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Classic machine learning algorithms

Author: Johann Faouzi, Olivier Colliot

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Description: Classic machine learning algorithms, is a chapter that presents the main classical machine learning algorithms, focusing on supervised learning methods for classification and regression, as well as strategies to mitigate overfitting.

Subject: Machine Learning

Pages: 61

Megabytes: 0.89 MB

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