Adaptive Feature Selection and Feature Fusion for Semi-supervised Classification

Volume: 91, Issue: 5, Pages: 521 - 537
Published: Mar 28, 2018
Abstract
Labeling of data is often difficult, expensive, and time consuming since efforts of experienced human annotators are required, and often we have large number of samples and noisy data. Co-training is a practical and powerful semi-supervised learning method as it yields high classification accuracy with a training data set containing only a small set of labeled data. For successful co-training performance, two important conditions need to be...
Paper Details
Title
Adaptive Feature Selection and Feature Fusion for Semi-supervised Classification
Published Date
Mar 28, 2018
Volume
91
Issue
5
Pages
521 - 537
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