Many important problems in discrete optimization require maximization of a monotonic submodular function subject to matroid constraints. For these problems, a simple greedy algorithm is guaranteed to obtain near-optimal solutions. In this article, we extend this classic result to a general class of adaptive optimization problems under partial observability, where each choice can depend on observations resulting from past choices. Specifically, we prove that a natural adaptive greedy algorithm provides a approximation for the problem of maximizing an adaptive monotone submodular function subject to matroid constraints, and more generally over arbitrary -independence systems. We illustrate the usefulness of our result on a complex adaptive match-making application.
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