ARTEMIS: A Neuro Symbolic Framework for Economically Constrained Market Dynamics
arXiv cs.LG / 3/20/2026
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Key Points
- ARTEMIS presents a neuro-symbolic framework for economically constrained market dynamics, integrating a continuous-time Laplace Neural Operator encoder, a neural SDE regularised by physics-informed losses, and a differentiable symbolic bottleneck to produce interpretable trading rules.
- It enforces economic plausibility through two novel regularisation terms: a Feynman-Kac PDE residual to penalise local no-arbitrage violations and a market price of risk penalty that bounds the instantaneous Sharpe ratio.
- The approach is evaluated against six baselines on four datasets (Jane Street, Optiver, Time-IMM, and DSLOB), achieving state-of-the-art directional accuracy and highest performance on DSLOB (64.96%) and Time-IMM (96.0%), with ablations showing the PDE loss is critical for accuracy.
- The authors argue ARTEMIS bridges deep learning power with financial transparency, while noting limitations (e.g., Optiver underperformance attributed to long sequence length and volatility-focused targets) and highlighting the framework's interpretability.
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