Non-stationary Projection-free Online Learning with Dynamic and Adaptive Regret Guarantees
Yibo Wang, Wenhao Yang, Wei Jiang, Shiyin Lu, Bing Wang, Haihong Tang,, Yuanyu Wan, Lijun Zhang

TL;DR
This paper develops new dynamic and adaptive regret bounds for projection-free online learning algorithms, addressing changing environments and high-dimensional constraints with theoretical guarantees and empirical validation.
Contribution
It provides the first general dynamic regret bounds for projection-free online learning and introduces methods to achieve adaptive regret guarantees.
Findings
Established a dynamic regret bound of O(T^{3/4}(1+P_T))
Improved the bound to O(T^{3/4}(1+P_T)^{1/4}) using parallel algorithms
Proposed a projection-free method with nearly matching static regret over any interval
Abstract
Projection-free online learning has drawn increasing interest due to its efficiency in solving high-dimensional problems with complicated constraints. However, most existing projection-free online methods focus on minimizing the static regret, which unfortunately fails to capture the challenge of changing environments. In this paper, we investigate non-stationary projection-free online learning, and choose dynamic regret and adaptive regret to measure the performance. Specifically, we first provide a novel dynamic regret analysis for an existing projection-free method named , and establish an dynamic regret bound, where denotes the path-length of the comparator sequence. Then, we improve the upper bound to by running multiple algorithms with different step sizes in…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Machine Learning and Algorithms · Cognitive Radio Networks and Spectrum Sensing
