July 22, 2022, 2:49 p.m. | Abhishek Thakur

Abhishek Thakur www.youtube.com

Survival analysis should be a part of the toolbox of every data scientist - but unless you work in clinical research, it probably isn't. It originated in medical statistics (which is kind of evident from terminology), but the applications are way broader. In this episode we talk about when and why you should consider using survival analysis and show how to apply to different problems - including churn and customer lifetime value.
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