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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.

Abstract

Deep learning models in quantitative finance often operate as black boxes, lacking interpretability and failing to incorporate fundamental economic principles such as no-arbitrage constraints. This paper introduces ARTEMIS (Arbitrage-free Representation Through Economic Models and Interpretable Symbolics), a novel neuro-symbolic framework combining a continuous-time Laplace Neural Operator encoder, a neural stochastic differential equation regularised by physics-informed losses, and a differentiable symbolic bottleneck that distils interpretable trading rules. The model enforces economic plausibility via two novel regularisation terms: a Feynman-Kac PDE residual penalising local no-arbitrage violations, and a market price of risk penalty bounding the instantaneous Sharpe ratio. We evaluate ARTEMIS against six strong baselines on four datasets: Jane Street, Optiver, Time-IMM, and DSLOB (a synthetic crash regime). Results demonstrate ARTEMIS achieves state-of-the-art directional accuracy, outperforming all baselines on DSLOB (64.96%) and Time-IMM (96.0%). A comprehensive ablation study confirms each component's contribution: removing the PDE loss reduces directional accuracy from 64.89% to 50.32%. Underperformance on Optiver is attributed to its long sequence length and volatility-focused target. By providing interpretable, economically grounded predictions, ARTEMIS bridges the gap between deep learning's power and the transparency demanded in quantitative finance.