Smoothed Analysis with Adaptive Adversaries
Nika Haghtalab, Tim Roughgarden, Abhishek Shetty

TL;DR
This paper introduces a technique to provide strong smoothed guarantees for online algorithms against adaptive adversaries, reducing their complexity to oblivious adversaries, with applications in online learning, discrepancy minimization, and dispersion.
Contribution
It presents a novel method to analyze smoothed algorithms against adaptive adversaries, extending previous results to more realistic, dynamic adversarial models.
Findings
Bounded regret in online learning with adaptive distributions.
Discrepancy minimized to polylogarithmic levels under adaptive inputs.
Achieved dispersion bounds matching oblivious adversaries up to log factors.
Abstract
We prove novel algorithmic guarantees for several online problems in the smoothed analysis model. In this model, at each time an adversary chooses an input distribution with density function bounded above by times that of the uniform distribution; nature then samples an input from this distribution. Crucially, our results hold for {\em adaptive} adversaries that can choose an input distribution based on the decisions of the algorithm and the realizations of the inputs in the previous time steps. This paper presents a general technique for proving smoothed algorithmic guarantees against adaptive adversaries, in effect reducing the setting of adaptive adversaries to the simpler case of oblivious adversaries. We apply this technique to prove strong smoothed guarantees for three problems: -Online learning: We consider the online prediction problem, where instances…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Stochastic Gradient Optimization Techniques · Adversarial Robustness in Machine Learning
