Layer-wise Geometric Approximation Rates for Deep Networks

Abstract

Depth is widely viewed as a central contributor to the success of deep neural networks, whereas standard neural network approximation theory typically provides guarantees only for the final output and leaves the role of intermediate layers largely unclear. We address this gap by developing a quantitative framework in which depth admits a precise scale-dependent interpretation. Specifically, we design a single shared mixed-activation architecture of fixed width 2dN+d+2 and any prescribed finite depth such that each intermediate readout Φ is itself an approximant to the target function f. For f∈ Lp([0,1]d) with p∈ [1,∞), the approximation error of Φ is controlled by (2d+1) times the Lp modulus of continuity at the geometric scale N- for all . The estimate reduces to the geometric rate (2d+1)N- if f is 1-Lipschitz. Our network design is inspired by multigrade deep learning, where depth serves as a progressive refinement mechanism. For every prescribed terminal depth, the construction yields a finite nested family of prefix readouts whose earlier correction terms remain embedded in later readouts. Thus the approximation may be truncated within the prescribed depth range once the desired certified accuracy is reached.

0

Turn this paper into a lesson

ArcXiv compiles a structured reading guide from this paper's metadata: plain-English importance, contributions, prerequisite concepts, which sections to read first, flashcards, and a quiz. Grounded in the abstract, never invented.

Discussion (0)

Sign in to join the discussion.

Loading comments…