书籍详情
格式
Kindle
页数
520
语言
英语
已发布
Nov 29, 2018
出版商
Springer
ISBN-10
3319981315
ISBN-13
9783319981314
描述
This book brings together a comprehensive collection of research focused on the critical areas of explainability and interpretability within computer vision and machine learning. It showcases contributions from prominent experts who delve into the methodologies and practices aimed at making complex algorithms more understandable. By highlighting innovative techniques and frameworks, the authors address the growing demand for transparency in AI systems, which is essential for both developers and end-users.
Readers will find a diverse range of topics that explore the underlying principles and applications of explainable models. The insights drawn from these discussions aim to bridge the gap between sophisticated machine learning algorithms and user-friendly interpretative tools, ultimately paving the way for more responsible and trustworthy AI deployment in various fields.
Readers will find a diverse range of topics that explore the underlying principles and applications of explainable models. The insights drawn from these discussions aim to bridge the gap between sophisticated machine learning algorithms and user-friendly interpretative tools, ultimately paving the way for more responsible and trustworthy AI deployment in various fields.