Adaptive-Aggressive Traders Don't Dominate
Daniel Snashall, Dave Cliff

TL;DR
This study exhaustively tests the Adaptive-Aggressive trading algorithm across numerous market scenarios and finds it is consistently outperformed by IBM's GDX algorithm, challenging previous claims of its superiority.
Contribution
It demonstrates the importance of large-scale, exhaustive testing of trading algorithms, revealing that AA is outperformed by GDX even in simple environments, contrary to prior beliefs.
Findings
AA is outperformed by GDX in simple market environments
Exhaustive testing reveals more accurate algorithm performance comparisons
Previous claims of AA's superiority are questionable due to limited testing
Abstract
For more than a decade Vytelingum's Adaptive-Aggressive (AA) algorithm has been recognized as the best-performing automated auction-market trading-agent strategy currently known in the AI/Agents literature; in this paper, we demonstrate that it is in fact routinely outperformed by another algorithm when exhaustively tested across a sufficiently wide range of market scenarios. The novel step taken here is to use large-scale compute facilities to brute-force exhaustively evaluate AA in a variety of market environments based on those used for testing it in the original publications. Our results show that even in these simple environments AA is consistently out-performed by IBM's GDX algorithm, first published in 2002. We summarize here results from more than one million market simulation experiments, orders of magnitude more testing than was reported in the original publications that first…
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