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Explainable machine learning (2022, 1st lecture): Introduction

Lecture series 'Explainable machine learning' (University of Bonn, winter term 2022)

Topics covered:
- What is explainable machine learning?
- Inherently interpretable models: linear regression and decision trees

Slides: https://uni-bonn.sciebo.de/s/dj6OcgHFOJjY97e
Lecturer: Ribana Roscher
Winter term 2022, University of Bonn

Видео Explainable machine learning (2022, 1st lecture): Introduction канала Ribana Roscher
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12 октября 2022 г. 21:27:38
01:29:17
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