资源论文Algebraic classifiers: a generic approach to fast cross-validation, online training, and parallel training

Algebraic classifiers: a generic approach to fast cross-validation, online training, and parallel training

2020-03-02 | |  78 |   45 |   0

Abstract

We use abstract algebra to derive new algorithms for fast cross-validation, online learning, and parallel learning. To use these algorithms on a classification model, we must show that the model has appropriate algebraic structure. It is easy to give algebraic structure to some models, and we do this explicitly for Bayesian classifiers and a novel variation of decision stumps called HomStumps. But not all classifiers have an obvious structure, so we introduce the Free HomTrainer. This can be used to give a “generic” algebraic structure to any classifier. We use the Free HomTrainer to give algebraic structure to bagging and boosting. In so doing, we derive novel online and parallel algorithms, and present the first fast crossvalidation schemes for these classifiers.

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