Title :
Mechanism design via machine learning
Author :
Balcan, Maria-Florina ; Blum, Avrim ; Hartline, Jason D. ; Mansour, Yishay
Author_Institution :
Dept. of Comput. Sci., Carnegie Mellon Univ., Pittsburgh, PA, USA
Abstract :
We use techniques from sample-complexity in machine learning to reduce problems of incentive-compatible mechanism design to standard algorithmic questions, for a wide variety of revenue-maximizing pricing problems. Our reductions imply that for these problems, given an optimal (or β-approximation) algorithm for the standard algorithmic problem, we can convert it into a (1 + ε)-approximation (or β(1 +ε)-approximation) for the incentive-compatible mechanism design problem, so long as the number of bidders is sufficiently large as a function of an appropriate measure of complexity of the comparison class of solutions. We apply these results to the problem of auctioning a digital good, the attribute auction problem, and to the problem of item-pricing in unlimited-supply combinatorial auctions. From a learning perspective, these settings present several challenges: in particular the loss function is discontinuous and asymmetric, and the range of bidders´ valuations may be large.
Keywords :
combinatorial mathematics; commerce; computational complexity; learning (artificial intelligence); pricing; (1 + ε)-approximation; attribute auction problem; incentive-compatible mechanism design; item pricing; machine learning; optimal algorithm; revenue-maximizing pricing problem; sample complexity; unlimited-supply combinatorial auction; Algorithm design and analysis; Automobiles; Computer science; Cost accounting; Machine learning; Machine learning algorithms; Marketing and sales; Measurement standards; Pricing; Writing;
Conference_Titel :
Foundations of Computer Science, 2005. FOCS 2005. 46th Annual IEEE Symposium on
Print_ISBN :
0-7695-2468-0
DOI :
10.1109/SFCS.2005.50