2020
DOI: 10.1007/s13748-020-00212-4
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Large-width machine learning algorithm

Abstract: We introduce an algorithm, called Large Width (LW), that produces a multi-category classifier (defined on a distance space) with the property that the classifier has a large 'sample width' (width is a notion similar to classification margin). LW is an incremental instance-based (also know as 'lazy') learning algorithm. Given a sample of labeled and unlabeled examples it iteratively picks the next unlabeled example and classifies it while maintaining a large distance between each labeled example and its nearest… Show more

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