We investigate a recently proposed model for decision learning in a population of spiking neurons where synaptic plasticity is modulated by a population signal in addition to reward feedback. For the basic model, binary population decision making based on spike/no-spike coding, a detailed computational analysis is given about how learning performance depends on population size and task complexity. Next, we extend the basic model to n-ary decision making and show that it can also be used in conjunction with other population codes such as rate or even latency coding
There is a wealth of approaches to understanding the ways that populations of neurons encode static,...
When making a decision, one must first accumulate evidence, often over time, and then select the app...
International audienceCompelling behavioral evidence suggests that humans can make optimal decisions...
Population coding is widely regarded as a key mechanism for achieving reliable behavioral decisions....
Humans and animals face decision tasks in an uncertain multi-agent environment where an agent’s stra...
Humans and animals face decision tasks in an uncertain multi-agent environment where an agent's stra...
Although it is widely believed that reinforcement learning is a suitable tool for describing behavio...
Learning by reinforcement is important in shaping animal behavior, and in particular in behavioral d...
Reward-modulated spike timing dependent plasticity (STDP) combines unsupervised STDP with a reinforc...
Reward-modulated spike timing dependent plasticity (STDP) combines unsupervised STDP with a reinforc...
Population coding is widely regarded as a key mechanism for achieving reliable behavioral responses ...
We consider a statistical framework for learning in a class of networks of spiking neurons. Our aim ...
Learning agents, whether natural or artificial, must update their internal parameters in order to im...
We propose a theoretical framework for efficient representation of time-varying sensory information ...
International audienceNetworks based on coordinated spike coding can encode information with high ef...
There is a wealth of approaches to understanding the ways that populations of neurons encode static,...
When making a decision, one must first accumulate evidence, often over time, and then select the app...
International audienceCompelling behavioral evidence suggests that humans can make optimal decisions...
Population coding is widely regarded as a key mechanism for achieving reliable behavioral decisions....
Humans and animals face decision tasks in an uncertain multi-agent environment where an agent’s stra...
Humans and animals face decision tasks in an uncertain multi-agent environment where an agent's stra...
Although it is widely believed that reinforcement learning is a suitable tool for describing behavio...
Learning by reinforcement is important in shaping animal behavior, and in particular in behavioral d...
Reward-modulated spike timing dependent plasticity (STDP) combines unsupervised STDP with a reinforc...
Reward-modulated spike timing dependent plasticity (STDP) combines unsupervised STDP with a reinforc...
Population coding is widely regarded as a key mechanism for achieving reliable behavioral responses ...
We consider a statistical framework for learning in a class of networks of spiking neurons. Our aim ...
Learning agents, whether natural or artificial, must update their internal parameters in order to im...
We propose a theoretical framework for efficient representation of time-varying sensory information ...
International audienceNetworks based on coordinated spike coding can encode information with high ef...
There is a wealth of approaches to understanding the ways that populations of neurons encode static,...
When making a decision, one must first accumulate evidence, often over time, and then select the app...
International audienceCompelling behavioral evidence suggests that humans can make optimal decisions...