Search Results for author: Andrei Lupu

Found 6 papers, 4 papers with code

Rainbow Teaming: Open-Ended Generation of Diverse Adversarial Prompts

no code implementations26 Feb 2024 Mikayel Samvelyan, Sharath Chandra Raparthy, Andrei Lupu, Eric Hambro, Aram H. Markosyan, Manish Bhatt, Yuning Mao, Minqi Jiang, Jack Parker-Holder, Jakob Foerster, Tim Rocktäschel, Roberta Raileanu

As large language models (LLMs) become increasingly prevalent across many real-world applications, understanding and enhancing their robustness to user inputs is of paramount importance.

Question Answering

Self-Explaining Deviations for Coordination

no code implementations13 Jul 2022 Hengyuan Hu, Samuel Sokota, David Wu, Anton Bakhtin, Andrei Lupu, Brandon Cui, Jakob N. Foerster

Fully cooperative, partially observable multi-agent problems are ubiquitous in the real world.

Grounding Aleatoric Uncertainty for Unsupervised Environment Design

1 code implementation11 Jul 2022 Minqi Jiang, Michael Dennis, Jack Parker-Holder, Andrei Lupu, Heinrich Küttler, Edward Grefenstette, Tim Rocktäschel, Jakob Foerster

Problematically, in partially-observable or stochastic settings, optimal policies may depend on the ground-truth distribution over aleatoric parameters of the environment in the intended deployment setting, while curriculum learning necessarily shifts the training distribution.

Reinforcement Learning (RL)

Gifting in multi-agent reinforcement learning

1 code implementation AAMAS '20: Proceedings of the 19th International Conference on Autonomous Agents and MultiAgent Systems 2020 Andrei Lupu, Doina Precup

Multi-agent reinforcement learning has generally been studied under an assumption inherited from classical reinforcement learning: that the reward function is the exclusive property of the environment, and is only altered by external factors.

Multi-agent Reinforcement Learning reinforcement-learning +1

Option-Critic in Cooperative Multi-agent Systems

1 code implementation28 Nov 2019 Jhelum Chakravorty, Nadeem Ward, Julien Roy, Maxime Chevalier-Boisvert, Sumana Basu, Andrei Lupu, Doina Precup

In this paper, we investigate learning temporal abstractions in cooperative multi-agent systems, using the options framework (Sutton et al, 1999).

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