articleAug 21, 2003Closed access
Transductive learning via spectral graph partitioning
Abstract
We present a new method for transductive learning, which can be seen as a transductive version of the k nearest-neighbor classifier. Unlike for many other transductive learning methods, the training problem has a meaningful relaxation that can be solved globally optimally using spectral methods. We propose an algorithm that robustly achieves good generalization performance and that can be trained efficiently. A key advantage of the algorithm is that it does not require additional heuristics to avoid unbalanced splits. Furthermore, we show a connection to transductive Support Vector Machines, and that an effective Co-Training algorithm arises as a special case. 1.
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Topics
Keywords
- Computer science
- Artificial intelligence
- Heuristics
- Graph
- Machine learning
- Key (lock)
- Support vector machine
- Generalization
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