Stochastic Submodular Maximization via Polynomial Estimators
In this paper, we study stochastic submodular maximization problems with general matroid constraints, that naturally arise in online learning, team formation, facility location, influence maximization, active learning and sensing objective functions. In other words, we focus on maximizing submodular...
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Zusammenfassung: | In this paper, we study stochastic submodular maximization problems with
general matroid constraints, that naturally arise in online learning, team
formation, facility location, influence maximization, active learning and
sensing objective functions. In other words, we focus on maximizing submodular
functions that are defined as expectations over a class of submodular functions
with an unknown distribution. We show that for monotone functions of this form,
the stochastic continuous greedy algorithm attains an approximation ratio (in
expectation) arbitrarily close to $(1-1/e) \approx 63\%$ using a polynomial
estimation of the gradient. We argue that using this polynomial estimator
instead of the prior art that uses sampling eliminates a source of randomness
and experimentally reduces execution time. |
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DOI: | 10.48550/arxiv.2303.09960 |