Statistical Testing for Efficient Out of Distribution Detection in Deep Neural Networks
Haroush, Matan, Frostig, Tzivel, Heller, Ruth, Soudry, Daniel
Commonly, Deep Neural Networks (DNNs) generalize well on samples drawn from a distribution similar to that of the training set. However, DNNs' predictions are brittle and unreliable when the test samples are drawn from a dissimilar distribution. This presents a major concern for deployment in real-world applications, where such behavior may come at a great cost -- as in the case of autonomous vehicles or healthcare applications. This paper frames the Out Of Distribution (OOD) detection problem in DNN as a statistical hypothesis testing problem. Unlike previous OOD detection heuristics, our framework is guaranteed to maintain the false positive rate (detecting OOD as in-distribution) for test data. We build on this framework to suggest a novel OOD procedure based on low-order statistics. Our method achieves comparable or better than state-of-the-art results on well-accepted OOD benchmarks without retraining the network parameters -- and at a fraction of the computational cost.
Feb-25-2021
- Country:
- Asia > Middle East > Israel
- Tel Aviv District > Tel Aviv (0.04)
- Haifa District > Haifa (0.04)
- Asia > Middle East > Israel
- Genre:
- Research Report
- New Finding (0.46)
- Experimental Study (0.33)
- Research Report
- Industry:
- Health & Medicine (0.34)
- Technology: