Distributed data clustering over networks
In this paper, we consider the problem of distributed unsupervised clustering, where training data is partitioned over a set of agents, whose interaction happens over a sparse, but connected, communication network. To solve this problem, we recast the well known Expectation Maximization method in a distributed setting, exploiting a recently proposed algorithmic framework for in-network non-convex optimization.