<p>To behave adaptively, we must learn from the consequences of our actions. Doing so is difficult when the consequences of an action follow a delay. This introduces the problem of temporal credit assignment. When feedback follows a sequence of decisions, how should the individual assign credit to the intermediate actions that comprise the sequence? Research in reinforcement learning provides 2 general solutions to this problem: model-free reinforcement learning and model-based reinforcement learning. In this review, we examine connections between stimulus-response and cognitive learning theories, habitual and goal-directed control, and model-free and model-based reinforcement learning. We then consider a range of problems related to tempor...
Accounts of decision-making and its neural substrates have long posited the operation of separate, c...
We present a model for plasticity induction in reinforcement learning which is based on a cascade of...
Here we review recent developments in the application of reinforcement-learning theory as a means of...
n learning from trial and error, animals need to relate behavioral decisions to environmental reinfo...
<div><p>Empirical studies of decision making have typically assumed that value learning is governed ...
International audienceMany of the decisions we make in our everyday lives are sequential and entail ...
Animals can learn to influence their environment either by exploiting stimulus-response associa- tio...
An influential reinforcement learning framework proposes that behavior is jointly governed by model-...
When feedback follows a sequence of decisions, how do people assign credit to intermediate actions w...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...
How do we use our memories of the past to guide decisions we’ve never had to make before? Although e...
The authors propose a reinforcement-learning mechanism as a model for recurrent choice and extend it...
Reinforcement learning occurs when organisms adapt the propensities of given behaviours on the basis...
Accounts of decision-making and its neural substrates have long posited the operation of separate, c...
Accounts of decision-making and its neural substrates have long posited the operation of separate, c...
Accounts of decision-making and its neural substrates have long posited the operation of separate, c...
We present a model for plasticity induction in reinforcement learning which is based on a cascade of...
Here we review recent developments in the application of reinforcement-learning theory as a means of...
n learning from trial and error, animals need to relate behavioral decisions to environmental reinfo...
<div><p>Empirical studies of decision making have typically assumed that value learning is governed ...
International audienceMany of the decisions we make in our everyday lives are sequential and entail ...
Animals can learn to influence their environment either by exploiting stimulus-response associa- tio...
An influential reinforcement learning framework proposes that behavior is jointly governed by model-...
When feedback follows a sequence of decisions, how do people assign credit to intermediate actions w...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...
How do we use our memories of the past to guide decisions we’ve never had to make before? Although e...
The authors propose a reinforcement-learning mechanism as a model for recurrent choice and extend it...
Reinforcement learning occurs when organisms adapt the propensities of given behaviours on the basis...
Accounts of decision-making and its neural substrates have long posited the operation of separate, c...
Accounts of decision-making and its neural substrates have long posited the operation of separate, c...
Accounts of decision-making and its neural substrates have long posited the operation of separate, c...
We present a model for plasticity induction in reinforcement learning which is based on a cascade of...
Here we review recent developments in the application of reinforcement-learning theory as a means of...