Baseline modeling is a necessary part of model validation. In our expert opinion, it should be required before model deployment. There are many baseline modeling types and in this episode, we're discussing their use cases, strengths, and weaknesses. We're sure you'll appreciate a fresh take on how to improve your modeling practices.
Show notes
Introductions and news: why reporting and visibility is a good thing for AI 0:03
Understanding baseline modeling for machine learning 7:41
Classification baselines and model performance comparison 19:40
Exploring regression and more advanced baselines for modeling 24:11
Conclusions 35:39
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