Parallel Double Greedy Submodular Maximization

NeurIPS 2014 Xinghao PanStefanie JegelkaJoseph E. GonzalezJoseph K. BradleyMichael I. Jordan

Many machine learning problems can be reduced to the maximization of submodular functions. Although well understood in the serial setting, the parallel maximization of submodular functions remains an open area of research with recent results only addressing monotone functions... (read more)

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