DSLGMLOct 30, 2024

Statistical-Computational Trade-offs for Density Estimation

arXiv:2410.23087v12 citationsh-index: 12NIPS
Originality Incremental advance
AI Analysis

This work addresses a statistical-computational trade-off for density estimation, which is incremental as it builds on prior results to provide a lower bound.

The paper tackles the density estimation problem by establishing a lower bound showing that for a broad class of data structures, achieving sublinear sampling complexity and query time simultaneously is limited, with any algorithm using O(n/log^c k) samples and polynomial space requiring query time close to linear in k, specifically at least k^{1-O(1)/log log k}.

We study the density estimation problem defined as follows: given $k$ distributions $p_1, \ldots, p_k$ over a discrete domain $[n]$, as well as a collection of samples chosen from a ``query'' distribution $q$ over $[n]$, output $p_i$ that is ``close'' to $q$. Recently~\cite{aamand2023data} gave the first and only known result that achieves sublinear bounds in {\em both} the sampling complexity and the query time while preserving polynomial data structure space. However, their improvement over linear samples and time is only by subpolynomial factors. Our main result is a lower bound showing that, for a broad class of data structures, their bounds cannot be significantly improved. In particular, if an algorithm uses $O(n/\log^c k)$ samples for some constant $c>0$ and polynomial space, then the query time of the data structure must be at least $k^{1-O(1)/\log \log k}$, i.e., close to linear in the number of distributions $k$. This is a novel \emph{statistical-computational} trade-off for density estimation, demonstrating that any data structure must use close to a linear number of samples or take close to linear query time. The lower bound holds even in the realizable case where $q=p_i$ for some $i$, and when the distributions are flat (specifically, all distributions are uniform over half of the domain $[n]$). We also give a simple data structure for our lower bound instance with asymptotically matching upper bounds. Experiments show that the data structure is quite efficient in practice.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes