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Institution Date Title Author
元智大學 Oct-21 Deep Ensemble Learning Approaches in Healthcare to Enhance the Prediction and Diagnosing Performance: The Workflows, Deployments, and Surveys on the Statistical, Image-Based, and Sequential Datasets Duc-Khanh Nguyen; Chung-Hsien Lan; Chan C.-L.
元智大學 Nov-21 Addressing data imbalance problems in ligand-binding site prediction using a variational autoencoder and a convolutional neural network Trinh-Trung-Duong Nguyen; Duc-Khanh Nguyen; Ou Y.-Y.
元智大學 2023-05-12 A deep learning approach to Lung Nodule Growth Prediction using CT image combined with Demographic and image features Ai-Hsien Adams Li; Duc-Khanh Nguyen; Yen-Jun Lai; Ting-Ying Chien; Yen-Ling Chiu; Chan C.-L.; Pan-Chyr Yang
元智大學 2023-05-12 A deep learning approach to Lung Nodule Growth Prediction using CT image combined with Demographic and image features Ai-Hsien Adams Li; Duc-Khanh Nguyen; Yen-Jun Lai; Ting-Ying Chien; Yen-Ling Chiu; Chan C.-L.; Pan-Chyr Yang
元智大學 2023-05-12 A deep learning approach to Lung Nodule Growth Prediction using CT image combined with Demographic and image features Ai-Hsien Adams Li; Duc-Khanh Nguyen; Yen-Jun Lai; Ting-Ying Chien; Yen-Ling Chiu; Chan C.-L.; Pan-Chyr Yang
元智大學 2021/5/14 Deep Stacked Generalization Ensemble Learning Models in Early Diagnosis of Depression Illness from Wearable Devices Data Duc-Khanh Nguyen; Chan C.-L.; Ai-Hsien Adams Li; Dinh-Van Phan
元智大學 2019-01-04 Auto-encoder Neural Network for Manufacturing detection: An imbalanced data case Chien-Lung Chan; Duc-Khanh Nguyen

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