Book Details
Format
Kindle
Pages
410
Language
English
Published
Apr 16, 2022
Publisher
Springer
ISBN-10
303104083X
ISBN-13
9783031040832
Description
This book delves into the advancements of explainable artificial intelligence (AI) as presented in the context of the International Workshop held alongside ICML 2020 in Vienna. It captures a collection of revised and extended papers that explore innovative methodologies and frameworks designed to enhance the interpretability of machine learning models. Such interpretability is crucial, particularly as machine learning technologies increasingly permeate various sectors, demanding clarity and transparency.
Contributors, among whom are notable figures in the field, share their insights on overcoming the complexities of AI, making analytical tools more accessible and understandable. The discussions aim not only to address current challenges but also to pave the way for future research that balances performance with interpretability, ensuring that the technology remains user-friendly and ethically sound.
Through its open-access format, this compilation provides a valuable resource for researchers, practitioners, and enthusiasts alike who are invested in the evolution of AI and its responsible deployment. It invites readers to engage with the ongoing dialogue regarding the implications and future directions of explainable AI, ultimately hoping to foster a more informed and ethical approach to machine learning.
Contributors, among whom are notable figures in the field, share their insights on overcoming the complexities of AI, making analytical tools more accessible and understandable. The discussions aim not only to address current challenges but also to pave the way for future research that balances performance with interpretability, ensuring that the technology remains user-friendly and ethically sound.
Through its open-access format, this compilation provides a valuable resource for researchers, practitioners, and enthusiasts alike who are invested in the evolution of AI and its responsible deployment. It invites readers to engage with the ongoing dialogue regarding the implications and future directions of explainable AI, ultimately hoping to foster a more informed and ethical approach to machine learning.