2021
DOI: 10.1109/access.2021.3116972
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A Meta Learning-Based Approach for Zero-Shot Co-Training

Abstract: The lack of labeled data is one of the main obstacles to the application of machine learning algorithms in a variety of domains. Semi-supervised learning, where additional samples are automatically labeled, is a common and cost-effective approach to address this challenge. A popular semi-supervised labeling approach is co-training, where two views of the data -achieved by the training of two learning models on different feature subsets -iteratively provide each other with additional newly-labeled samples. Desp… Show more

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