Integrating Risk-Averse and Constrained Reinforcement Learning for Robust Decision-Making in High-Stakes Scenariosopen access
- Authors
- Ahmad, Moiz; Ramzan, Muhammad Babar; Omair, Muhammad; Habib, Muhammad Salman
- Issue Date
- Jul-2024
- Publisher
- Multidisciplinary Digital Publishing Institute (MDPI)
- Keywords
- augmented Lagrangian; constrained reinforcement learning; dynamic decision-making; Markov risk; non-convexities; robust decision-making
- Citation
- Mathematics, v.12, no.13, pp 1 - 29
- Pages
- 29
- Indexed
- SCIE
SCOPUS
- Journal Title
- Mathematics
- Volume
- 12
- Number
- 13
- Start Page
- 1
- End Page
- 29
- URI
- https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/125637
- DOI
- 10.3390/math12131954
- ISSN
- 2227-7390
2227-7390
- Abstract
- This paper considers a risk-averse Markov decision process (MDP) with non-risk constraints as a dynamic optimization framework to ensure robustness against unfavorable outcomes in high-stakes sequential decision-making situations such as disaster response. In this regard, strong duality is proved while making no assumptions on the problem’s convexity. This is necessary for some real-world issues, e.g., in the case of deprivation costs in the context of disaster relief, where convexity cannot be ensured. Our theoretical results imply that the problem can be exactly solved in a dual domain where it becomes convex. Based on our duality results, an augmented Lagrangian-based constraint handling mechanism is also developed for risk-averse reinforcement learning algorithms. The mechanism is proved to be theoretically convergent. Finally, we have also empirically established the convergence of the mechanism using a multi-stage disaster response relief allocation problem while using a fixed negative reward scheme as a benchmark. © 2024 by the authors.
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