Weisfeiler Lehman Test on Combinatorial Complexes: Generalized Expressive Power of Topological Neural Networks

arXiv cs.LG / 5/4/2026

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Key Points

  • The paper proposes the Combinatorial Complex Weisfeiler-Lehman (CCWL) test as an axiomatic, WL-style framework for topological neural networks defined on combinatorial complexes.
  • CCWL unifies different topological message-passing notions by introducing four neighborhood relation types, clarifying the expressive power of higher-order WL variants.
  • The authors prove that among four adjacent WL tests, using only upper and lower neighborhood information is sufficient to match the full CCWL expressivity across combinatorial-complex topological structures.
  • They introduce the Combinatorial Complex Isomorphism Network (CCIN), show it on synthetic and real-world benchmarks, and report that it outperforms baseline methods.
  • Overall, the work aims to provide a single theoretical foundation connecting WL-style graph tests, topological deep learning, and combinatorial-complex neural architectures.

Abstract

Combinatorial complexes have unified set-based (e.g., graphs, hypergraphs) and part-whole (e.g., simplicial, cellular complexes) structures into a common topological framework. Existing topological neural networks and Weisfeiler-Lehman variants remain fragmented, lacking a unified theoretical foundation for topological deep learning. In this work, we introduce the Combinatorial Complex Weisfeiler-Lehman (CCWL) test, an axiomatic-style extension of the WL test to combinatorial complexes. CCWL formalizes topological message passing through four types of neighborhood relation and provides a unified perspective on the expressive power of higher-order variants. We further prove that upper and lower neighborhoods are sufficient among the four adjacent WL tests to reach the expressivity of the full CCWL framework across topological structures of combinatorial complexes. Building on this framework, we also propose the Combinatorial Complex Isomorphism Network (CCIN) and evaluate it on synthetic and real-world benchmarks. Experimental results indicate CCIN outperforms baseline methods and offers a generalized expressive framework for topological deep learning.