On Distributed Online Classification in the Midst of Concept Drifts
classification
🧮 math.OC
cs.DCcs.LGcs.SIphysics.soc-ph
keywords
distributedonlineabilityadvantagealgorithmsanalyzeattainedbounds
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In this work, we analyze the generalization ability of distributed online learning algorithms under stationary and non-stationary environments. We derive bounds for the excess-risk attained by each node in a connected network of learners and study the performance advantage that diffusion strategies have over individual non-cooperative processing. We conduct extensive simulations to illustrate the results.
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