TL;DR
This paper demonstrates that simple, non-AI trading strategies can outperform complex AI/ML-based strategies in financial markets, highlighting methodological flaws in previous research and emphasizing the need for more rigorous testing.
Contribution
It reveals that many published AI/ML trading strategies are outperformed by extremely simple strategies, due to inadequate evaluation methods in prior research.
Findings
Simple strategies can outperform complex AI/ML traders
Extensive testing reveals flaws in previous evaluation methods
AI/ML strategies may be answering the wrong questions
Abstract
There's a long tradition of research using computational intelligence (methods from artificial intelligence (AI) and machine learning (ML)), to automatically discover, implement, and fine-tune strategies for autonomous adaptive automated trading in financial markets, with a sequence of research papers on this topic published at AI conferences such as IJCAI and in journals such as Artificial Intelligence: we show here that this strand of research has taken a number of methodological mis-steps and that actually some of the reportedly best-performing public-domain AI/ML trading strategies can routinely be out-performed by extremely simple trading strategies that involve no AI or ML at all. The results that we highlight here could easily have been revealed at the time that the relevant key papers were published, more than a decade ago, but the accepted methodology at the time of those…
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