NeurIPS2025

Minimum Width for Deep, Narrow MLP: A Diffeomorphism Approach

Geonho Hwang

5 citations

Abstract

Recently, there has been a growing focus on determining the minimum width requirements for achieving the universal approximation property in deep, narrow Multi-Layer Perceptrons (MLPs). Among these challenges, one particularly challenging task is approximating a continuous function under the uniform norm, as indicated by the significant disparity between its lower and upper bounds. To address this problem, we propose a framework that simplifies finding the minimum width for deep, narrow MLPs into determining a purely geometrical function denoted as w(dx,dy)w(d_x, d_y). This function relies solely on the input and output dimensions, represented as dxd_x and dyd_y, respectively. Two key steps support this framework. First, we demonstrate that deep, narrow MLPs, when provided with a small additional width, can approximate a C2C^2-diffeomorphism. Subsequently, using this result, we prove that w(dx,dy)w(d_x, d_y) equates to the optimal minimum width required for deep, narrow MLPs to achieve universality. By employing the aforementioned framework and the Whitney embedding theorem, we provide an upper bound for the minimum width, given by max(2dx+1,dy)+α(σ)\operatorname{max}(2d_x+1, d_y) + α(σ), where 0α(σ)20 \leq α(σ) \leq 2 represents a constant depending on the activation function. Furthermore, we provide a lower bound of 44 for the minimum width in cases where the input and output dimensions are both equal to two.