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Main Authors: Nair, Pratheeksha, Rabbany, Reihaneh
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.02451
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author Nair, Pratheeksha
Rabbany, Reihaneh
author_facet Nair, Pratheeksha
Rabbany, Reihaneh
contents Node classification in real world graphs often suffers from label scarcity and noise, especially in high stakes domains like human trafficking detection and misinformation monitoring. While direct supervision is limited, such graphs frequently contain weak signals, noisy or indirect cues, that can still inform learning. We propose WSNET, a novel weakly supervised graph contrastive learning framework that leverages these weak signals to guide robust representation learning. WSNET integrates graph structure, node features, and multiple noisy supervision sources through a contrastive objective tailored for weakly labeled data. Across three real world datasets and synthetic benchmarks with controlled noise, WSNET consistently outperforms state of the art contrastive and noisy label learning methods by up to 15% in F1 score. Our results highlight the effectiveness of contrastive learning under weak supervision and the promise of exploiting imperfect labels in graph based settings.
format Preprint
id arxiv_https___arxiv_org_abs_2506_02451
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Weak Supervision for Real World Graphs
Nair, Pratheeksha
Rabbany, Reihaneh
Machine Learning
I.2.6
Node classification in real world graphs often suffers from label scarcity and noise, especially in high stakes domains like human trafficking detection and misinformation monitoring. While direct supervision is limited, such graphs frequently contain weak signals, noisy or indirect cues, that can still inform learning. We propose WSNET, a novel weakly supervised graph contrastive learning framework that leverages these weak signals to guide robust representation learning. WSNET integrates graph structure, node features, and multiple noisy supervision sources through a contrastive objective tailored for weakly labeled data. Across three real world datasets and synthetic benchmarks with controlled noise, WSNET consistently outperforms state of the art contrastive and noisy label learning methods by up to 15% in F1 score. Our results highlight the effectiveness of contrastive learning under weak supervision and the promise of exploiting imperfect labels in graph based settings.
title Weak Supervision for Real World Graphs
topic Machine Learning
I.2.6
url https://arxiv.org/abs/2506.02451