Creating correct and capable classifiers - Ian Ozsvald

Описание к видео Creating correct and capable classifiers - Ian Ozsvald

PyData Amsterdam 2018

Iteratively building a classifier requires a mix of skill, diagnostic ability and guesswork. I'll lay out a framework that helps you build reliable classifiers with greater confidence and less random guesswork. Tools demonstrated will include sklearn, YellowBrick, Shapley and pandas_profiling.
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