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  • title: Data driven semi-supervised learning
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            Data driven semi-supervised learning
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            Data driven semi-supervised learning

            Dec 6, 2021

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            Nina Balcan

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            Dravy Sharma

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            About

            We consider a novel data driven approach for designing semi-supervised learning algorithms that can effectively learn with only a small number of labeled examples. We focus on graph-based techniques, where the unlabeled examples are connected in a graph under the implicit assumption that similar nodes likely have similar labels. Over the past two decades, several elegant graph-based semi-supervised learning algorithms for inferring the labels of the unlabeled examples given the graph and a few l…

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