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Titlebook: Explainable Artificial Intelligence: An Introduction to Interpretable Machine Learning; Uday Kamath,John Liu Book 2021 The Editor(s) (if a

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发表于 2025-3-21 17:10:16 | 显示全部楼层 |阅读模式
书目名称Explainable Artificial Intelligence: An Introduction to Interpretable Machine Learning
编辑Uday Kamath,John Liu
视频video
概述Single resource addressing the theory and practice of interpretability and explainability techniques using case studies.Covers exploratory data analysis, feature importance, interpretable algorithms,
图书封面Titlebook: Explainable Artificial Intelligence: An Introduction to Interpretable Machine Learning;  Uday Kamath,John Liu Book 2021 The Editor(s) (if a
描述This book is written both for readers entering the field, and for practitioners with a background in AI and an interest in developing real-world applications. The book is a great resource for practitioners and researchers in both industry and academia, and the discussed case studies and associated material can serve as inspiration for a variety of projects and hands-on assignments in a classroom setting. I will certainly keep this book as a personal resource for the courses I teach, and strongly recommend it to my students.       .--Dr. Carlotta Domeniconi, Associate Professor, Computer Science Department, GMU.This book offers a curriculum for introducing interpretability to machine learning at every stage. The authors provide compelling examples that a core teaching practice like leading interpretive discussions can be taught and learned by teachers and sustained effort. And what better way to strengthen the quality of AI and Machine learning outcomes. I hope that this book will become a primer for teachers, data Science educators, and ML developers, and together we practice the art of interpretive machine learning..--Anusha Dandapani, Chief Data and Analytics Officer, UNICC and A
出版日期Book 2021
关键词interpretability of models; explainability; intrinsic methods; model-agnostic methods; deep learning met
版次1
doihttps://doi.org/10.1007/978-3-030-83356-5
isbn_softcover978-3-030-83358-9
isbn_ebook978-3-030-83356-5
copyrightThe Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Switzerl
The information of publication is updating

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发表于 2025-3-21 21:27:06 | 显示全部楼层
Uday Kamath,John LiuSingle resource addressing the theory and practice of interpretability and explainability techniques using case studies.Covers exploratory data analysis, feature importance, interpretable algorithms,
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Exploratory Classification of Time-Series,ore effective models. Since any machine learning model is built from the data, understanding the content on which the model is based is imperative for explainability and interpretability. Many of these techniques that summarize, visualize, and explore data have existed for a long time. There have be
发表于 2025-3-22 14:48:54 | 显示全部楼层
Suheir S. Sabbah,Bushra I. Albadawing of how well a model performs from looking at the results of model evaluation is another important way to enhance model explainability. We discuss several techniques to visualize model evaluation including precision-recall curves, ROC curves, residual plots, silhouette coefficients, and others to
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