ARTEMIS: A Neuro Symbolic Framework for Economically Constrained Market Dynamics
Rahul D Ray

TL;DR
ARTEMIS is a neuro-symbolic framework that integrates economic principles into deep learning models for finance, improving interpretability and performance in market prediction tasks.
Contribution
It introduces a novel neuro-symbolic approach combining physics-informed regularization and symbolic rule extraction to enforce economic plausibility in financial models.
Findings
Achieves state-of-the-art accuracy on multiple datasets
Effectively enforces no-arbitrage constraints
Provides interpretable trading rules
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…
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Taxonomy
TopicsStock Market Forecasting Methods · Explainable Artificial Intelligence (XAI) · Generative Adversarial Networks and Image Synthesis
