Abstract
We study discrepancy minimization for vectors in Rn under various settings. The main result is the analysis of a new simple random process in high dimensions through a comparison argument. As corollaries, we obtain bounds which are tight up to logarithmic factors for online vector balancing against oblivious adversaries, resolving several questions posed by Bansal, Jiang, Singla, and Sinha (STOC 2020), as well as a linear time algorithm for logarithmic bounds for the Komlós conjecture.
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CITATION STYLE
Alweiss, R., Liu, Y. P., & Sawhney, M. (2021). Discrepancy minimization via a self-balancing walk. In Proceedings of the Annual ACM Symposium on Theory of Computing (pp. 14–20). Association for Computing Machinery. https://doi.org/10.1145/3406325.3450994
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