Semi Supervised Learning Algorithms.
Project description
Semi-Supervised Algorithms
This project has the following algorithms:
-
Co-Training
-
Tri-Training
-
Democratic Co-Learning
-
Density Peaks
- STDPNF
-
Ensemble
- RUSSEL
Release Notes
See the commit logs at https://github.com/dpr1005/Semisupervised-learning-and-instance-selection-methods.
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