NCAILGAug 25, 2023

Adaptive whitening with fast gain modulation and slow synaptic plasticity

arXiv:2308.13633v27 citationsh-index: 89
Originality Incremental advance
AI Analysis

This addresses a mechanistic limitation in models of neural adaptation for sensory processing, though it appears incremental by combining existing approaches.

The paper tackles the problem of adaptive whitening in early sensory neurons by unifying synaptic plasticity and gain modulation in a multi-timescale model, showing that synapses learn optimal configurations over long timescales to enable adaptive whitening on short timescales.

Neurons in early sensory areas rapidly adapt to changing sensory statistics, both by normalizing the variance of their individual responses and by reducing correlations between their responses. Together, these transformations may be viewed as an adaptive form of statistical whitening. Existing mechanistic models of adaptive whitening exclusively use either synaptic plasticity or gain modulation as the biological substrate for adaptation; however, on their own, each of these models has significant limitations. In this work, we unify these approaches in a normative multi-timescale mechanistic model that adaptively whitens its responses with complementary computational roles for synaptic plasticity and gain modulation. Gains are modified on a fast timescale to adapt to the current statistical context, whereas synapses are modified on a slow timescale to match structural properties of the input statistics that are invariant across contexts. Our model is derived from a novel multi-timescale whitening objective that factorizes the inverse whitening matrix into basis vectors, which correspond to synaptic weights, and a diagonal matrix, which corresponds to neuronal gains. We test our model on synthetic and natural datasets and find that the synapses learn optimal configurations over long timescales that enable adaptive whitening on short timescales using gain modulation.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes