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Web Intelligence and Intelligent Agent Technology, IEEE/WIC/ACM International Conference on (2009)
Milan, Italy
Sept. 15, 2009 to Sept. 18, 2009
ISBN: 978-0-7695-3801-3
pp: 435-438
In this paper, we propose a bid optimizer for sponsored keyword search auctions which leads to better retention of advertisers by yielding attractive utilities to the advertisers without decreasing the revenue to the search engine. The bid optimizer is positioned as a key value added tool the search engine provides to the bidders. The proposed bid optimizer algorithm transforms the reported values of the bidders for a keyword into a correlated bid profile using many ideas from cooperative game theory. The algorithm is based on a characteristic form game involving the search engine and the bidders. Ideas from Nash bargaining theory are used in formulating the characteristic form game to provide for a fair share of surplus among the players involved. The algorithm then computes the nucleolus of the characteristic form game since we find that the nucleolus is an apt way of allocating the gains of cooperation among the search engine and the bidders. The algorithm next transforms the nucleolus into a correlated bid profile using a linear programming formulation. This bid profile is input to a standard generalized second price mechanism (GSP) for determining the allocation of sponsored slots and the prices to be paid by the winners. The correlated bid profile that we determine is a locally envy-free equilibrium and also a correlated equilibrium of the underlying game. Through detailed simulation experiments, we show that the proposed bid optimizer retains more customers than a plain GSP mechanism and also yields better long-run utilities to the search engine and the bidders.
Bid Optimizer, Sponsored Search, Cooperative Game Theory, Nash bargaining, Nucleolus.

Y. Narahari, S. Sriram and N. Chaitanya, "A Novel Bid Optimizer for Sponsored Search Auctions Using Cooperative Game Theory," 2009 IEEE/WIC/ACM International Joint Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT), Milan, Italy, 2009, pp. 435-438.
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