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Abstract:
Which ads should we display in sponsored search in order to maximize our revenue? How should we dynamically rank information sources to maximize the value of the ranking? These applications exhibit strong diminishing returns: Redundancy decreases the marginal utility of each ad or information source. We show that these and other problems can be formalized as repeatedly selecting an assignment of items to positions to maximize a sequence of monotone submodular functions that arrive one by one. We present an efficient algorithm for this general problem and analyze it in the no-regret model. Our algorithm possesses strong theoretical guarantees, such as a performance ratio that converges to the optimal constant of 1 − 1/e. We empirically evaluate our algorithm on two real-world online optimization problems on the web: ad allocation with submodular utilities, and dynamically ranking blogs to detect information cascades.
Reference:
Online Learning of Assignments M. Streeter, D. Golovin, A. KrauseIn Proc. Neural Information Processing Systems (NeurIPS), 2009
Bibtex Entry:
@inproceedings{streeter09online,
	author = {Matthew Streeter and Daniel Golovin and Andreas Krause},
	booktitle = {Proc. Neural Information Processing Systems (NeurIPS)},
	title = {Online Learning of Assignments},
	year = {2009}}