The original publication is available at www.springerlink.com Abstract. In this paper we present a model of reinforcement learning (RL) which can be used to solve goal-oriented navigation tasks. Our model supposes that transitions between places are learned in the hip-pocampus (CA pyramidal cells) and associated with information coming from path-integration. The RL neural network acts as a bias on these transitions to perform action selection. RL originates in the basal ganglia and matches observations of reward-based activity in dopaminergic neu-rons. Experiments were conducted in a simulated environment. We show that our model using transitions and inspired by Q-learning performs more efficiently than traditional actor-critic models of th...
Living organisms are able to successfully perform challenging tasks such as perception, classificati...
A neural model is described of how adaptively timed reinforcement learning occurs. The adaptive timi...
International audienceDescribing cognition as cooperating learning mechanisms [1] is a fruitful way ...
The original publication is available at www.springerlink.com Abstract. In this paper we present a m...
A computational neural model that describes the competing roles of Basal Ganglia and Hippocampus in ...
A computational neural model that describes the competing roles of Basal Ganglia and Hippocampus in ...
This paper presents a model of how hippocampal place cells might be used for spatial navigation in t...
International audienceIn contrast to predictions derived from the associative learning theory, a num...
Abstract Organisms are able to learn from reward and punishment to cope with unknown situations, in ...
We develop a novel, biologically detailed neural model of reinforcement learning (RL) processes in t...
Hippocampal reverse replay is thought to contribute to learning, and particularly reinforcement lear...
Neurophysiological studies have shown that the hippocampus, striatum, and prefrontal cortex play dif...
While the neurobiology of simple and habitual choices is relatively well known, our current understa...
The basal ganglia (BG), and more specifically the striatum, have long been proposed to play an essen...
The Stimulus-Response (S-R) theory and Tolman’s Cognitive Theory of behavior control both issued fro...
Living organisms are able to successfully perform challenging tasks such as perception, classificati...
A neural model is described of how adaptively timed reinforcement learning occurs. The adaptive timi...
International audienceDescribing cognition as cooperating learning mechanisms [1] is a fruitful way ...
The original publication is available at www.springerlink.com Abstract. In this paper we present a m...
A computational neural model that describes the competing roles of Basal Ganglia and Hippocampus in ...
A computational neural model that describes the competing roles of Basal Ganglia and Hippocampus in ...
This paper presents a model of how hippocampal place cells might be used for spatial navigation in t...
International audienceIn contrast to predictions derived from the associative learning theory, a num...
Abstract Organisms are able to learn from reward and punishment to cope with unknown situations, in ...
We develop a novel, biologically detailed neural model of reinforcement learning (RL) processes in t...
Hippocampal reverse replay is thought to contribute to learning, and particularly reinforcement lear...
Neurophysiological studies have shown that the hippocampus, striatum, and prefrontal cortex play dif...
While the neurobiology of simple and habitual choices is relatively well known, our current understa...
The basal ganglia (BG), and more specifically the striatum, have long been proposed to play an essen...
The Stimulus-Response (S-R) theory and Tolman’s Cognitive Theory of behavior control both issued fro...
Living organisms are able to successfully perform challenging tasks such as perception, classificati...
A neural model is described of how adaptively timed reinforcement learning occurs. The adaptive timi...
International audienceDescribing cognition as cooperating learning mechanisms [1] is a fruitful way ...