Abstract: Cognitive flexibility is the ability to adaptively change behaviors in the face of dynamically changing circumstances. To explore the neural basis and computational account of this ability, a probabilistic reversal learning task was employed as the experimental paradigm. Recent studies suggest that a subject may utilize not only a reward history but also a “state representation” of a task to successfully solve one. However, the specific advantages or impact of state representations in task solving are still not fully understood. In this study, we investigated this matter by computer simulations, in which we used two types of reinforcement learning models, a model with state representations and one without. As a result of the simul...
(a)–(c) show the performance of an agent with a value of model decay determined by state-action pred...
Researchers use a variety of behavioral tasks to analyze the effect of biological manipulations on m...
SummaryReinforcement learning (RL) uses sequential experience with situations (“states”) and outcome...
Cognitive flexibility helps us to navigate through our ever-changing environment and has often been ...
The goal of temporal difference (TD) reinforcement learning is to maximize outcomes and improve futu...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1996. Published in the Techni...
It is widely known that reinforcement learning systems in the brain contribute to learning via inter...
Researchers use a variety of behavioral tasks to analyze the effect of biological manipulations on m...
Computational models of learning have proved largely successful in characterizing potential mechanis...
“This material is presented to ensure timely dissemination of scholarly and technical work. Copyrigh...
Humans are capable of correcting their actions based on actions performed in the past, and this abil...
The problem of selecting the right state-representation in a reinforcement learning problem is consi...
In this thesis, two well studied subjects in behavior analysis are computationally modeled; formatio...
<p>In most problem-solving activities, feedback is received at the end of an action sequence. This c...
Treball fi de màster de: Master in Cognitive Systems and Interactive MediaDirectors: Adrián Fernánde...
(a)–(c) show the performance of an agent with a value of model decay determined by state-action pred...
Researchers use a variety of behavioral tasks to analyze the effect of biological manipulations on m...
SummaryReinforcement learning (RL) uses sequential experience with situations (“states”) and outcome...
Cognitive flexibility helps us to navigate through our ever-changing environment and has often been ...
The goal of temporal difference (TD) reinforcement learning is to maximize outcomes and improve futu...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1996. Published in the Techni...
It is widely known that reinforcement learning systems in the brain contribute to learning via inter...
Researchers use a variety of behavioral tasks to analyze the effect of biological manipulations on m...
Computational models of learning have proved largely successful in characterizing potential mechanis...
“This material is presented to ensure timely dissemination of scholarly and technical work. Copyrigh...
Humans are capable of correcting their actions based on actions performed in the past, and this abil...
The problem of selecting the right state-representation in a reinforcement learning problem is consi...
In this thesis, two well studied subjects in behavior analysis are computationally modeled; formatio...
<p>In most problem-solving activities, feedback is received at the end of an action sequence. This c...
Treball fi de màster de: Master in Cognitive Systems and Interactive MediaDirectors: Adrián Fernánde...
(a)–(c) show the performance of an agent with a value of model decay determined by state-action pred...
Researchers use a variety of behavioral tasks to analyze the effect of biological manipulations on m...
SummaryReinforcement learning (RL) uses sequential experience with situations (“states”) and outcome...