Stochastic Submodular Maximization: The Case of Coverage Functions
November 05, 2017 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Mohammad Reza Karimi, Mario Lucic, Hamed Hassani, Andreas Krause
arXiv ID
1711.01566
Category
cs.LG: Machine Learning
Cross-listed
cs.DM,
stat.ML
Citations
61
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Stochastic optimization of continuous objectives is at the heart of modern machine learning. However, many important problems are of discrete nature and often involve submodular objectives. We seek to unleash the power of stochastic continuous optimization, namely stochastic gradient descent and its variants, to such discrete problems. We first introduce the problem of stochastic submodular optimization, where one needs to optimize a submodular objective which is given as an expectation. Our model captures situations where the discrete objective arises as an empirical risk (e.g., in the case of exemplar-based clustering), or is given as an explicit stochastic model (e.g., in the case of influence maximization in social networks). By exploiting that common extensions act linearly on the class of submodular functions, we employ projected stochastic gradient ascent and its variants in the continuous domain, and perform rounding to obtain discrete solutions. We focus on the rich and widely used family of weighted coverage functions. We show that our approach yields solutions that are guaranteed to match the optimal approximation guarantees, while reducing the computational cost by several orders of magnitude, as we demonstrate empirically.
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