In natural data, the class and intensity of stimuli are correlated. Current machine learning algorithms ignore this ubiquitous statistical property of stimuli, usually by requiring normalized inputs. From a biological perspective, it remains unclear how neural circuits may account for these dependencies in inference and learning. Here, we use a probabilistic framework to model class-specific intensity variations, and we derive approximate inference and online learning rules which reflect common hallmarks of neural computation. Concretely, we show that a neural circuit equipped with specific forms of synaptic and intrinsic plasticity (IP) can learn the class-specific features and intensities of stimuli simultaneously. Our model provides a no...
Learning how neural activity in the brain leads to the behavior we exhibit is one of the fundamental...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...
We use unsupervised probabilistic machine learning ideas to try to ex-plain the kinds of learning ob...
Experience constantly shapes neural circuits through a variety of plasticity mechanisms. While the f...
Experience constantly shapes neural circuits through a variety of plasticity mechanisms. While the f...
The capability of a living organism to process stimuli with nontrivial intensity distributions canno...
How can neural networks learn to represent information optimally? We answer this question by derivin...
Intrinsic plasticity (IP) refers to a neuron’s ability to regulate its firing activity by adapting i...
AbstractThis paper assumes that cortical circuits have evolved to enable inference about the causes ...
Characterizing the relation between weight structure and input/output statistics is fundamental for ...
Learning and memory operations in neural circuits are believed to involve molecular cascades of syna...
We have recently demonstrated the emergence of dynamic feature sensitivity through exposure to forma...
Abstract—We present a real-time model of learning in the auditory cortex that is trained using real-...
Synaptic plasticity is often explored as a form of unsupervised adaptation in cortical microcircuits...
Much experimental evidence suggests that during decision making neural circuits accumulate evidence ...
Learning how neural activity in the brain leads to the behavior we exhibit is one of the fundamental...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...
We use unsupervised probabilistic machine learning ideas to try to ex-plain the kinds of learning ob...
Experience constantly shapes neural circuits through a variety of plasticity mechanisms. While the f...
Experience constantly shapes neural circuits through a variety of plasticity mechanisms. While the f...
The capability of a living organism to process stimuli with nontrivial intensity distributions canno...
How can neural networks learn to represent information optimally? We answer this question by derivin...
Intrinsic plasticity (IP) refers to a neuron’s ability to regulate its firing activity by adapting i...
AbstractThis paper assumes that cortical circuits have evolved to enable inference about the causes ...
Characterizing the relation between weight structure and input/output statistics is fundamental for ...
Learning and memory operations in neural circuits are believed to involve molecular cascades of syna...
We have recently demonstrated the emergence of dynamic feature sensitivity through exposure to forma...
Abstract—We present a real-time model of learning in the auditory cortex that is trained using real-...
Synaptic plasticity is often explored as a form of unsupervised adaptation in cortical microcircuits...
Much experimental evidence suggests that during decision making neural circuits accumulate evidence ...
Learning how neural activity in the brain leads to the behavior we exhibit is one of the fundamental...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...
We use unsupervised probabilistic machine learning ideas to try to ex-plain the kinds of learning ob...