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Nov, 2024
无负样本自监督高斯图嵌入
Negative-Free Self-Supervised Gaussian Embedding of Graphs
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Yunhui Liu, Tieke He, Tao Zheng, Jianhua Zhao
TL;DR
本文解决了图对比学习(GCL)中对负样本依赖过重的问题,提出了一种无负样本的目标函数,从而实现节点表示的均匀性。研究表明,该方法能够在减少计算需求和内存消耗的同时,仍然取得与现有GCL方法相当的性能。
Abstract
Graph Contrastive Learning
(GCL) has recently emerged as a promising graph
Self-Supervised Learning
framework for learning discriminative node representations without labels. The widely adopted objective function
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