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From Accuracy to Auditability: A Survey of Determinism in Financial AI Systems

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Listed:
  • Ruizhe Zhou
  • Xiaoyang Liu
  • Gaoyuan Du
  • Yi Zheng
  • Shouxi Ren
  • Deepayan Chakrabarti
  • Dengdu Jiang

Abstract

Deploying machine learning in regulated financial environments -- credit risk, fraud detection, and anti-money laundering -- exposes critical vulnerabilities in algorithmic reproducibility. While early financial ML addressed statistical challenges such as backtest overfitting, deep neural networks and Generative AI have introduced mechanical nondeterminism rooted in hardware and architecture. This survey provides a systems perspective on reproducibility failures across three modalities now dominant in financial AI: tabular models (post-hoc explanation variance), graph networks (stochastic sampling and temporal asynchrony), and LLM-based agentic workflows (batch-dependent divergence and trajectory drift). We supplement the literature analysis with first-party experiments on public financial datasets -- quantifying explanation rank instability in credit scoring, prediction flip rates in GNN-based fraud detection, and tensor-parallel-induced output divergence in LLM entity extraction. We propose a layered evaluation framework linking modality-specific metrics (RBO, D_cos, TDI, PSD) to audit readiness, and empirically validate the complementarity of logit-level and semantic-level determinism measures.

Suggested Citation

  • Ruizhe Zhou & Xiaoyang Liu & Gaoyuan Du & Yi Zheng & Shouxi Ren & Deepayan Chakrabarti & Dengdu Jiang, 2026. "From Accuracy to Auditability: A Survey of Determinism in Financial AI Systems," Papers 2605.23955, arXiv.org, revised May 2026.
  • Handle: RePEc:arx:papers:2605.23955
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    References listed on IDEAS

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    1. Luyun Lin & Yiqing Wang, 2025. "SHAP Stability in Credit Risk Management: A Case Study in Credit Card Default Model," Papers 2508.01851, arXiv.org.
    2. Ballegeer, Matteo & Bogaert, Matthias & Benoit, Dries F., 2025. "Evaluating the stability of model explanations in instance-dependent cost-sensitive credit scoring," European Journal of Operational Research, Elsevier, vol. 326(3), pages 630-640.
    3. Julian Junyan Wang & Victor Xiaoqi Wang, 2025. "Assessing Consistency and Reproducibility in the Outputs of Large Language Models: Evidence Across Diverse Finance and Accounting Tasks," Papers 2503.16974, arXiv.org, revised Sep 2025.
    4. Luyun Lin & Yiqing Wang, 2025. "SHAP Stability in Credit Risk Management: A Case Study in Credit Card Default Model," Risks, MDPI, vol. 13(12), pages 1-16, December.
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