Dispersion for Data-Driven Algorithm Design, Online Learning, and Private Optimization
Maria-Florina Balcan, Travis Dick, and Ellen Vitercik

TL;DR
This paper introduces the concept of dispersion to optimize and privatize data-driven algorithm selection and online learning, providing improved regret bounds and utility guarantees for various algorithm families.
Contribution
It develops a general framework based on dispersion for online and private optimization of piecewise Lipschitz functions, advancing theoretical guarantees in algorithm selection.
Findings
Improved regret bounds for online algorithm selection.
Established privacy-utility trade-offs in private optimization.
Uncovered dispersion phenomena in auction design and pricing.
Abstract
Data-driven algorithm design, that is, choosing the best algorithm for a specific application, is a crucial problem in modern data science. Practitioners often optimize over a parameterized algorithm family, tuning parameters based on problems from their domain. These procedures have historically come with no guarantees, though a recent line of work studies algorithm selection from a theoretical perspective. We advance the foundations of this field in several directions: we analyze online algorithm selection, where problems arrive one-by-one and the goal is to minimize regret, and private algorithm selection, where the goal is to find good parameters over a set of problems without revealing sensitive information contained therein. We study important algorithm families, including SDP-rounding schemes for problems formulated as integer quadratic programs, and greedy techniques for…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Auction Theory and Applications · Optimization and Search Problems
