Strengthening structural baselines for graph classification using Local Topological Profile

J. Adamczyk, W. Czech
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Abstract

We present the analysis of the topological graph descriptor Local Degree Profile (LDP), which forms a widely used structural baseline for graph classification. Our study focuses on model evaluation in the context of the recently developed fair evaluation framework, which defines rigorous routines for model selection and evaluation for graph classification, ensuring reproducibility and comparability of the results. Based on the obtained insights, we propose a new baseline algorithm called Local Topological Profile (LTP), which extends LDP by using additional centrality measures and local vertex descriptors. The new approach provides the results outperforming or very close to the latest GNNs for all datasets used. Specifically, state-of-the-art results were obtained for 4 out of 9 benchmark datasets. We also consider computational aspects of LDP-based feature extraction and model construction to propose practical improvements affecting execution speed and scalability. This allows for handling modern, large datasets and extends the portfolio of benchmarks used in graph representation learning. As the outcome of our work, we obtained LTP as a simple to understand, fast and scalable, still robust baseline, capable of outcompeting modern graph classification models such as Graph Isomorphism Network (GIN). We provide open-source implementation at \href{https://github.com/j-adamczyk/LTP}{GitHub}.
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利用局部拓扑轮廓增强图分类的结构基线
我们分析了拓扑图描述子局部度轮廓(LDP),它形成了一个广泛使用的图分类结构基线。我们的研究重点是在最近开发的公平评估框架的背景下进行模型评估,该框架为图分类的模型选择和评估定义了严格的例程,确保了结果的可重复性和可比性。基于所获得的见解,我们提出了一种新的基线算法,称为局部拓扑轮廓(LTP),它通过使用额外的中心性度量和局部顶点描述符扩展了LDP。对于所有使用的数据集,新方法提供的结果优于或非常接近最新的gnn。具体来说,9个基准数据集中的4个获得了最先进的结果。我们还考虑了基于ldp的特征提取和模型构建的计算方面,以提出影响执行速度和可扩展性的实际改进。这允许处理现代的大型数据集,并扩展了图表示学习中使用的基准组合。作为我们工作的结果,我们获得了LTP作为一个简单易懂、快速、可扩展、仍然健壮的基线,能够胜过现代图分类模型,如图同构网络(GIN)。我们在\href{https://github.com/j-adamczyk/LTP}{GitHub}上提供了开源实现。
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