Search Results for author: Huizhe Zhang

Found 2 papers, 2 papers with code

SGHormer: An Energy-Saving Graph Transformer Driven by Spikes

1 code implementation26 Mar 2024 Huizhe Zhang, Jintang Li, Liang Chen, Zibin Zheng

However, the costs behind outstanding performances of GTs are higher energy consumption and computational overhead.

Representation Learning

A Graph is Worth 1-bit Spikes: When Graph Contrastive Learning Meets Spiking Neural Networks

1 code implementation30 May 2023 Jintang Li, Huizhe Zhang, Ruofan Wu, Zulun Zhu, Baokun Wang, Changhua Meng, Zibin Zheng, Liang Chen

While contrastive self-supervised learning has become the de-facto learning paradigm for graph neural networks, the pursuit of higher task accuracy requires a larger hidden dimensionality to learn informative and discriminative full-precision representations, raising concerns about computation, memory footprint, and energy consumption burden (largely overlooked) for real-world applications.

Contrastive Learning Self-Supervised Learning

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