Parallel Double Greedy Submodular Maximization

Pan, Xinghao, Jegelka, Stefanie, Gonzalez, Joseph E., Bradley, Joseph K., Jordan, Michael I.

Neural Information Processing Systems 

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. The optimal algorithm for maximizing the more general class of non-monotone submodular functions was introduced by Buchbinder et al. and follows a strongly serial double-greedy logic and program analysis. In this work, we propose two methods to parallelize the double-greedy algorithm. The first, coordination-free approach emphasizes speed at the cost of a weaker approximation guarantee.