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 Trading Agent Competition


Competitive Benchmarking: Lessons Learned from the Trading Agent Competition

Ketter, Wolfgang (Erasmus University) | Symeonidis, Andreas (Aristotle University of Thessaloniki)

AI Magazine

Over the years, competitions have been important catalysts for progress in artificial intelligence. We describe the goal of the overall Trading Agent Competition and highlight particular competitions. We discuss its significance in the context of today's global market economy as well as AI research, the ways in which it breaks away from limiting assumptions made in prior work, and some of the advances it has engendered over the past ten years. Since its introduction in 2000, TAC has attracted more than 350 entries and brought together researchers from AI and beyond.



The 2002 Trading Agent Competition: An Overview of Agent Strategies

Greenwald, Amy

AI Magazine

This article summarizes 16 agent strategies that were designed for the 2002 Trading Agent Competition. Agent architects use numerous general-purpose AI techniques, including machine learning, planning, partially observable Markov decision processes, Monte Carlo simulations, and multiagent systems. Ultimately, the most successful agents were primarily heuristic based and domain specific.