A Note on Non-Negative $L_1$-Approximating Polynomials
Jane H. Lee, Anay Mehrotra, Manolis Zampetakis
TLDR
This paper proves the existence of non-negative $L_1$-approximating polynomials for Gaussian distributions, matching optimal degree bounds.
Key contributions
- Proves existence of non-negative $L_1$-approximating polynomials for Gaussian distributions.
- Applies to sets with finite Gaussian surface area (GSA) with degree $k= ilde{O}(\Gamma^2/\varepsilon^2)$.
- This degree bound matches the best known $L_1$-approximation without non-negativity.
Why it matters
Non-negative $L_1$-approximating polynomials are crucial for applications like smoothed learning from positive-only examples. This work demonstrates that the non-negativity constraint does not increase the optimal polynomial degree, providing a fundamental theoretical insight.
Original Abstract
$L_1$-Approximating polynomials, i.e., polynomials that approximate indicator functions in $L_1$-norm under certain distributions, are widely used in computational learning theory. We study the existence of \textit{non-negative} $L_1$-approximating polynomials with respect to Gaussian distributions. This is a stronger requirement than $L_1$-approximation but weaker than sandwiching polynomials (which themselves have many applications). These non-negative approximating polynomials have recently found uses in smoothed learning from positive-only examples. In this short note, we prove that every class of sets with Gaussian surface area (GSA) at most $Γ$ under the standard Gaussian admits degree-$k$ non-negative polynomials that $\eps$-approximate its indicator functions in $L_1$-norm, for $k=\tilde{O}(Γ^2/\varepsilon^2)$. Equivalently, finite GSA implies $L_1$-approximation with the stronger pointwise guarantee that the approximating polynomial has range contained in $[0,\infty)$. Up to a constant-factor, this matches the degree of the best currently known Gaussian $L_1$-approximation degree bound without the non-negativity constraint.
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