Humans are capable of correcting their actions based on actions performed in the past, and this ability enables them to adapt to a changing environment. The computational field of reinforcement learning (RL) has provided a powerful explanation for understanding such processes. Recently, the dual learning system, modeled as a hybrid model that incorporates value update based on reward-prediction error and learning rate modulation based on the surprise signal, has gained attention as a model for explaining various neural signals. However, the functional significance of the hybrid model has not been established. In the present study, we used computer simulation in a reversal learning task to address functional significance. The hybrid model wa...
Reversal learning paradigms are widely used assays of behavioral flexibility with their probabilisti...
Reinforcement learning (RL) in simple instrumental tasks is usually modeled as a monolithic process ...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Dual learning processes underlying human decision-making in reversal learning tasks: functional sign...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Cognitive flexibility helps us to navigate through our ever-changing environment and has often been ...
Learning how to reach a reward over long series of actions is a remarkable capability of humans, and...
Computational models of learning have proved largely successful in characterising potentialmechanism...
from simple to complex • Reversal learning illustrates a very simple yet computationally challenging...
Learning how to reach a reward over long series of actions is a remarkable capability of humans, and...
Computational models of learning have proved largely successful in characterizing potential mechanis...
This repository contains re-test data for a reversal learning task completed by 150 participants, an...
Abstract: Cognitive flexibility is the ability to adaptively change behaviors in the face of dynamic...
2019-04-28In this thesis, I used recently-developed Bayesian joint modeling methods to estimate lear...
The ability to transfer knowledge across tasks and generalize to novel ones is an important hallmark...
Reversal learning paradigms are widely used assays of behavioral flexibility with their probabilisti...
Reinforcement learning (RL) in simple instrumental tasks is usually modeled as a monolithic process ...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Dual learning processes underlying human decision-making in reversal learning tasks: functional sign...
Computational models of learning have proved largely successful in characterizing potential mechanis...
Cognitive flexibility helps us to navigate through our ever-changing environment and has often been ...
Learning how to reach a reward over long series of actions is a remarkable capability of humans, and...
Computational models of learning have proved largely successful in characterising potentialmechanism...
from simple to complex • Reversal learning illustrates a very simple yet computationally challenging...
Learning how to reach a reward over long series of actions is a remarkable capability of humans, and...
Computational models of learning have proved largely successful in characterizing potential mechanis...
This repository contains re-test data for a reversal learning task completed by 150 participants, an...
Abstract: Cognitive flexibility is the ability to adaptively change behaviors in the face of dynamic...
2019-04-28In this thesis, I used recently-developed Bayesian joint modeling methods to estimate lear...
The ability to transfer knowledge across tasks and generalize to novel ones is an important hallmark...
Reversal learning paradigms are widely used assays of behavioral flexibility with their probabilisti...
Reinforcement learning (RL) in simple instrumental tasks is usually modeled as a monolithic process ...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...