Score: 0

"A 6 or a 9?": Ensemble Learning Through the Multiplicity of Performant Models and Explanations

Published: September 11, 2025 | arXiv ID: 2509.09073v1

By: Gianlucca Zuin, Adriano Veloso

Potential Business Impact:

Finds best computer answers from many good ones.

Business Areas:
A/B Testing Data and Analytics

Creating models from past observations and ensuring their effectiveness on new data is the essence of machine learning. However, selecting models that generalize well remains a challenging task. Related to this topic, the Rashomon Effect refers to cases where multiple models perform similarly well for a given learning problem. This often occurs in real-world scenarios, like the manufacturing process or medical diagnosis, where diverse patterns in data lead to multiple high-performing solutions. We propose the Rashomon Ensemble, a method that strategically selects models from these diverse high-performing solutions to improve generalization. By grouping models based on both their performance and explanations, we construct ensembles that maximize diversity while maintaining predictive accuracy. This selection ensures that each model covers a distinct region of the solution space, making the ensemble more robust to distribution shifts and variations in unseen data. We validate our approach on both open and proprietary collaborative real-world datasets, demonstrating up to 0.20+ AUROC improvements in scenarios where the Rashomon ratio is large. Additionally, we demonstrate tangible benefits for businesses in various real-world applications, highlighting the robustness, practicality, and effectiveness of our approach.

Page Count
40 pages

Category
Computer Science:
Machine Learning (CS)