2021
DOI: 10.48550/arxiv.2101.01294
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One vs Previous and Similar Classes Learning -- A Comparative Study

Daniel Cauchi,
Adrian Muscat

Abstract: When dealing with multi-class classification problems, it is common practice to build a model consisting of a series of binary classifiers using a learning paradigm which dictates how the classifiers are built and combined to discriminate between the individual classes. As new data enters the system and the model needs updating, these models would often need to be retrained from scratch. This work proposes three learning paradigms which allow trained models to be updated without the need of retraining from scr… Show more

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