Search Results for author: Richard Everett

Found 13 papers, 3 papers with code

Developing, Evaluating and Scaling Learning Agents in Multi-Agent Environments

no code implementations22 Sep 2022 Ian Gemp, Thomas Anthony, Yoram Bachrach, Avishkar Bhoopchand, Kalesha Bullard, Jerome Connor, Vibhavari Dasagi, Bart De Vylder, Edgar Duenez-Guzman, Romuald Elie, Richard Everett, Daniel Hennes, Edward Hughes, Mina Khan, Marc Lanctot, Kate Larson, Guy Lever, SiQi Liu, Luke Marris, Kevin R. McKee, Paul Muller, Julien Perolat, Florian Strub, Andrea Tacchetti, Eugene Tarassov, Zhe Wang, Karl Tuyls

The Game Theory & Multi-Agent team at DeepMind studies several aspects of multi-agent learning ranging from computing approximations to fundamental concepts in game theory to simulating social dilemmas in rich spatial environments and training 3-d humanoids in difficult team coordination tasks.

reinforcement-learning Reinforcement Learning (RL)

Stochastic Parallelizable Eigengap Dilation for Large Graph Clustering

no code implementations29 Jul 2022 Elise van der Pol, Ian Gemp, Yoram Bachrach, Richard Everett

A core step of spectral clustering is performing an eigendecomposition of the corresponding graph Laplacian matrix (or equivalently, a singular value decomposition, SVD, of the incidence matrix).

Clustering Decision Making +3

Hidden Agenda: a Social Deduction Game with Diverse Learned Equilibria

no code implementations5 Jan 2022 Kavya Kopparapu, Edgar A. Duéñez-Guzmán, Jayd Matyas, Alexander Sasha Vezhnevets, John P. Agapiou, Kevin R. McKee, Richard Everett, Janusz Marecki, Joel Z. Leibo, Thore Graepel

A key challenge in the study of multiagent cooperation is the need for individual agents not only to cooperate effectively, but to decide with whom to cooperate.

Collaborating with Humans without Human Data

1 code implementation NeurIPS 2021 DJ Strouse, Kevin R. McKee, Matt Botvinick, Edward Hughes, Richard Everett

Here, we study the problem of how to train agents that collaborate well with human partners without using human data.

Multi-agent Reinforcement Learning

Inferring agent objectives at different scales of a complex adaptive system

no code implementations4 Dec 2017 Dieter Hendricks, Adam Cobb, Richard Everett, Jonathan Downing, Stephen J. Roberts

It has been suggested that multiple agent classes operate in this system, with a non-trivial hierarchy of top-down and bottom-up causation classes with different effective models governing each level.

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