On Distributed Online Convex Optimization with Sublinear Dynamic Regret and Fit
In this work, we consider a distributed online convex optimization problem, with time-varying (potentially adversarial) constraints. A set of nodes, jointly aim to minimize a global objective function, which is the sum of local convex functions. The objective and constraint functions are revealed lo...
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Zusammenfassung: | In this work, we consider a distributed online convex optimization problem,
with time-varying (potentially adversarial) constraints. A set of nodes,
jointly aim to minimize a global objective function, which is the sum of local
convex functions. The objective and constraint functions are revealed locally
to the nodes, at each time, after taking an action. Naturally, the constraints
cannot be instantaneously satisfied. Therefore, we reformulate the problem to
satisfy these constraints in the long term. To this end, we propose a
distributed primal-dual mirror descent based approach, in which the primal and
dual updates are carried out locally at all the nodes. This is followed by
sharing and mixing of the primal variables by the local nodes via communication
with the immediate neighbors. To quantify the performance of the proposed
algorithm, we utilize the challenging, but more realistic metrics of dynamic
regret and fit. Dynamic regret measures the cumulative loss incurred by the
algorithm, compared to the best dynamic strategy. On the other hand, fit
measures the long term cumulative constraint violations. Without assuming the
restrictive Slater's conditions, we show that the proposed algorithm achieves
sublinear regret and fit under mild, commonly used assumptions. |
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DOI: | 10.48550/arxiv.2001.03166 |