Reinforcement learning in artificial and biological systems

EO Neftci, BB Averbeck - Nature Machine Intelligence, 2019 - nature.com
There is and has been a fruitful flow of concepts and ideas between studies of learning in
biological and artificial systems. Much early work that led to the development of …

Reinforcement Learning: An Introduction. By Richard's Sutton

AG Barto - SIAM Rev, 2021 - SIAM
Reinforcement learning (RL) is a set of mathematical methods and algorithms that can be
applied to a wide array of problems and plays a central role in machine learning. The aim of …

Reinforcement learning: Computational theory and biological mechanisms

K Doya - HFSP journal, 2007 - Taylor & Francis
Reinforcement learning is a computational framework for an active agent to learn behaviors
on the basis of a scalar reward signal. The agent can be an animal, a human, or an artificial …

Reinforcement learning control

AG Barto - Current opinion in neurobiology, 1994 - Elsevier
Reinforcement learning refers to improving performance through trial-and-error. Despite
recent progress in developing artificial learning systems, including new learning methods for …

Reinforcement learning in robotics: A survey

J Kober, JA Bagnell, J Peters - The International Journal of …, 2013 - journals.sagepub.com
Reinforcement learning offers to robotics a framework and set of tools for the design of
sophisticated and hard-to-engineer behaviors. Conversely, the challenges of robotic …

Efficient reinforcement learning: computational theories, neuroscience and robotics

M Kawato, K Samejima - Current opinion in neurobiology, 2007 - Elsevier
Reinforcement learning algorithms have provided some of the most influential computational
theories for behavioral learning that depends on reward and penalty. After briefly reviewing …

Reinforcement learning and its connections with neuroscience and psychology

A Subramanian, S Chitlangia, V Baths - Neural Networks, 2022 - Elsevier
Reinforcement learning methods have recently been very successful at performing complex
sequential tasks like playing Atari games, Go and Poker. These algorithms have …

[图书][B] Reinforcement learning for robots using neural networks

LJ Lin - 1992 - search.proquest.com
Reinforcement learning agents are adaptive, reactive, and self-supervised. The aim of this
dissertation is to extend the state of the art of reinforcement learning and enable its …

Computational models of reinforcement learning: the role of dopamine as a reward signal

RD Samson, MJ Frank, JM Fellous - Cognitive neurodynamics, 2010 - Springer
Reinforcement learning is ubiquitous. Unlike other forms of learning, it involves the
processing of fast yet content-poor feedback information to correct assumptions about the …

Reinforcement learning

AG Barto - Neural systems for control, 1997 - Elsevier
Reinforcement learning refers to ways of improving performance through trial-and-error
experience. Despite recent progress in developing artificial learning systems, including new …