Classification of partially labelled data using "mixture of expert" models
<p>In this thesis, we are concerned with the classification of partially labeled data. By partially labeled data we mean data where measurements are available from experimental units which are known to belong to one of a set of known classes but whose individual membership to subclasses wit...
Main Author: | Teo, T |
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Other Authors: | Ripley, B |
Format: | Thesis |
Published: |
2017
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