Label Propagation through Linear Neighborhoods
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Abstract
In many practical data mining applications such as text classification, unlabeled training examples are readily available, but labeled ones are fairly expensive to obtain. Therefore, semi supervised learning algorithms have aroused considerable interests from the data mining and machine learning fields. In recent years, graph-based semi supervised learning has been becoming one of the most active research areas in the semi supervised learning community. In this paper, a novel graph-based semi supervised learning approach is proposed based on a linear neighborhood model, which assumes that each data point can be linearly reconstructed from its neighborhood. Our algorithm, named linear neighborhood propagation…
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713
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Authors
2Topics & keywords
Topics
Keywords
- Computer science
- Semi-supervised learning
- Graph
- Machine learning
- Supervised learning
- Artificial intelligence
- Data point
- Point (geometry)
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