2022
DOI: 10.1109/tsm.2022.3179669
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EveSyncIAI: Event Synchronization Industrial Augmented Intelligence for Fault Diagnosis

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Cited by 3 publications
(1 citation statement)
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“…[ 31 ] The sub‐manifolds in both labelled data and unlabelled data is introduced into the objective function and solves the ‘multimodality’ problem in semi supervised learning. What is more, Laplace regularized least squares (LapRLS) [ 32 ] and Laplace support vector machine (LapSVM) [ 33 ] are special forms of MR. LapSVM is an effective semi‐supervised classifier, in which the internal manifold structure of unlabelled samples is integrated into traditional SVM as a regularization term. However, the Laplace matrix in the regularization term of LapSVM seriously depends on the given parameter.…”
Section: Introductionmentioning
confidence: 99%
“…[ 31 ] The sub‐manifolds in both labelled data and unlabelled data is introduced into the objective function and solves the ‘multimodality’ problem in semi supervised learning. What is more, Laplace regularized least squares (LapRLS) [ 32 ] and Laplace support vector machine (LapSVM) [ 33 ] are special forms of MR. LapSVM is an effective semi‐supervised classifier, in which the internal manifold structure of unlabelled samples is integrated into traditional SVM as a regularization term. However, the Laplace matrix in the regularization term of LapSVM seriously depends on the given parameter.…”
Section: Introductionmentioning
confidence: 99%