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Exhaustive Testing of Trader-agents in Realistically Dynamic Continuous Double Auction Markets: AA Does Not Dominate

机译:在现实动态的连续双重拍卖市场中的贸易商的详尽测试:AA不占主导地位

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We analyse results from over 3.4million detailed market-trading simulation sessions which collectively confirm an unexpected result: in markets with dynamically varying supply and demand, the best-performing automated adaptive auction-market trading-agent currently known in the AI/Agents literature, i.e. Vytelingum's Adaptive-Aggressive (AA) strategy, can be routinely out-performed by simpler trading strategies. AA is the most recent in a series of AI trading-agent strategies proposed by various researchers over the past twenty years: research papers contributing major steps in this evolution of strategies have been published at IJCAI, in the Artificial Intelligence journal, and atAAMAS. The innovative step taken here is to brute-force exhaustively evaluate AA in market environments that are in various ways more realistic, closer to real-world financial markets, than the simple constrained abstract experimental evaluations routinely used in the prior academic AI/Agents research literature. We conclude that AA can indeed appear dominant when tested only against other AI-based trading agents in the highly simplified market scenarios that have become the methodological norm in the trading-agents academic research literature, but much of that success seems to be because AA was designed with exactly those simplified experimental markets in mind. As soon as we put AA in scenarios closer to real-world markets, modify it to fit those markets accordingly, and exhaustively test it against simpler trading agents, AA's dominance simply disappears.
机译:我们分析了超过34米的详细市场交易仿真会议,这些仿真会话集体证实了意想不到的结果:在市场上具有动态不同的供需,最佳的自动自动适应拍卖市场交易 - 目前在AI /代理文献中已知,即Vytelingum的自适应侵略性(AA)战略,可以通过更简单的交易策略来常规地进行。 AA是过去二十年来各种研究人员提出的一系列AI贸易代理战略中最新的:研究论文在Ijcai在人工智能学报和ATAAMAS中发表了这篇策略演变中的重大步骤。这里采取的创新步骤是蛮力彻底地评估市场环境中的AA,这些环境中的各种方式更加现实,更接近现实世界金融市场,而不是在现有的学术AI /代理人研究文献中定期使用的简单约束抽象实验评估。我们得出结论,当在高度简化的市场情景中仅对其他AI的交易代理处于贸易商学术研究文献中的方法论规范而测试时,AA确实可以显得占主导地位,但其中大部分成功似乎是因为AA是设计精确设计了那些简化的实验市场。一旦我们在更接近现实世界市场的情况下将AA放在场景中,将其修改以相应地适合这些市场,并以更简单的交易代理商详尽测试,AA的主导地位只是消失。

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