Online Discrepancy Minimization for Stochastic Arrivals

07/21/2020
by   Nikhil Bansal, et al.
0

In the stochastic online vector balancing problem, vectors v_1,v_2,…,v_T chosen independently from an arbitrary distribution in ℝ^n arrive one-by-one and must be immediately given a ± sign. The goal is to keep the norm of the discrepancy vector, i.e., the signed prefix-sum, as small as possible for a given target norm. We consider some of the most well-known problems in discrepancy theory in the above online stochastic setting, and give algorithms that match the known offline bounds up to 𝗉𝗈𝗅𝗒𝗅𝗈𝗀(nT) factors. This substantially generalizes and improves upon the previous results of Bansal, Jiang, Singla, and Sinha (STOC' 20). In particular, for the Komlós problem where v_t_2≤ 1 for each t, our algorithm achieves Õ(1) discrepancy with high probability, improving upon the previous Õ(n^3/2) bound. For Tusnády's problem of minimizing the discrepancy of axis-aligned boxes, we obtain an O(log^d+4 T) bound for arbitrary distribution over points. Previous techniques only worked for product distributions and gave a weaker O(log^2d+1 T) bound. We also consider the Banaszczyk setting, where given a symmetric convex body K with Gaussian measure at least 1/2, our algorithm achieves Õ(1) discrepancy with respect to the norm given by K for input distributions with sub-exponential tails. Our key idea is to introduce a potential that also enforces constraints on how the discrepancy vector evolves, allowing us to maintain certain anti-concentration properties. For the Banaszczyk setting, we further enhance this potential by combining it with ideas from generic chaining. Finally, we also extend these results to the setting of online multi-color discrepancy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/06/2019

Online Vector Balancing and Geometric Discrepancy

We consider an online vector balancing question where T vectors, chosen ...
research
11/13/2021

Prefix Discrepancy, Smoothed Analysis, and Combinatorial Vector Balancing

A well-known result of Banaszczyk in discrepancy theory concerns the pre...
research
11/11/2021

Online Discrepancy with Recourse for Vectors and Graphs

The vector-balancing problem is a fundamental problem in discrepancy the...
research
02/04/2021

Online Discrepancy Minimization via Persistent Self-Balancing Walks

We study the online discrepancy minimization problem for vectors in ℝ^d ...
research
09/17/2021

Gaussian discrepancy: a probabilistic relaxation of vector balancing

We introduce a novel relaxation of combinatorial discrepancy called Gaus...
research
03/16/2019

On-Line Balancing of Random Inputs

We consider an online vector balancing game where vectors v_t, chosen un...
research
05/19/2012

New Analysis and Algorithm for Learning with Drifting Distributions

We present a new analysis of the problem of learning with drifting distr...

Please sign up or login with your details

Forgot password? Click here to reset