HeteroSample: Meta-path Guided Sampling for Heterogeneous Graph Representation Learning
Ao Liu, Jing Chen, Ruiying Du, Cong Wu, Yebo Feng, Teng Li, Jianfeng, Ma

TL;DR
HeteroSample is a novel sampling method for heterogeneous IoT graphs that preserves structural and semantic information, improving analysis accuracy and efficiency in complex IoT systems.
Contribution
It introduces a meta-path guided sampling strategy that maintains graph heterogeneity and semantic patterns, enhancing scalability and insight quality in IoT graph analysis.
Findings
Achieves up to 15% higher F1 scores in link prediction and node classification.
Reduces runtime by 20% compared to state-of-the-art methods.
Effectively preserves structural and semantic properties of IoT graphs.
Abstract
The rapid expansion of Internet of Things (IoT) has resulted in vast, heterogeneous graphs that capture complex interactions among devices, sensors, and systems. Efficient analysis of these graphs is critical for deriving insights in IoT scenarios such as smart cities, industrial IoT, and intelligent transportation systems. However, the scale and diversity of IoT-generated data present significant challenges, and existing methods often struggle with preserving the structural integrity and semantic richness of these complex graphs. Many current approaches fail to maintain the balance between computational efficiency and the quality of the insights generated, leading to potential loss of critical information necessary for accurate decision-making in IoT applications. We introduce HeteroSample, a novel sampling method designed to address these challenges by preserving the structural…
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Taxonomy
TopicsAdvanced Graph Neural Networks
