ArXiv TLDR

Response time of lateral predictive coding and benefits of modular structures

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2604.20524

Guanghui Cai, Zhen-Ye Huang, Weikang Wang, Hai-Jun Zhou

q-bio.NCcond-mat.dis-nncs.NE

TLDR

This paper reduces response time in Lateral Predictive Coding (LPC) systems and shows modular structures are equally effective with fewer connections.

Key contributions

  • Minimizes Lateral Predictive Coding (LPC) system response time without compromising accuracy or robustness.
  • Demonstrates modular LPC networks match fully connected ones in feature detection and overall performance.
  • Shows modular structures achieve equivalent performance with significantly fewer lateral connections.

Why it matters

Previous optimal LPC networks were slow. This work significantly reduces response time without compromising accuracy or robustness. It also shows modular structures perform equally well with fewer connections, offering insights into efficient biological and artificial neural circuit design.

Original Abstract

Lateral predictive coding (LPC) is a simple theoretical framework to appreciate feature detection in biological neural circuits. Recent theoretical work [Huang et al., Phys.Rev.E 112, 034304 (2025)] has successfully constructed optimal LPC networks capable of extracting non-Gaussian hidden input features by imposing the tradeoff between energetic cost and information robustness, but the resulting dynamical systems of recurrent interactions can be very slow in responding to external inputs. We investigate response-time reduction in the present paper. We find that the characteristic response time of the LPC system can be minimized to closely approaching the lower-bound value without compromising the mean predictive error (energetic cost) and the information robustness of signal transmission. We further demonstrate that optimal LPC networks taking a modular structural organization with extensively reduced number of lateral interactions are equally excellent as all-to-all completely connected networks, in terms of feature detection performance, response time, energetic cost and information robustness.

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