AUPR82Wide 40-2 + OECC
Out-of-Distribution DetectionCIFAR-10 vs CIFAR-100AUROC94.9Wide 40-2 + OECC
Out-of-Distribution DetectionMS-1M vs. IJB-CAUROC52.6ResNeXt 50 + OE
Out-of-Distribution DetectionCIFAR-100 vs CIFAR-10AUPR35.2WRN 40-2 + OECC
Out-of-Distribution DetectionCIFAR-100 vs CIFAR-10AUROC78.7WRN 40-2 + OECC
Out-of-Distribution DetectionCIFAR-10AUROC99.7ResNet 34 + OECC+GM

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