Integrate semi-supervised learning to MOA#189
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MinhHuong wants to merge 26 commits intoWaikato:masterfrom
Open
Integrate semi-supervised learning to MOA#189MinhHuong wants to merge 26 commits intoWaikato:masterfrom
MinhHuong wants to merge 26 commits intoWaikato:masterfrom
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…first implemented
…SemiSupervisedStream
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In this commit, a new tab panel for Semi-supervised Learning will be pushed to MOA. New functionalities include:
Semi-supervised streams that can simulate a stream with randomly removed labels
New learners for SSL found in classifiers/semisupervised (Cluster-n-Label & Self-training)
CluStream also has an adaptation to make it compatible to use with SSL learners (clusterers/semisupervised)
Attribute Observers that compute the similarity between categorical attributes according to [1], useful for computing distance for clustering module
[1] S. Boriah, V. Chandola, V. Kumar. "Similarity Measures for Categorical Data: A Comparative Evaluation."