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Main Authors: Feng, Shihan, Zhang, Cheng, Xi, Michael, Hsu, Ethan, Semenova, Lesia, Zhong, Chudi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.19636
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author Feng, Shihan
Zhang, Cheng
Xi, Michael
Hsu, Ethan
Semenova, Lesia
Zhong, Chudi
author_facet Feng, Shihan
Zhang, Cheng
Xi, Michael
Hsu, Ethan
Semenova, Lesia
Zhong, Chudi
contents Modern neural networks rarely have a single way to be right. For many tasks, multiple models can achieve identical performance while relying on different features or reasoning patterns, a property known as the Rashomon Effect. However, uncovering this diversity in deep architectures is challenging as their continuous parameter spaces contain countless near-optimal solutions that are numerically distinct but often behaviorally similar. We introduce Rashomon Concept Bottleneck Models, a framework that learns multiple neural networks which are all accurate yet reason through distinct human-understandable concepts. By combining lightweight adapter modules with a diversity-regularized training objective, our method constructs a diverse set of deep concept-based models efficiently without retraining from scratch. The resulting networks provide fundamentally different reasoning processes for the same predictions, revealing how concept reliance and decision making vary across equally performing solutions. Our framework enables systematic exploration of data-driven reasoning diversity in deep models, offering a new mechanism for auditing, comparison, and alignment across equally accurate solutions.
format Preprint
id arxiv_https___arxiv_org_abs_2511_19636
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Many Ways to be Right: Rashomon Sets for Concept-Based Neural Networks
Feng, Shihan
Zhang, Cheng
Xi, Michael
Hsu, Ethan
Semenova, Lesia
Zhong, Chudi
Machine Learning
Artificial Intelligence
Modern neural networks rarely have a single way to be right. For many tasks, multiple models can achieve identical performance while relying on different features or reasoning patterns, a property known as the Rashomon Effect. However, uncovering this diversity in deep architectures is challenging as their continuous parameter spaces contain countless near-optimal solutions that are numerically distinct but often behaviorally similar. We introduce Rashomon Concept Bottleneck Models, a framework that learns multiple neural networks which are all accurate yet reason through distinct human-understandable concepts. By combining lightweight adapter modules with a diversity-regularized training objective, our method constructs a diverse set of deep concept-based models efficiently without retraining from scratch. The resulting networks provide fundamentally different reasoning processes for the same predictions, revealing how concept reliance and decision making vary across equally performing solutions. Our framework enables systematic exploration of data-driven reasoning diversity in deep models, offering a new mechanism for auditing, comparison, and alignment across equally accurate solutions.
title Many Ways to be Right: Rashomon Sets for Concept-Based Neural Networks
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2511.19636