Online Discrepancy Minimization for Stochastic Arrivals
Nikhil Bansal, Haotian Jiang, Raghu Meka, Sahil Singla, Makrand Sinha

TL;DR
This paper develops online algorithms for stochastic discrepancy minimization that match offline bounds up to polylogarithmic factors, improving results for problems like Komlós and Tusnády's in high-dimensional and distribution-agnostic settings.
Contribution
It introduces new potential-based algorithms that achieve near-optimal discrepancy bounds in online stochastic settings for multiple classical problems.
Findings
Achieves (1) discrepancy for the Komlf3s problem with high probability.
Provides an O((\,(\,T)) bound for Tusne1dy's problem with arbitrary distributions.
Extends discrepancy bounds to the Banaszczyk setting with sub-exponential tails.
Abstract
In the stochastic online vector balancing problem, vectors chosen independently from an arbitrary distribution in 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 factors. This substantially generalizes and improves upon the previous results of Bansal, Jiang, Singla, and Sinha (STOC' 20). In particular, for the Koml\'{o}s problem where for each , our algorithm achieves discrepancy with high probability, improving upon the previous bound. For Tusn\'{a}dy's…
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