Distributed Online Learning for Joint Regret with Communication Constraints
| Authors | |
|---|---|
| Publication date | 2022 |
| Journal | Proceedings of Machine Learning Research |
| Event | 33rd International Conference on Algorithmic Learning Theory |
| Volume | Issue number | 167 |
| Pages (from-to) | 1003-1042 |
| Number of pages | 40 |
| Organisations |
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| Abstract |
We consider distributed online learning for joint regret with
communication constraints. In this setting, there are multiple agents
that are connected in a graph. Each round, an adversary first activates
one of the agents to issue a prediction and provides a corresponding
gradient, and then the agents are allowed to send a b-bit
message to their neighbors in the graph. All agents cooperate to
control the joint regret, which is the sum of the losses of the
activated agents minus the losses evaluated at the best fixed common
comparator parameters u.
We observe that it is suboptimal for agents to wait for gradients that
take too long to arrive. Instead, the graph should be partitioned into
local clusters that communicate among themselves. Our main result is a
new method that can adapt to the optimal graph partition for the
adversarial activations and gradients, where the graph partition is
selected from a set of candidate partitions. A crucial building block
along the way is a new algorithm for online convex optimization with
delayed gradient information that is comparator-adaptive, meaning that
its joint regret scales with the norm of the comparator ||u||. We further provide near-optimal gradient compression schemes depending on the ratio of b and the dimension times the diameter of the graph.
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| Document type | Article |
| Note | Proceedings of the 33rd International Conference on Algorithmic Learning Theory, 29-1 April 2022, Paris, France |
| Language | English |
| Published at | https://proceedings.mlr.press/v167/hoeven22a.html |
| Downloads |
hoeven22a
(Final published version)
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