Continuous Prediction with Experts’ Advice

30 Jan, 2023, 3:30 PM, GHC 8102

Speaker: Ben Chugg

Abstract: Prediction with experts’ advice is one of the most fundamental problems in online learning and captures many of its technical challenges. A recent line of work has looked at online learning through the lens of differential equations and continuous-time analysis. This viewpoint has yielded optimal results for several problems in online learning. In this paper, we employ continuous-time stochastic calculus in order to study the discrete-time experts’ problem. We use these tools to design a continuous-time, parameter free algorithm with improved guarantees on the quantile regret. We then develop an analogous discrete-time algorithm with a very similar analysis and identical quantile regret bounds. Finally, we design an anytime continuous-time algorithm with regret matching the optimal fixed-time rate when the gains are independent Brownian motions; in many settings, this is the most difficult case. This gives some evidence that, even with adversarial gains, the optimal anytime and fixed-time regrets may coincide. https://arxiv.org/pdf/2206.00236.pdf