Equipping artificial agents with useful exploration mechanisms remains a challenge to this day. Humans, on the other hand, seem to manage the trade-off between exploration and exploitation effortlessly. In the present article, we put forward the hypothesis that they accomplish this by making optimal use of limited computational resources. We study this hypothesis by meta-learning reinforcement learning algorithms that sacrifice performance for a shorter description length. The emerging class of models captures human exploration behavior better than previously considered approaches, such as Boltzmann exploration, upper confidence bound algorithms, and Thompson sampling. We additionally demonstrate that changes in description length produce t...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
Algorithms for approximate Bayesian inference, such as Monte Carlo methods, provide one source of m...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
Equipping artificial agents with useful exploration mechanisms remains a challenge to this day. Huma...
Equipping artificial agents with useful exploration mechanisms remains a challenge to this day. Huma...
Balancing exploration and exploitation is one of the central problems in reinforcement learning. We ...
International audienceFast adaptation to changes in the environment requires both natural and artifi...
International audienceFast adaptation to changes in the environment requires both natural and artifi...
Artificial intelligence algorithms are capable of fantastic exploits, yet they are still grossly ine...
Backpropagation has been regarded as the most favorable algorithm for training artificial neural net...
A hallmark of intelligence is the ability to autonomously learn new flexible, cognitive behaviors - ...
Many types of intelligent behavior can be framed as a search problem, where an individual must explo...
Many types of intelligent behavior can be framed as a search problem, where an individual must explo...
learning from past experiences helps orient the exploration of unknown environments. yet how we lear...
Computational neuroscience is in the midst of constructing a new framework for understanding the bra...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
Algorithms for approximate Bayesian inference, such as Monte Carlo methods, provide one source of m...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
Equipping artificial agents with useful exploration mechanisms remains a challenge to this day. Huma...
Equipping artificial agents with useful exploration mechanisms remains a challenge to this day. Huma...
Balancing exploration and exploitation is one of the central problems in reinforcement learning. We ...
International audienceFast adaptation to changes in the environment requires both natural and artifi...
International audienceFast adaptation to changes in the environment requires both natural and artifi...
Artificial intelligence algorithms are capable of fantastic exploits, yet they are still grossly ine...
Backpropagation has been regarded as the most favorable algorithm for training artificial neural net...
A hallmark of intelligence is the ability to autonomously learn new flexible, cognitive behaviors - ...
Many types of intelligent behavior can be framed as a search problem, where an individual must explo...
Many types of intelligent behavior can be framed as a search problem, where an individual must explo...
learning from past experiences helps orient the exploration of unknown environments. yet how we lear...
Computational neuroscience is in the midst of constructing a new framework for understanding the bra...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...
Algorithms for approximate Bayesian inference, such as Monte Carlo methods, provide one source of m...
International audienceFast adaptation to changes in the environment requires agents (animals, robots...