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Main Authors: Niu, Yue, Sun, Zhaokai, Yang, Jiayi, Cao, Xiaofeng, Fan, Rui, Sun, Xin, Wang, Hanli, Ye, Wei
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.02025
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author Niu, Yue
Sun, Zhaokai
Yang, Jiayi
Cao, Xiaofeng
Fan, Rui
Sun, Xin
Wang, Hanli
Ye, Wei
author_facet Niu, Yue
Sun, Zhaokai
Yang, Jiayi
Cao, Xiaofeng
Fan, Rui
Sun, Xin
Wang, Hanli
Ye, Wei
contents Despite their success in various domains, the growing dependence on GNNs raises a critical concern about the nature of the combinatorial reasoning underlying their predictions, which is often hidden within their black-box architectures. Addressing this challenge requires understanding how GNNs translate topological patterns into logical rules. However, current works only uncover the hard logical rules over graph concepts, which cannot quantify the contribution of each concept to prediction. Moreover, they are post-hoc interpretable methods that generate explanations after model training and may not accurately reflect the true combinatorial reasoning of GNNs, since they approximate it with a surrogate. In this work, we develop a graph concept bottleneck layer that can be integrated into any GNN architectures to guide them to predict the selected discriminative global graph concepts. The predicted concept scores are further projected to class labels by a sparse linear layer. It enforces the combinatorial reasoning of GNNs' predictions to fit the soft logical rule over graph concepts and thus can quantify the contribution of each concept. To further improve the quality of the concept bottleneck, we treat concepts as "graph words" and graphs as "graph sentences", and leverage language models to learn graph concept embeddings. Extensive experiments on multiple datasets show that our method GCBMs achieve state-of-the-art performance both in classification and interpretability.
format Preprint
id arxiv_https___arxiv_org_abs_2603_02025
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Revealing Combinatorial Reasoning of GNNs via Graph Concept Bottleneck Layer
Niu, Yue
Sun, Zhaokai
Yang, Jiayi
Cao, Xiaofeng
Fan, Rui
Sun, Xin
Wang, Hanli
Ye, Wei
Machine Learning
Artificial Intelligence
Despite their success in various domains, the growing dependence on GNNs raises a critical concern about the nature of the combinatorial reasoning underlying their predictions, which is often hidden within their black-box architectures. Addressing this challenge requires understanding how GNNs translate topological patterns into logical rules. However, current works only uncover the hard logical rules over graph concepts, which cannot quantify the contribution of each concept to prediction. Moreover, they are post-hoc interpretable methods that generate explanations after model training and may not accurately reflect the true combinatorial reasoning of GNNs, since they approximate it with a surrogate. In this work, we develop a graph concept bottleneck layer that can be integrated into any GNN architectures to guide them to predict the selected discriminative global graph concepts. The predicted concept scores are further projected to class labels by a sparse linear layer. It enforces the combinatorial reasoning of GNNs' predictions to fit the soft logical rule over graph concepts and thus can quantify the contribution of each concept. To further improve the quality of the concept bottleneck, we treat concepts as "graph words" and graphs as "graph sentences", and leverage language models to learn graph concept embeddings. Extensive experiments on multiple datasets show that our method GCBMs achieve state-of-the-art performance both in classification and interpretability.
title Revealing Combinatorial Reasoning of GNNs via Graph Concept Bottleneck Layer
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2603.02025