Fair and Explainable Credit-Scoring under Concept Drift: Adaptive Explanation Frameworks for Evolving Populations
Shivogo John

TL;DR
This paper develops adaptive explanation frameworks for credit scoring models that remain stable, fair, and accurate amid evolving data distributions caused by concept drift.
Contribution
It introduces three novel adaptive SHAP variants that recalibrate explanations dynamically, improving stability and fairness in evolving credit models.
Findings
Adaptive methods outperform static SHAP in stability metrics
Rebaselined and surrogate explanations reduce demographic disparities
Adaptive explanations maintain accuracy under concept drift
Abstract
Evolving borrower behaviors, shifting economic conditions, and changing regulatory landscapes continuously reshape the data distributions underlying modern credit-scoring systems. Conventional explainability techniques, such as SHAP, assume static data and fixed background distributions, making their explanations unstable and potentially unfair when concept drift occurs. This study addresses that challenge by developing adaptive explanation frameworks that recalibrate interpretability and fairness in dynamically evolving credit models. Using a multi-year credit dataset, we integrate predictive modeling via XGBoost with three adaptive SHAP variants: (A) per-slice explanation reweighting that adjusts for feature distribution shifts, (B) drift-aware SHAP rebaselining with sliding-window background samples, and (C) online surrogate calibration using incremental Ridge regression. Each method…
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Taxonomy
TopicsData Stream Mining Techniques · Financial Distress and Bankruptcy Prediction · Explainable Artificial Intelligence (XAI)
