Dynamic Regret of Online Mirror Descent for Relatively Smooth Convex Cost Functions
This provides performance guarantees for online optimization in domains where prior assumptions fail, but it is incremental as it extends existing regret analysis to milder conditions.
The paper tackles the problem of bounding dynamic regret in online convex optimization when cost functions lack Lipschitz continuity or uniform smoothness, showing that under relative smoothness, dynamic regret can be bounded by path length and functional variation, with numerical experiments demonstrating advantages.
The performance of online convex optimization algorithms in a dynamic environment is often expressed in terms of the dynamic regret, which measures the decision maker's performance against a sequence of time-varying comparators. In the analysis of the dynamic regret, prior works often assume Lipschitz continuity or uniform smoothness of the cost functions. However, there are many important cost functions in practice that do not satisfy these conditions. In such cases, prior analyses are not applicable and fail to guarantee the optimization performance. In this letter, we show that it is possible to bound the dynamic regret, even when neither Lipschitz continuity nor uniform smoothness is present. We adopt the notion of relative smoothness with respect to some user-defined regularization function, which is a much milder requirement on the cost functions. We first show that under relative smoothness, the dynamic regret has an upper bound based on the path length and functional variation. We then show that with an additional condition of relatively strong convexity, the dynamic regret can be bounded by the path length and gradient variation. These regret bounds provide performance guarantees to a wide variety of online optimization problems that arise in different application domains. Finally, we present numerical experiments that demonstrate the advantage of adopting a regularization function under which the cost functions are relatively smooth.