Minimum Cost Adaptive Submodular Cover

Adaptive submodularity is a fundamental concept in stochastic optimization, with numerous applications such as sensor placement, hypothesis identification and viral marketing. We consider the problem of minimum cost cover of adaptive-submodular functions, and provide a -approximation algorithm, where is the goal value. In fact, we consider a significantly more general objective of minimizing the moment of the coverage cost, and show that our algorithm simultaneously achieves a approximation guarantee for all . All our approximation ratios are best possible up to constant factors (assuming ). Moreover, our results also extend to the setting where one wants to cover {\em multiple} adaptive-submodular functions. Finally, we evaluate the empirical performance of our algorithm on instances of hypothesis identification.
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