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Adding CoTraining class implementation #42
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Pull Request Test Coverage Report for Build 3949884919
💛 - Coveralls |
stompsjo
commented
Jan 18, 2023
1 task
Closing in favor of #49 |
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This introduces a new class called
CoTraining
which can be used for semi-supervised co-training using logistic regression. This includes typical scikit-learn-esque methods like train and predict as well as methods for hyperparameter optimization and saving the model to file.