Timezone: »
Poster
Riemannian Projection-free Online Learning
Zihao Hu · Guanghui Wang · Jacob Abernethy
The projection operation is a critical component in a wide range of optimization algorithms, such as online gradient descent (OGD), for enforcing constraints and achieving optimal regret bounds. However, it suffers from computational complexity limitations in high-dimensional settings or when dealing with ill-conditioned constraint sets. Projection-free algorithms address this issue by replacing the projection oracle with more efficient optimization subroutines. But to date, these methods have been developed primarily in the Euclidean setting, and while there has been growing interest in optimization on Riemannian manifolds, there has been essentially no work in trying to utilize projection-free tools here. An apparent issue is that non-trivial affine functions are generally non-convex in such domains. In this paper, we present methods for obtaining sub-linear regret guarantees in online geodesically convex optimization on curved spaces for two scenarios: when we have access to (a) a separation oracle or (b) a linear optimization oracle. For geodesically convex losses, and when a separation oracle is available, our algorithms achieve $O(T^{\frac{1}{2}})$, $O(T^{\frac{3}{4}})$ and $O(T^{\frac{1}{2}})$ adaptive regret guarantees in the full information setting, the bandit setting with one-point feedback and the bandit setting with two-point feedback, respectively. When a linear optimization oracle is available, we obtain regret rates of $O(T^{\frac{3}{4}})$ for geodesically convex losses and $O(T^{\frac{2}{3}}\log T)$ for strongly geodesically convex losses.
Author Information
Zihao Hu (Georgia Institute of Technology)
Guanghui Wang (Georgia Institute of Technology)
Jacob Abernethy (Georgia Institute of Technology)
More from the Same Authors
-
2023 Poster: Faster Margin Maximization Rates for Generic Optimization Methods »
Guanghui Wang · Zihao Hu · Vidya Muthukumar · Jacob Abernethy -
2022 : Accelerated Federated Optimization with Quantization »
Yeojoon Youn · Bhuvesh Kumar · Jacob Abernethy -
2022 Poster: Adaptive Oracle-Efficient Online Learning »
Guanghui Wang · Zihao Hu · Vidya Muthukumar · Jacob Abernethy -
2021 Poster: Observation-Free Attacks on Stochastic Bandits »
Yinglun Xu · Bhuvesh Kumar · Jacob Abernethy -
2021 Poster: Dual Adaptivity: A Universal Algorithm for Minimizing the Adaptive Regret of Convex Functions »
Lijun Zhang · Guanghui Wang · Wei-Wei Tu · Wei Jiang · Zhi-Hua Zhou -
2021 Poster: Online Convex Optimization with Continuous Switching Constraint »
Guanghui Wang · Yuanyu Wan · Tianbao Yang · Lijun Zhang -
2019 Poster: Online Learning via the Differential Privacy Lens »
Jacob Abernethy · Young H Jung · Chansoo Lee · Audra McMillan · Ambuj Tewari -
2019 Spotlight: Online Learning via the Differential Privacy Lens »
Jacob Abernethy · Young H Jung · Chansoo Lee · Audra McMillan · Ambuj Tewari -
2019 Poster: Learning Auctions with Robust Incentive Guarantees »
Jacob Abernethy · Rachel Cummings · Bhuvesh Kumar · Sam Taggart · Jamie Morgenstern -
2018 : Panel discussion: Opportunities to organize new impactful challenges. »
Jacob Abernethy -
2018 : Panel discussion: Opportunities to organize new impactful challenges »
Jacob Abernethy -
2018 Workshop: CiML 2018 - Machine Learning competitions "in the wild": Playing in the real world or in real time »
Isabelle Guyon · Evelyne Viegas · Sergio Escalera · Jacob D Abernethy -
2018 : Building Algorithms by Playing Games »
Jacob D Abernethy -
2018 Poster: Acceleration through Optimistic No-Regret Dynamics »
Jun-Kun Wang · Jacob Abernethy -
2018 Spotlight: Acceleration through Optimistic No-Regret Dynamics »
Jun-Kun Wang · Jacob Abernethy -
2017 Workshop: Machine Learning Challenges as a Research Tool »
Isabelle Guyon · Evelyne Viegas · Sergio Escalera · Jacob D Abernethy -
2017 Poster: On Frank-Wolfe and Equilibrium Computation »
Jacob D Abernethy · Jun-Kun Wang -
2017 Spotlight: On Frank-Wolfe and Equilibrium Computation »
Jacob D Abernethy · Jun-Kun Wang -
2016 Poster: Threshold Bandits, With and Without Censored Feedback »
Jacob D Abernethy · Kareem Amin · Ruihao Zhu -
2015 Poster: Fighting Bandits with a New Kind of Smoothness »
Jacob D Abernethy · Chansoo Lee · Ambuj Tewari -
2015 Poster: A Market Framework for Eliciting Private Data »
Bo Waggoner · Rafael Frongillo · Jacob D Abernethy -
2014 Workshop: NIPS Workshop on Transactional Machine Learning and E-Commerce »
David Parkes · David H Wolpert · Jennifer Wortman Vaughan · Jacob D Abernethy · Amos Storkey · Mark Reid · Ping Jin · Nihar Bhadresh Shah · Mehryar Mohri · Luis E Ortiz · Robin Hanson · Aaron Roth · Satyen Kale · Sebastien Lahaie -
2013 Poster: Minimax Optimal Algorithms for Unconstrained Linear Optimization »
Brendan McMahan · Jacob D Abernethy -
2013 Poster: Adaptive Market Making via Online Learning »
Jacob D Abernethy · Satyen Kale -
2013 Poster: How to Hedge an Option Against an Adversary: Black-Scholes Pricing is Minimax Optimal »
Jacob D Abernethy · Peter Bartlett · Rafael Frongillo · Andre Wibisono -
2013 Spotlight: How to Hedge an Option Against an Adversary: Black-Scholes Pricing is Minimax Optimal »
Jacob D Abernethy · Peter Bartlett · Rafael Frongillo · Andre Wibisono -
2013 Oral: Adaptive Market Making via Online Learning »
Jacob D Abernethy · Satyen Kale -
2011 Poster: A Collaborative Mechanism for Crowdsourcing Prediction Problems »
Jacob D Abernethy · Rafael Frongillo -
2011 Oral: A Collaborative Mechanism for Crowdsourcing Prediction Problems »
Jacob D Abernethy · Rafael Frongillo -
2010 Poster: Repeated Games against Budgeted Adversaries »
Jacob D Abernethy · Manfred K. Warmuth