The brain performs various cognitive functions by learning the spatiotemporal salient features of the environment. This learning requires unsupervised segmentation of hierarchically organized spike sequences, but the underlying neural mechanism is only poorly understood. Here, we show that a recurrent gated network of neurons with dendrites can efficiently solve difficult segmentation tasks. In this model, multiplicative recurrent connections learn a context-dependent gating of dendro-somatic information transfers to minimize error in the prediction of somatic responses by the dendrites. Consequently, these connections filter the redundant input features represented by the dendrites but unnecessary in the given context. The model was tested...
The dendritic tree of neurons plays an important role in information processing in the brain. While ...
Neuron models with explicit dendritic dynamics have shed light on mechanisms for coincidence detecti...
Bahlmann J, Schubotz RI, Mueller JL, Koester D, Friederici AD. Neural circuits of hierarchical visuo...
The brain identifies potentially salient features within continuous information streams to process h...
The brain can efficiently learn a wide range of tasks, motivating the search for biologically inspir...
Sequence learning, prediction and generation has been proposed to be the universal computation perfo...
Sequence learning, prediction and replay have been proposed to constitute the universal computations...
Sequence learning, prediction and replay have been proposed to constitute the universal computations...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modeli...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modelin...
While sensory representations in the brain depend on context, it remains unclear how such modulation...
<div><p>Experiencing certain events triggers the acquisition of new memories. Although necessary, ho...
Despite significant progress in our understanding of the brain at both microscopic and macroscopic s...
Deep learning has seen remarkable developments over the last years, many of them inspired by neurosc...
A major challenge in neuroscience is to reverse engineer the brain and understand its information pr...
The dendritic tree of neurons plays an important role in information processing in the brain. While ...
Neuron models with explicit dendritic dynamics have shed light on mechanisms for coincidence detecti...
Bahlmann J, Schubotz RI, Mueller JL, Koester D, Friederici AD. Neural circuits of hierarchical visuo...
The brain identifies potentially salient features within continuous information streams to process h...
The brain can efficiently learn a wide range of tasks, motivating the search for biologically inspir...
Sequence learning, prediction and generation has been proposed to be the universal computation perfo...
Sequence learning, prediction and replay have been proposed to constitute the universal computations...
Sequence learning, prediction and replay have been proposed to constitute the universal computations...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modeli...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modelin...
While sensory representations in the brain depend on context, it remains unclear how such modulation...
<div><p>Experiencing certain events triggers the acquisition of new memories. Although necessary, ho...
Despite significant progress in our understanding of the brain at both microscopic and macroscopic s...
Deep learning has seen remarkable developments over the last years, many of them inspired by neurosc...
A major challenge in neuroscience is to reverse engineer the brain and understand its information pr...
The dendritic tree of neurons plays an important role in information processing in the brain. While ...
Neuron models with explicit dendritic dynamics have shed light on mechanisms for coincidence detecti...
Bahlmann J, Schubotz RI, Mueller JL, Koester D, Friederici AD. Neural circuits of hierarchical visuo...