Decision-Theoretic Bidding Based on Learned Density Models in Simultaneous, Interacting Auctions

Auctions are becoming an increasingly popular method for transacting business, especially over the Internet. This article presents a general approach to building autonomous bidding agents to bid in multiple simultaneous auctions for interacting goods. A core component of our approach learns a model...

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Veröffentlicht in:The Journal of artificial intelligence research 2003-01, Vol.19, p.209-242
Hauptverfasser: Stone, P., Schapire, R. E., Littman, M. L., Csirik, J. A., McAllester, D.
Format: Artikel
Sprache:eng
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Zusammenfassung:Auctions are becoming an increasingly popular method for transacting business, especially over the Internet. This article presents a general approach to building autonomous bidding agents to bid in multiple simultaneous auctions for interacting goods. A core component of our approach learns a model of the empirical price dynamics based on past data and uses the model to analytically calculate, to the greatest extent possible, optimal bids. We introduce a new and general boosting-based algorithm for conditional density estimation problems of this kind, i.e., supervised learning problems in which the goal is to estimate the entire conditional distribution of the real-valued label. This approach is fully implemented as ATTac-2001, a top-scoring agent in the second Trading Agent Competition (TAC-01). We present experiments demonstrating the effectiveness of our boosting-based price predictor relative to several reasonable alternatives.
ISSN:1076-9757
1076-9757
1943-5037
DOI:10.1613/jair.1200