Handling noisy data is a longstanding challenge in machine learning, and the complexity increases when working with graph structured data. In domains such as social networks, biological networks, and financial systems, noisy labels can significantly impact model performance, leading to unreliable predictions. Despite its importance, graph classification under label noise remains a relatively underexplored problem. In this competition, Learning with Noisy Graph Labels, we invite researchers and practitioners to develop noise robust approaches for graph classification. By fostering the development of robust models, it enhances the reliability of graph based predictions in real world scenarios where obtaining clean labels is difficult. The competition also promotes broader adoption of graph learning in industry by providing more resilient decision making tools for noisy labeled data. In addition, it contributes to benchmarking and standardization, offering a baseline data set and evaluation protocol to drive future research in noise resistant graph classification.

IJCNN 2025 Competition: Learning with Noisy Graph Labels / Wani, Farooq; Bucarelli, Maria Sofia; Di Teodoro, Giulia; Di Francesco, Andrea Giuseppe. - (2025), pp. 1-7. ( IEEE International Joint Conference on Neural Networks Rome; Italy ).

IJCNN 2025 Competition: Learning with Noisy Graph Labels

Farooq Wani
Primo
Software
;
Maria Sofia Bucarelli;Giulia Di Teodoro;Andrea Giuseppe Di Francesco
Ultimo
Supervision
2025

Abstract

Handling noisy data is a longstanding challenge in machine learning, and the complexity increases when working with graph structured data. In domains such as social networks, biological networks, and financial systems, noisy labels can significantly impact model performance, leading to unreliable predictions. Despite its importance, graph classification under label noise remains a relatively underexplored problem. In this competition, Learning with Noisy Graph Labels, we invite researchers and practitioners to develop noise robust approaches for graph classification. By fostering the development of robust models, it enhances the reliability of graph based predictions in real world scenarios where obtaining clean labels is difficult. The competition also promotes broader adoption of graph learning in industry by providing more resilient decision making tools for noisy labeled data. In addition, it contributes to benchmarking and standardization, offering a baseline data set and evaluation protocol to drive future research in noise resistant graph classification.
2025
IEEE International Joint Conference on Neural Networks
Graph Neural Networks; Graph Noisy Labels
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
IJCNN 2025 Competition: Learning with Noisy Graph Labels / Wani, Farooq; Bucarelli, Maria Sofia; Di Teodoro, Giulia; Di Francesco, Andrea Giuseppe. - (2025), pp. 1-7. ( IEEE International Joint Conference on Neural Networks Rome; Italy ).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1767420
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