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  4. Online learning and adaptation over networks: More information is not necessarily better
 
conference paper

Online learning and adaptation over networks: More information is not necessarily better

Sayed, Ali H.  
•
Tu, Sheng-Yuan
•
Chen, Jianshu
2013
Information Theory and Applications Workshop (ITA)
Information Theory and Applications Workshop (ITA 2013)

We examine the performance of stochastic-gradient learners over connected networks for global optimization problems involving risk functions that are not necessarily quadratic. We consider two well-studied classes of distributed schemes including consensus strategies and diffusion strategies. We quantify how the mean-square-error and the convergence rate of the network vary with the combination policy and with the fraction of informed agents. Several combination policies are considered including doubly-stochastic rules, the averaging rule, Metropolis rule, and the Hastings rule. It will be seen that the performance of the network does not necessarily improve with a larger proportion of informed agents. A strategy to counter the degradation in performance is presented.

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