A Systematic Evaluation Method of Graph-Derived Signals for Tabular Machine Learning
Author/s
Heidrich, Mario; Heidemann, Jeffrey; Buchkremer, Rüdiger; Wandosell Fernández de Bobadilla, GonzaloDate
2026-03-09Discipline/s
Administración y Dirección de EmpresasSubject/s
Graph-derived signalsTabular machine learning
Graph signal taxonomy
Statistical significance
Robustness analysis
Fraud detection
Abstract
While graph-derived signals are widely used in tabular learning, existing studies typically rely on limited experimental setups and average performance comparisons, leaving the statistical reliability and robustness of observed gains largely unexplored. Consequently, it remains unclear which signals provide consistent and robust improvements. This paper presents a taxonomy-driven empirical analysis of graph-derived signals for tabular machine learning. We propose a unified and reproducible evaluation method to systematically assess which categories of graph-derived signals yield statistically significant and robust performance improvements. The method provides an extensible setup for the controlled integration of diverse graph-derived signals into tabular learning pipelines. To ensure a fair and rigorous comparison, it incorporates automated hyperparameter optimization, multi-seed statistical evaluation, formal significance testing, and robustness analysis under
graph perturbations. W...





