Reinforcement learning, fast and slow
Deep reinforcement learning (RL) methods have driven impressive advances in artificial
intelligence in recent years, exceeding human performance in domains ranging from Atari to …
intelligence in recent years, exceeding human performance in domains ranging from Atari to …
A social path to human-like artificial intelligence
EA Duéñez-Guzmán, S Sadedin, JX Wang… - Nature Machine …, 2023 - nature.com
Traditionally, cognitive and computer scientists have viewed intelligence solipsistically, as a
property of unitary agents devoid of social context. Given the success of contemporary …
property of unitary agents devoid of social context. Given the success of contemporary …
Foundational challenges in assuring alignment and safety of large language models
This work identifies 18 foundational challenges in assuring the alignment and safety of large
language models (LLMs). These challenges are organized into three different categories …
language models (LLMs). These challenges are organized into three different categories …
Multi-agent deep reinforcement learning: a survey
S Gronauer, K Diepold - Artificial Intelligence Review, 2022 - Springer
The advances in reinforcement learning have recorded sublime success in various domains.
Although the multi-agent domain has been overshadowed by its single-agent counterpart …
Although the multi-agent domain has been overshadowed by its single-agent counterpart …
Shared experience actor-critic for multi-agent reinforcement learning
F Christianos, L Schäfer… - Advances in neural …, 2020 - proceedings.neurips.cc
Exploration in multi-agent reinforcement learning is a challenging problem, especially in
environments with sparse rewards. We propose a general method for efficient exploration by …
environments with sparse rewards. We propose a general method for efficient exploration by …
Spurious normativity enhances learning of compliance and enforcement behavior in artificial agents
How do societies learn and maintain social norms? Here we use multiagent reinforcement
learning to investigate the learning dynamics of enforcement and compliance behaviors …
learning to investigate the learning dynamics of enforcement and compliance behaviors …
Social diversity and social preferences in mixed-motive reinforcement learning
Recent research on reinforcement learning in pure-conflict and pure-common interest
games has emphasized the importance of population heterogeneity. In contrast, studies of …
games has emphasized the importance of population heterogeneity. In contrast, studies of …
A review of cooperation in multi-agent learning
Cooperation in multi-agent learning (MAL) is a topic at the intersection of numerous
disciplines, including game theory, economics, social sciences, and evolutionary biology …
disciplines, including game theory, economics, social sciences, and evolutionary biology …
Evolutionary reinforcement learning: A survey
Reinforcement learning (RL) is a machine learning approach that trains agents to maximize
cumulative rewards through interactions with environments. The integration of RL with deep …
cumulative rewards through interactions with environments. The integration of RL with deep …
Proximal learning with opponent-learning awareness
Abstract Learning With Opponent-Learning Awareness (LOLA)(Foerster et al.[2018a]) is a
multi-agent reinforcement learning algorithm that typically learns reciprocity-based …
multi-agent reinforcement learning algorithm that typically learns reciprocity-based …