Historically, artificial intelligence has drawn much inspiration from neuroscience to fuel advances in the field. However, current progress in reinforcement learning is largely focused on benchmark problems that fail to capture many of the aspects that are of interest in neuroscience today. We illustrate this point by extending a T-maze task from neuroscience for use with reinforcement learning algorithms, and show that state-of-the-art algorithms are not capable of solving this problem. Finally, we point out where insights from neuroscience could help explain some of the issues encountered
SummaryWhen an organism receives a reward, it is crucial to know which of many candidate actions cau...
Neuroscience research is undergoing a minor revolution. Recent advances in machine learning and arti...
Animal learning is based on a process of trial and error. This is a fundamental observation in behav...
Historically, artificial intelligence has drawn much inspiration from neuroscience to fuel advances ...
Artificial intelligence algorithms are capable of fantastic exploits, yet they are still grossly ine...
Researchers have proposed that deep learning, which is providing important progress in a wide range ...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
The fields of biologically inspired artificial intelligence, neuroscience, and psychology have had e...
Neural computational accounts of reward-learning have been dominated by the hypothesis that dopamine...
Successful application of reinforcement learning algorithms often involves considerable hand-craftin...
Neural computational accounts of reward-learning have been dominated by the hypothesis that dopamine...
SummaryWhen an organism receives a reward, it is crucial to know which of many candidate actions cau...
Neuroscience research is undergoing a minor revolution. Recent advances in machine learning and arti...
Animal learning is based on a process of trial and error. This is a fundamental observation in behav...
Historically, artificial intelligence has drawn much inspiration from neuroscience to fuel advances ...
Artificial intelligence algorithms are capable of fantastic exploits, yet they are still grossly ine...
Researchers have proposed that deep learning, which is providing important progress in a wide range ...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
Systems neuroscience seeks explanations for how the brain implements a wide variety of perceptual, c...
The fields of biologically inspired artificial intelligence, neuroscience, and psychology have had e...
Neural computational accounts of reward-learning have been dominated by the hypothesis that dopamine...
Successful application of reinforcement learning algorithms often involves considerable hand-craftin...
Neural computational accounts of reward-learning have been dominated by the hypothesis that dopamine...
SummaryWhen an organism receives a reward, it is crucial to know which of many candidate actions cau...
Neuroscience research is undergoing a minor revolution. Recent advances in machine learning and arti...
Animal learning is based on a process of trial and error. This is a fundamental observation in behav...