Animal learning is associated with changes in the efficacy of connections between neurons. The rules that govern this plasticity can be tested in neural networks. Rules that train neural networks to map stimuli onto outputs are given by supervised learning and reinforcement learning theories. Supervised learning is efficient but biologically implausible. In contrast, reinforcement learning is biologically plausible but comparatively inefficient. It lacks a mechanism that can identify units at early processing levels that play a decisive role in the stimulus-response mapping. Here we show that this so-called credit assignment problem can be solved by a new role for attention in learning. There are two factors in our new learning scheme that ...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...
A central problem in cognitive neuroscience is how animals can manage to rapidly master complex sens...
Reward-modulated spike-timing-dependent plasticity (STDP) has recently emerged as a candidate for a ...
Animal learning is associated with changes in the efficacy of connections between neurons. The rules...
Abstract. Learning in the brain is associated with changes of connec-tion strengths between neurons....
Many theories propose that top-down attentional signals control processing in sensory cortices by mo...
htmlabstractIntelligence is our ability to learn appropriate responses to new stimuli and situations...
Intelligence is our ability to learn appropriate responses to new stimuli and situations. Neurons in...
down 2 Many theories propose that top-down attentional signals control processing in sensory cortice...
How does the brain learn those visual features that are relevant for behavior? In this article, we f...
We can learn new tasks by listening to a teacher, but we can also learn by trial-and-error. Here, we...
In recent years, ideas from the computational field of reinforcement learning have revolutionized th...
n learning from trial and error, animals need to relate behavioral decisions to environmental reinfo...
Learning by reinforcement is important in shaping animal behavior. But behavioral decision making is...
Much recent work has focused on biologically plausible variants of supervised learning algorithms. H...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...
A central problem in cognitive neuroscience is how animals can manage to rapidly master complex sens...
Reward-modulated spike-timing-dependent plasticity (STDP) has recently emerged as a candidate for a ...
Animal learning is associated with changes in the efficacy of connections between neurons. The rules...
Abstract. Learning in the brain is associated with changes of connec-tion strengths between neurons....
Many theories propose that top-down attentional signals control processing in sensory cortices by mo...
htmlabstractIntelligence is our ability to learn appropriate responses to new stimuli and situations...
Intelligence is our ability to learn appropriate responses to new stimuli and situations. Neurons in...
down 2 Many theories propose that top-down attentional signals control processing in sensory cortice...
How does the brain learn those visual features that are relevant for behavior? In this article, we f...
We can learn new tasks by listening to a teacher, but we can also learn by trial-and-error. Here, we...
In recent years, ideas from the computational field of reinforcement learning have revolutionized th...
n learning from trial and error, animals need to relate behavioral decisions to environmental reinfo...
Learning by reinforcement is important in shaping animal behavior. But behavioral decision making is...
Much recent work has focused on biologically plausible variants of supervised learning algorithms. H...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...
A central problem in cognitive neuroscience is how animals can manage to rapidly master complex sens...
Reward-modulated spike-timing-dependent plasticity (STDP) has recently emerged as a candidate for a ...