Bidding for Customer Orders in TAC SCM: A Learning Approach

Supply chains are a current, challenging problem for agentbased electronic commerce. Motivated by the Trading Agent Competition Supply Chain Management (TAC SCM) scenario, we consider an individual supply chain agent as having three major subtasks: acquiring supplies, selling products, and managing its local manufacturing process. In this paper, we focus on the sales subtask. In particular, we consider the problem of finding the set of bids to customers in simultaneous reverse auctions that maximizes the agent’s expected profit. The key technical challenge we address in this paper is that of determining the probability that a customer will accept a particular bid price. First, we compare several machine learning approaches to estimating the probability of bid acceptance. We then perform experiments in which we apply our learning method during actual gameplay to measure the impact on agent performance.

[1]  Peter Stone,et al.  ATTac-2001: A Learning, Autonomous Bidding Agent , 2002, AMEC.

[2]  Peter R. Wurman,et al.  PackaTAC: a conservative trading agent , 2004, SECO.

[3]  Yoram Singer,et al.  BoosTexter: A Boosting-based System for Text Categorization , 2000, Machine Learning.

[4]  Peter Stone,et al.  Modeling Auction Price Uncertainty Using Boosting-based Conditional Density Estimation , 2002, ICML.

[5]  Norman M. Sadeh,et al.  TAC-03 - A Supply-Chain Trading Competition , 2003, AI Mag..

[6]  Peter Stone,et al.  TacTex-03: a supply chain management agent , 2004, SECO.

[7]  Claudio Bartolini,et al.  Agent-based service composition through simultaneous negotiation in forward and reverse auctions , 2003, EC '03.

[8]  Richard D. Lawrence A Machine-Learning Approach to Optimal Bid Pricing , 2003 .

[9]  Amy Greenwald,et al.  Bid Determination in Simultaneous Auctions: A Case Study , 2001 .

[10]  Michael P. Wellman,et al.  STRATEGIC INTERACTIONS IN A SUPPLY CHAIN GAME , 2005, Comput. Intell..

[11]  Ian H. Witten,et al.  Data mining: practical machine learning tools and techniques with Java implementations , 2002, SGMD.

[12]  Vicky Papaioannou,et al.  A critical analysis of bid pricing models and support tool , 2000, Smc 2000 conference proceedings. 2000 ieee international conference on systems, man and cybernetics. 'cybernetics evolving to systems, humans, organizations, and their complex interactions' (cat. no.0.

[13]  Michael Carl Tschantz,et al.  Botticelli: a supply chain management agent designed to optimize under uncertainty , 2004, SECO.

[14]  Michael P. Wellman,et al.  Distributed Feedback Control for Decision Making on Supply Chains , 2004, ICAPS.