Litcius/Paper detail

Revealing the Distributional Vulnerability of Discriminators by Implicit Generators

Zhilin Zhao, Longbing Cao, Kun-Yu Lin

2022IEEE Transactions on Pattern Analysis and Machine Intelligence11 citationsDOI

Abstract

In deep neural learning, a discriminator trained on in-distribution (ID) samples may make high-confidence predictions on out-of-distribution (OOD) samples. This triggers a significant matter for robust, trustworthy and safe deep learning. The issue is primarily caused by the limited ID samples observable in training the discriminator when OOD samples are unavailable. We propose a general approach for fine-tuning discriminators by implicit generators (FIG). FIG is grounded on information theory and applicable to standard discriminators without retraining. It improves the ability of a standard discriminator in distinguishing ID and OOD samples by generating and penalizing its specific OOD samples. According to the Shannon entropy, an energy-based implicit generator is inferred from a discriminator without extra training costs. Then, a Langevin dynamic sampler draws specific OOD samples for the implicit generator. Lastly, we design a regularizer fitting the design principle of the implicit generator to induce high entropy on those generated OOD samples. The experiments on different networks and datasets demonstrate that FIG achieves the state-of-the-art OOD detection performance.

Topics & Concepts

DiscriminatorComputer scienceArtificial intelligenceGenerator (circuit theory)Entropy (arrow of time)Prior probabilityMachine learningPattern recognition (psychology)Bayesian probabilityPhysicsPower (physics)Quantum mechanicsTelecommunicationsDetectorAdversarial Robustness in Machine LearningAnomaly Detection Techniques and ApplicationsAdvanced Neural Network Applications
Revealing the Distributional Vulnerability of Discriminators by Implicit Generators | Litcius