2021
DOI: 10.1007/s43674-021-00015-7
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Missing label imputation through inception-based semi-supervised ensemble learning

Abstract: In classification tasks, unlabeled data bring the uncertainty in the learning process, which may result in the degradation of the performance. In this paper, we propose a novel semi-supervised inception neural network ensemble-based architecture to achieve missing label imputation. The main idea of the proposed architecture is to use smaller ensembles within a larger ensemble to involve diverse ways of missing label imputation and internal transformation of feature representation, towards enhancing the predict… Show more

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Cited by 10 publications
(1 citation statement)
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“…In addition, there is no mechanism to reduce the noise in the output image. Deep learning has found application in supply chain management [57], health care systems [58], IoT [59], and missing data imputation [11,54,56]. In recent years, deep learningbased methods [5,18,44,37,38] have outperformed classical image enhancement techniques.…”
Section: Upsample Bymentioning
confidence: 99%
“…In addition, there is no mechanism to reduce the noise in the output image. Deep learning has found application in supply chain management [57], health care systems [58], IoT [59], and missing data imputation [11,54,56]. In recent years, deep learningbased methods [5,18,44,37,38] have outperformed classical image enhancement techniques.…”
Section: Upsample Bymentioning
confidence: 99%