2021
DOI: 10.14232/actacyb.288006
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Zero Initialized Active Learning with Spectral Clustering using Hungarian Method

Abstract: Supervised machine learning tasks often require a large number of labeled training data to set up a model, and then prediction - for example the classification - is carried out based on this model. Nowadays tremendous amount of data is available on the web or in data warehouses, although only a portion of those data is annotated and the labeling process can be tedious, expensive and time consuming. Active learning tries to overcome this problem by reducing the labeling cost through allowing the learning system… Show more

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