LGAIMay 15, 2021

An Effective Baseline for Robustness to Distributional Shift

arXiv:2105.07107v137 citations
Originality Incremental advance
AI Analysis

This addresses the safety issue of model deployment by improving OoD detection, though it is incremental as it builds on abstention principles.

The paper tackles the problem of deep learning models making overconfident predictions on out-of-distribution (OoD) samples by proposing a simple approach using an abstention class and training with uncurated OoD data, which often outperforms existing methods by significant margins on various benchmarks.

Refraining from confidently predicting when faced with categories of inputs different from those seen during training is an important requirement for the safe deployment of deep learning systems. While simple to state, this has been a particularly challenging problem in deep learning, where models often end up making overconfident predictions in such situations. In this work we present a simple, but highly effective approach to deal with out-of-distribution detection that uses the principle of abstention: when encountering a sample from an unseen class, the desired behavior is to abstain from predicting. Our approach uses a network with an extra abstention class and is trained on a dataset that is augmented with an uncurated set that consists of a large number of out-of-distribution (OoD) samples that are assigned the label of the abstention class; the model is then trained to learn an effective discriminator between in and out-of-distribution samples. We compare this relatively simple approach against a wide variety of more complex methods that have been proposed both for out-of-distribution detection as well as uncertainty modeling in deep learning, and empirically demonstrate its effectiveness on a wide variety of of benchmarks and deep architectures for image recognition and text classification, often outperforming existing approaches by significant margins. Given the simplicity and effectiveness of this method, we propose that this approach be used as a new additional baseline for future work in this domain.

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