On Uniform Weighted Deep Polynomial approximation
Abstract
It is a classical result in rational approximation theory that certain non-smooth or singular functions, such as |x| and x1/p, can be efficiently approximated using rational functions with root-exponential convergence in terms of degrees of freedom Sta, GN. In contrast, polynomial approximations admit only algebraic convergence by Jackson's theorem Lub2. Recent work shows that composite polynomial architectures can recover exponential approximation rates even without smoothness KY. In this work, we introduce and analyze a class of weighted deep polynomial approximants tailored for functions with asymmetric behavior-growing unbounded on one side and decaying on the other. By multiplying a learnable deep polynomial with a one-sided weight, we capture both local non-smoothness and global growth. We show numerically that this framework outperforms Taylor, Chebyshev, and standard deep polynomial approximants, even when all use the same number of parameters. To optimize these approximants in practice, we propose a stable graph-based parameterization strategy building on Jar.
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