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car » coar (Expand Search), care (Expand Search)
cers » ceres (Expand Search), cerys (Expand Search), cars (Expand Search)
chees » cheers (Expand Search), cheeks (Expand Search), chee (Expand Search)
cheese » cheerse (Expand Search), cheekse (Expand Search), cheee (Expand Search)
cheer » cheers (Expand Search), chee (Expand Search), cher (Expand Search)
bear » besar (Expand Search), year (Expand Search), near (Expand Search)
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6961
Identification of genetic effects underlying type 2 diabetes in South Asian and European populations
Published 2022Get full text
Journal Article -
6962
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6963
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6964
Towards practical data-driven predictive maintenance: a robust and generalizable deep learning approach
Published 2022Get full text
Thesis-Doctor of Philosophy -
6965
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6966
Detection and characterisation of a sixth Candida auris clade in Singapore: a genomic and phenotypic study
Published 2024Get full text
Journal Article -
6967
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6968
Towards robust sensing and recognition : from statistical learning to transfer learning
Published 2020“…Secondly, current domain adaptation methods require careful manual hyper-parameter tuning, which is not realistic for unmanned systems such as smart cars. To stabilize the training of adversarial domain adaptation, Max-margin Domain-Adversarial Training (MDAT) is developed in this thesis to realize stable convergence without cumbersome manuals. …”
Get full text
Thesis-Doctor of Philosophy