Distributed Optimization and Statistical Learning via the ...
cated problems in areas like graphical models. In addition, though our focus is on statistical learning problems, the algorithm is readily appli-cable in many other cases, such as in engineering design, multi-period portfoliooptimization,timeseriesanalysis,networkflow,orscheduling. Outline
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