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DiGRAF: Diffeomorphic Graph-Adaptive Activation Function

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posted on 2025-04-28, 18:53 authored by Krishna Sri Ipsit MantriKrishna Sri Ipsit Mantri

In this paper, we propose a novel activation function tailored specifically for graph data in Graph Neural Networks (GNNs). Motivated by the need for graph-adaptive and flexible activation functions, we introduce \ourmethod, leveraging Continuous Piecewise-Affine Based (CPAB) transformations, which we augment with an additional GNN to learn a graph-adaptive diffeomorphic activation function in an end-to-end manner. In addition to its graph-adaptivity and flexibility, DiGRAF also possesses properties that are widely recognized as desirable for activation functions, such as differentiability, boundedness within the domain, and computational efficiency.

We conduct an extensive set of experiments across diverse datasets and tasks, demonstrating a consistent and superior performance of DiGRAF compared to traditional and graph-specific activation functions, highlighting its effectiveness as an activation function for GNNs. Our code is available at \url{https://github.com/ipsitmantri/DiGRAF}.

History

Degree Type

  • Master of Science

Department

  • Computer Science

Campus location

  • West Lafayette

Advisor/Supervisor/Committee Chair

Bruno Ribeiro

Additional Committee Member 2

Yexiang Xue

Additional Committee Member 3

Tamal Krishna Dey

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