Population coding is widely regarded as a key mechanism for achieving reliable behavioral responses in the face of neuronal variability. But in standard reinforcement learning a flip-side becomes apparent. Learning slows down with increasing population size since the global reinforcement becomes less and less related to the performance of any single neuron. We show that, in contrast, learning speeds up with increasing population size if feedback about the populationresponse modulates synaptic plasticity in addition to global reinforcement. The two feedback signals (reinforcement and population-response signal) can be encoded by ambient neurotransmitter concentrations which vary slowly, yielding a fully online plasticity rule where the learn...
We propose that correlations among neurons are generically strong enough to organize neural activity...
During neural development sensory stimulation induces long-term changes in the receptive field of th...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
Reinforcement learning in neural networks requires a mechanism for exploring new network states in r...
Population coding is widely regarded as a key mechanism for achieving reliable behavioral decisions....
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Learning by reinforcement is important in shaping animal behavior. But behavioral decision making is...
We investigate a recently proposed model for decision learning in a population of spiking neurons wh...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Changes of synaptic connections between neurons are thought to be the physiological basis of learnin...
Biological neurons communicate primarily via a spiking process. Recurrently connected spiking neural...
AbstractIt is well-known that chemical synaptic transmission is an unreliable process, but the funct...
Learning agents, whether natural or artificial, must update their internal parameters in order to im...
While artificial machine learning systems achieve superhuman performance in specific tasks such as l...
We propose that correlations among neurons are generically strong enough to organize neural activity...
During neural development sensory stimulation induces long-term changes in the receptive field of th...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
Reinforcement learning in neural networks requires a mechanism for exploring new network states in r...
Population coding is widely regarded as a key mechanism for achieving reliable behavioral decisions....
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Learning by reinforcement is important in shaping animal behavior. But behavioral decision making is...
We investigate a recently proposed model for decision learning in a population of spiking neurons wh...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Changes of synaptic connections between neurons are thought to be the physiological basis of learnin...
Biological neurons communicate primarily via a spiking process. Recurrently connected spiking neural...
AbstractIt is well-known that chemical synaptic transmission is an unreliable process, but the funct...
Learning agents, whether natural or artificial, must update their internal parameters in order to im...
While artificial machine learning systems achieve superhuman performance in specific tasks such as l...
We propose that correlations among neurons are generically strong enough to organize neural activity...
During neural development sensory stimulation induces long-term changes in the receptive field of th...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...