Despite many debates in the first half of the twentieth century, it is now largely a truism that humans and other animals build models of their environments and use them for prediction and control. However, model-based (MB) reasoning presents severe computational challenges. Alternative, computationally simpler, model-free (MF) schemes have been suggested in the reinforcement learning literature, and have afforded influential accounts of behavioural and neural data. Here, we study the realization of MB calculations, and the ways that this might be woven together with MF values and evaluation methods. There are as yet mostly only hints in the literature as to the resulting tapestry, so we offer more preview than review
National audienceAccounting for behavioural capabilities and flexibilities experimentally observed i...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
This paper compares direct reinforcement learning (no explicit model) and model-based reinforcement ...
Humans and animals are capable of evaluating actions by considering their long-run future rewards th...
Humans and animals are capable of evaluating actions by considering their long-run future rewards th...
Substantial recent work has explored multiple mechanisms of decision-making in humans and other anim...
<div><p>Many accounts of decision making and reinforcement learning posit the existence of two disti...
<div><p>Model-based and model-free reinforcement learning (RL) have been suggested as algorithmic re...
Model-free (MF) reinforcement learning (RL) algorithms account for a wealth of neuroscientific and b...
Reinforcement learning (RL) is a framework of particular importance to psychology, neuroscience and ...
<div><p>Fitting models to behavior is commonly used to infer the latent computational factors respon...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Contemporary reinforcement learning (RL) theory suggests that potential choices can be evaluated by ...
Contemporary reinforcement learning (RL) theory suggests that potential choices can be evaluated by ...
Learning theorists posit two reinforcement learning systems: model-free and model-based. Model-based...
National audienceAccounting for behavioural capabilities and flexibilities experimentally observed i...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
This paper compares direct reinforcement learning (no explicit model) and model-based reinforcement ...
Humans and animals are capable of evaluating actions by considering their long-run future rewards th...
Humans and animals are capable of evaluating actions by considering their long-run future rewards th...
Substantial recent work has explored multiple mechanisms of decision-making in humans and other anim...
<div><p>Many accounts of decision making and reinforcement learning posit the existence of two disti...
<div><p>Model-based and model-free reinforcement learning (RL) have been suggested as algorithmic re...
Model-free (MF) reinforcement learning (RL) algorithms account for a wealth of neuroscientific and b...
Reinforcement learning (RL) is a framework of particular importance to psychology, neuroscience and ...
<div><p>Fitting models to behavior is commonly used to infer the latent computational factors respon...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Contemporary reinforcement learning (RL) theory suggests that potential choices can be evaluated by ...
Contemporary reinforcement learning (RL) theory suggests that potential choices can be evaluated by ...
Learning theorists posit two reinforcement learning systems: model-free and model-based. Model-based...
National audienceAccounting for behavioural capabilities and flexibilities experimentally observed i...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
This paper compares direct reinforcement learning (no explicit model) and model-based reinforcement ...