Cicero Nogueira Dos Santos, Youssef Mroueh, et al.
ICCV 2019
Deep reinforcement learning (DRL) has demonstrated impressive performance in various gaming simulators and real-world applications. In practice, however, a DRL agent may receive faulty observation by abrupt interferences such as black-out, frozen-screen, and adversarial perturbation. How to design a resilient DRL algorithm against these rare but mission-critical and safety-crucial scenarios is an important yet challenging task. In this paper, we consider a generative DRL framework training with an auxiliary task of observational interferences such as artificial noises. Under this framework, we discuss the importance of the causal relation and propose a causal inference based DRL algorithm called causal inference Q-network (CIQ). We evaluate the performance of CIQ in several benchmark DRL environments with different types of interferences as auxiliary labels. Our experimental results show that the proposed CIQ method could achieve higher performance and more resilience against observational interferences.
Cicero Nogueira Dos Santos, Youssef Mroueh, et al.
ICCV 2019
Kahini Wadhawan, Payel Das, et al.
ICLR 2021
Ingkarat Rak-amnouykit, Ana Milanova, et al.
ICLR 2021
Akhilan Boopathy, Sijia Liu, et al.
ICML 2020