These were my suggestions for "virtual presence" #hybrid in 2016! IMO you should never speak at a meeting without real presence, meaning you can adjust your talk to the talks that went before you. You don't have to be physically present, but mentally, yes. #aamas

Draft rules for virtual presen...
Draft rules for virtual presence at AISB 2017

artificial and natural intelligence, including politics, policy, ethics and security

Robust Counterfactual Inference in Markov Decision Processes
Jessica Lally, Milad Kazemi, Nicola Paoletti prizewinning or at least nominated paper https://arxiv.org/abs/2502.13731 #aamas
Robust Counterfactual Inference in Markov Decision Processes

This paper addresses a key limitation in existing counterfactual inference methods for Markov Decision Processes (MDPs). Current approaches assume a specific causal model to make counterfactuals identifiable. However, there are usually many causal models that align with the observational and interventional distributions of an MDP, each yielding different counterfactual distributions, so fixing a particular causal model limits the validity (and usefulness) of counterfactual inference. We propose a novel non-parametric approach that computes tight bounds on counterfactual transition probabilities across all compatible causal models. Unlike previous methods that require solving prohibitively large optimisation problems (with variables that grow exponentially in the size of the MDP), our approach provides closed-form expressions for these bounds, making computation highly efficient and scalable for non-trivial MDPs. Once such an interval counterfactual MDP is constructed, our method identifies robust counterfactual policies that optimise the worst-case reward w.r.t. the uncertain interval MDP probabilities. We evaluate our method on various case studies, demonstrating improved robustness over existing methods.

arXiv.org