Higher-Order Convolution Improves Neural Predictivity in the Retina
Simone Azeglio, Victor Calbiague Garcia, Guilhem Glaziou, Peter Neri, Olivier Marre, Ulisse Ferrari

TL;DR
This paper introduces a higher-order convolutional neural network that enhances neural response prediction in the retina by modeling multiplicative interactions, improving accuracy and efficiency across species and stimuli.
Contribution
The novel higher-order convolution operation increases CNN representational power without deeper networks, better capturing biological visual processing.
Findings
Achieves up to 0.75 correlation with neural responses.
Requires half the training data of standard models.
Improves prediction of geometric transformations like scaling.
Abstract
We present a novel approach to neural response prediction that incorporates higher-order operations directly within convolutional neural networks (CNNs). Our model extends traditional 3D CNNs by embedding higher-order operations within the convolutional operator itself, enabling direct modeling of multiplicative interactions between neighboring pixels across space and time. Our model increases the representational power of CNNs without increasing their depth, therefore addressing the architectural disparity between deep artificial networks and the relatively shallow processing hierarchy of biological visual systems. We evaluate our approach on two distinct datasets: salamander retinal ganglion cell (RGC) responses to natural scenes, and a new dataset of mouse RGC responses to controlled geometric transformations. Our higher-order CNN (HoCNN) achieves superior performance while requiring…
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