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Modal Logical Neural Networks for Financial AI

arXiv cs.LG / 3/16/2026

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Key Points

  • Introduces Modal Logical Neural Networks (MLNNs) that fuse neural networks with Kripke-based modal logic to enable differentiable reasoning about necessity, possibility, time, and knowledge in finance.
  • Proposes a differentiable "Logic Layer" with Necessity Neurons and Learnable Accessibility to encode regulatory guardrails, stress testing, and market surveillance constraints.
  • Presents four case studies showing how MLNN constraints promote trading compliance, reveal/strengthen trust networks for market surveillance, improve robustness under stress, and reduce robo-advisory hallucinations.
  • Positions MLNNs as a bridge between empirical AI performance and symbolically interpretable rule-based requirements for regulated financial settings.

Abstract

The financial industry faces a critical dichotomy in AI adoption: deep learning often delivers strong empirical performance, while symbolic logic offers interpretability and rule adherence expected in regulated settings. We use Modal Logical Neural Networks (MLNNs) as a bridge between these worlds, integrating Kripke semantics into neural architectures to enable differentiable reasoning about necessity, possibility, time, and knowledge. We illustrate MLNNs as a differentiable ``Logic Layer'' for finance by mapping core components, Necessity Neurons (\Box) and Learnable Accessibility (A_\theta), to regulatory guardrails, market stress testing, and collusion detection. Four case studies show how MLNN-style constraints can promote compliance in trading agents, help recover latent trust networks for market surveillance, encourage robustness under stress scenarios, and distinguish statistical belief from verified knowledge to help mitigate robo-advisory hallucinations.