Model-free learning creates stimulus-response associations, but are there limits to the types of stimuli it can operate over? Most experiments on reward-learning have used discrete sensory stimuli, but there is no algorithmic reason to restrict model-free learning to external stimuli, and theories suggest that model-free processes may operate over highly abstract concepts and goals. Our study aimed to determine whether model-free learning can operate over environmental states defined by information held in working memory. We compared the data from human participants in two conditions that presented learning cues either simultaneously or as a temporal sequence that required working memory. There was a significant influence of model-free lear...
Learning theorists posit two reinforcement learning systems: model-free and model-based. Model-based...
AbstractCombining model-based and model-free reinforcement learning systems in robotic cognitive arc...
SummaryReinforcement learning (RL) uses sequential experience with situations (“states”) and outcome...
Model-free learning creates stimulus-response associations, but are there limits to the types of sti...
Model-free (MF) reinforcement learning (RL) algorithms account for a wealth of neuroscientific and b...
Learning to make rewarding choices in response to stimuli depends on a slow but steady process, rein...
Substantial recent work has explored multiple mechanisms of decision-making in humans and other anim...
Distinct model-free and model-based learning processes are thought to drive both typical and dysfunc...
Humans and animals are capable of evaluating actions by considering their long-run future rewards th...
A standard assumption in neuroscience is that low-effort model-free learning is automatic and contin...
Humans and animals are capable of evaluating actions by considering their long-run future rewards th...
Distinct model-free and model-based learning processes are thought to drive both typical and dysfunc...
<div><p>Model-based and model-free reinforcement learning (RL) have been suggested as algorithmic re...
A major open question is whether computational strategies thought to be used during experiential lea...
Reinforcement learning (RL) in simple instrumental tasks is usually modeled as a monolithic process ...
Learning theorists posit two reinforcement learning systems: model-free and model-based. Model-based...
AbstractCombining model-based and model-free reinforcement learning systems in robotic cognitive arc...
SummaryReinforcement learning (RL) uses sequential experience with situations (“states”) and outcome...
Model-free learning creates stimulus-response associations, but are there limits to the types of sti...
Model-free (MF) reinforcement learning (RL) algorithms account for a wealth of neuroscientific and b...
Learning to make rewarding choices in response to stimuli depends on a slow but steady process, rein...
Substantial recent work has explored multiple mechanisms of decision-making in humans and other anim...
Distinct model-free and model-based learning processes are thought to drive both typical and dysfunc...
Humans and animals are capable of evaluating actions by considering their long-run future rewards th...
A standard assumption in neuroscience is that low-effort model-free learning is automatic and contin...
Humans and animals are capable of evaluating actions by considering their long-run future rewards th...
Distinct model-free and model-based learning processes are thought to drive both typical and dysfunc...
<div><p>Model-based and model-free reinforcement learning (RL) have been suggested as algorithmic re...
A major open question is whether computational strategies thought to be used during experiential lea...
Reinforcement learning (RL) in simple instrumental tasks is usually modeled as a monolithic process ...
Learning theorists posit two reinforcement learning systems: model-free and model-based. Model-based...
AbstractCombining model-based and model-free reinforcement learning systems in robotic cognitive arc...
SummaryReinforcement learning (RL) uses sequential experience with situations (“states”) and outcome...