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Autori principali: Zhang, Qin, Li, Xiaowei, Lu, Jiexin, Qiu, Liping, Pan, Shirui, Chen, Xiaojun, Chen, Junyang
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2402.18495
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author Zhang, Qin
Li, Xiaowei
Lu, Jiexin
Qiu, Liping
Pan, Shirui
Chen, Xiaojun
Chen, Junyang
author_facet Zhang, Qin
Li, Xiaowei
Lu, Jiexin
Qiu, Liping
Pan, Shirui
Chen, Xiaojun
Chen, Junyang
contents Open-set graph learning is a practical task that aims to classify the known class nodes and to identify unknown class samples as unknowns. Conventional node classification methods usually perform unsatisfactorily in open-set scenarios due to the complex data they encounter, such as out-of-distribution (OOD) data and in-distribution (IND) noise. OOD data are samples that do not belong to any known classes. They are outliers if they occur in training (OOD noise), and open-set samples if they occur in testing. IND noise are training samples which are assigned incorrect labels. The existence of IND noise and OOD noise is prevalent, which usually cause the ambiguity problem, including the intra-class variety problem and the inter-class confusion problem. Thus, to explore robust open-set learning methods is necessary and difficult, and it becomes even more difficult for non-IID graph data.To this end, we propose a unified framework named ROG$_{PL}$ to achieve robust open-set learning on complex noisy graph data, by introducing prototype learning. In specific, ROG$_{PL}$ consists of two modules, i.e., denoising via label propagation and open-set prototype learning via regions. The first module corrects noisy labels through similarity-based label propagation and removes low-confidence samples, to solve the intra-class variety problem caused by noise. The second module learns open-set prototypes for each known class via non-overlapped regions and remains both interior and border prototypes to remedy the inter-class confusion problem.The two modules are iteratively updated under the constraints of classification loss and prototype diversity loss. To the best of our knowledge, the proposed ROG$_{PL}$ is the first robust open-set node classification method for graph data with complex noise.
format Preprint
id arxiv_https___arxiv_org_abs_2402_18495
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ROG$_{PL}$: Robust Open-Set Graph Learning via Region-Based Prototype Learning
Zhang, Qin
Li, Xiaowei
Lu, Jiexin
Qiu, Liping
Pan, Shirui
Chen, Xiaojun
Chen, Junyang
Machine Learning
Open-set graph learning is a practical task that aims to classify the known class nodes and to identify unknown class samples as unknowns. Conventional node classification methods usually perform unsatisfactorily in open-set scenarios due to the complex data they encounter, such as out-of-distribution (OOD) data and in-distribution (IND) noise. OOD data are samples that do not belong to any known classes. They are outliers if they occur in training (OOD noise), and open-set samples if they occur in testing. IND noise are training samples which are assigned incorrect labels. The existence of IND noise and OOD noise is prevalent, which usually cause the ambiguity problem, including the intra-class variety problem and the inter-class confusion problem. Thus, to explore robust open-set learning methods is necessary and difficult, and it becomes even more difficult for non-IID graph data.To this end, we propose a unified framework named ROG$_{PL}$ to achieve robust open-set learning on complex noisy graph data, by introducing prototype learning. In specific, ROG$_{PL}$ consists of two modules, i.e., denoising via label propagation and open-set prototype learning via regions. The first module corrects noisy labels through similarity-based label propagation and removes low-confidence samples, to solve the intra-class variety problem caused by noise. The second module learns open-set prototypes for each known class via non-overlapped regions and remains both interior and border prototypes to remedy the inter-class confusion problem.The two modules are iteratively updated under the constraints of classification loss and prototype diversity loss. To the best of our knowledge, the proposed ROG$_{PL}$ is the first robust open-set node classification method for graph data with complex noise.
title ROG$_{PL}$: Robust Open-Set Graph Learning via Region-Based Prototype Learning
topic Machine Learning
url https://arxiv.org/abs/2402.18495