Towards A Research Community In Interpretable Reinforcement Learning: The Interppol Workshop
2024 Β· Hector Kohler, Quentin Delfosse, Paul Festor, et al.
Abstract
Embracing the pursuit of intrinsically explainable reinforcement learning raises crucial questions: what distinguishes explainability from interpretability? Should explainable and interpretable agents be developed outside of domains where transparency is imperative? What advantages do interpretable policies offer over neural networks? How can we rigorously define and measure interpretability in policies, without user studies? What reinforcement learning paradigms,are the most suited to develop interpretable agents? Can Markov Decision Processes integrate interpretable state representations? In addition to motivate an Interpretable RL community centered around the aforementioned questions, we propose the first venue dedicated to Interpretable RL: the InterpPol Workshop.
Authors
(none)
Tags
Stats
Related papers
- A Survey On Interpretable Reinforcement Learning (2021)0.00
- From Explainability To Interpretability: Interpretable Policies In Reinforcement Learning Via Model Explanation (2025)0.00
- Evaluating Interpretable Reinforcement Learning By Distilling Policies Into Programs (2025)0.00
- Social Interpretable Reinforcement Learning (2024)3.58
- "so, Tell Me About Your Policy...": Distillation Of Interpretable Policies From Deep Reinforcement Learning Agents (2025)0.00
- Three Pathways To Neurosymbolic Reinforcement Learning With Interpretable Model And Policy Networks (2024)0.00
- A Survey On Explainable Reinforcement Learning: Concepts, Algorithms, Challenges (2022)0.00
- Interpretable By Design: Query-specific Neural Modules For Explainable Reinforcement Learning (2025)0.00