Hardness of Online Sleeping Combinatorial Optimization Problems

Satyen Kale, Chansoo Lee, David Pal

Neural Information Processing Systems 

We show that several online combinatorial optimization problems that admit efficient no-regret algorithms become computationally hard in the sleeping setting where a subset of actions becomes unavailable in each round. Specifically, we show that the sleeping versions of these problems are at least as hard as PAC learning DNF expressions, a long standing open problem.

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