TURF: A Two-factor, Universal, Robust, Fast Distribution Learning Algorithm
This work provides a near-optimal solution for distribution learning, which is incremental but addresses a known bottleneck in statistical learning with broad applications in data analysis.
The paper tackles the problem of approximating distributions from samples by developing an algorithm that achieves the optimal constant factor of 2 for all polynomial approximations, improving upon previous bounds that rose to 3 for higher degrees, and includes a method to estimate the optimal number of polynomial pieces for practical distributions.
Approximating distributions from their samples is a canonical statistical-learning problem. One of its most powerful and successful modalities approximates every distribution to an $\ell_1$ distance essentially at most a constant times larger than its closest $t$-piece degree-$d$ polynomial, where $t\ge1$ and $d\ge0$. Letting $c_{t,d}$ denote the smallest such factor, clearly $c_{1,0}=1$, and it can be shown that $c_{t,d}\ge 2$ for all other $t$ and $d$. Yet current computationally efficient algorithms show only $c_{t,1}\le 2.25$ and the bound rises quickly to $c_{t,d}\le 3$ for $d\ge 9$. We derive a near-linear-time and essentially sample-optimal estimator that establishes $c_{t,d}=2$ for all $(t,d)\ne(1,0)$. Additionally, for many practical distributions, the lowest approximation distance is achieved by polynomials with vastly varying number of pieces. We provide a method that estimates this number near-optimally, hence helps approach the best possible approximation. Experiments combining the two techniques confirm improved performance over existing methodologies.