Interpreting neural computations by examining intrinsic and embedding dimensionality of neural activity

M Jazayeri, S Ostojic - Current opinion in neurobiology, 2021 - Elsevier
The ongoing exponential rise in recording capacity calls for new approaches for analysing
and interpreting neural data. Effective dimensionality has emerged as an important property …

Capturing the objects of vision with neural networks

B Peters, N Kriegeskorte - Nature human behaviour, 2021 - nature.com
Human visual perception carves a scene at its physical joints, decomposing the world into
objects, which are selectively attended, tracked and predicted as we engage our …

A retinotopic code structures the interaction between perception and memory systems

A Steel, EH Silson, BD Garcia, CE Robertson - Nature Neuroscience, 2024 - nature.com
Conventional views of brain organization suggest that regions at the top of the cortical
hierarchy processes internally oriented information using an abstract amodal neural code …

Neural algorithms and circuits for motor planning

HK Inagaki, S Chen, K Daie… - Annual review of …, 2022 - annualreviews.org
The brain plans and executes volitional movements. The underlying patterns of neural
population activity have been explored in the context of movements of the eyes, limbs …

Sensory perception relies on fitness-maximizing codes

J Schaffner, SD Bao, PN Tobler, TA Hare… - Nature Human …, 2023 - nature.com
Sensory information encoded by humans and other organisms is generally presumed to be
as accurate as their biological limitations allow. However, perhaps counterintuitively …

[HTML][HTML] Goal-seeking compresses neural codes for space in the human hippocampus and orbitofrontal cortex

PS Muhle-Karbe, H Sheahan, G Pezzulo, HJ Spiers… - Neuron, 2023 - cell.com
Humans can navigate flexibly to meet their goals. Here, we asked how the neural
representation of allocentric space is distorted by goal-directed behavior. Participants …

Modelling continual learning in humans with Hebbian context gating and exponentially decaying task signals

T Flesch, DG Nagy, A Saxe… - PLoS computational …, 2023 - journals.plos.org
Humans can learn several tasks in succession with minimal mutual interference but perform
more poorly when trained on multiple tasks at once. The opposite is true for standard deep …

Class-incremental learning for wireless device identification in IoT

Y Liu, J Wang, J Li, S Niu… - IEEE Internet of Things …, 2021 - ieeexplore.ieee.org
Deep learning (DL) has been utilized pervasively in the Internet of Things (IoT). One typical
application of DL in IoT is device identification from wireless signals, namely …

Signatures of task learning in neural representations

H Gurnani, NAC Gajic - Current opinion in neurobiology, 2023 - Elsevier
While neural plasticity has long been studied as the basis of learning, the growth of large-
scale neural recording techniques provides a unique opportunity to study how learning …

Pinging the brain with visual impulses reveals electrically active, not activity-silent, working memories

J Barbosa, D Lozano-Soldevilla, A Compte - PLoS biology, 2021 - journals.plos.org
Persistently active neurons during mnemonic periods have been regarded as the
mechanism underlying working memory maintenance. Alternatively, neuronal networks …