Feb. 7, 2024, 5:45 a.m. | Antonio \'Alvarez-L\'opez Arselane Hadj Slimane Enrique Zuazua

cs.LG updates on arXiv.org arxiv.org

Neural ordinary differential equations (neural ODEs) have emerged as a natural tool for supervised learning from a control perspective, yet a complete understanding of their optimal architecture remains elusive. In this work, we examine the interplay between their width $p$ and number of layer transitions $L$ (effectively the depth $L+1$). Specifically, we assess the model expressivity in terms of its capacity to interpolate either a finite dataset $D$ comprising $N$ pairs of points or two probability measures in $\mathbb{R}^d$ within …

architecture control cs.lg differential layer math.oc natural ordinary perspective supervised learning tool transitions understanding work

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