978-3-031-04083-2.pdf

This is an open access book. Statistical machine learning (ML) has triggered a renaissance of artificial intelligence (AI). While the most successful ML models, including Deep Neural Networks (DNN), have developed better predictivity, they have become increasingly complex, at the expense of human in...

Πλήρης περιγραφή

Λεπτομέρειες βιβλιογραφικής εγγραφής
Γλώσσα:English
Έκδοση: Springer Nature 2022
Διαθέσιμο Online:https://link.springer.com/978-3-031-04083-2
id oapen-20.500.12657-54443
record_format dspace
spelling oapen-20.500.12657-544432022-05-14T02:53:03Z xxAI - Beyond Explainable AI Holzinger, Andreas Goebel, Randy Fong, Ruth Moon, Taesup Müller, Klaus-Robert Samek, Wojciech Computer Science Informatics Conference Proceedings Research Applications bic Book Industry Communication::U Computing & information technology::UY Computer science::UYQ Artificial intelligence bic Book Industry Communication::U Computing & information technology::UY Computer science::UYQ Artificial intelligence::UYQM Machine learning This is an open access book. Statistical machine learning (ML) has triggered a renaissance of artificial intelligence (AI). While the most successful ML models, including Deep Neural Networks (DNN), have developed better predictivity, they have become increasingly complex, at the expense of human interpretability (correlation vs. causality). The field of explainable AI (xAI) has emerged with the goal of creating tools and models that are both predictive and interpretable and understandable for humans. Explainable AI is receiving huge interest in the machine learning and AI research communities, across academia, industry, and government, and there is now an excellent opportunity to push towards successful explainable AI applications. This volume will help the research community to accelerate this process, to promote a more systematic use of explainable AI to improve models in diverse applications, and ultimately to better understand how current explainable AI methods need to be improved and what kind of theory of explainable AI is needed. After overviews of current methods and challenges, the editors include chapters that describe new developments in explainable AI. The contributions are from leading researchers in the field, drawn from both academia and industry, and many of the chapters take a clear interdisciplinary approach to problem-solving. The concepts discussed include explainability, causability, and AI interfaces with humans, and the applications include image processing, natural language, law, fairness, and climate science. 2022-05-13T12:19:29Z 2022-05-13T12:19:29Z 2022 book ONIX_20220513_9783031040832_35 9783031040832 https://library.oapen.org/handle/20.500.12657/54443 eng Lecture Notes in Computer Science; Lecture Notes in Artificial Intelligence application/pdf n/a 978-3-031-04083-2.pdf https://link.springer.com/978-3-031-04083-2 Springer Nature Springer International Publishing 10.1007/978-3-031-04083-2 10.1007/978-3-031-04083-2 6c6992af-b843-4f46-859c-f6e9998e40d5 9783031040832 Springer International Publishing 13200 397 Cham open access
institution OAPEN
collection DSpace
language English
description This is an open access book. Statistical machine learning (ML) has triggered a renaissance of artificial intelligence (AI). While the most successful ML models, including Deep Neural Networks (DNN), have developed better predictivity, they have become increasingly complex, at the expense of human interpretability (correlation vs. causality). The field of explainable AI (xAI) has emerged with the goal of creating tools and models that are both predictive and interpretable and understandable for humans. Explainable AI is receiving huge interest in the machine learning and AI research communities, across academia, industry, and government, and there is now an excellent opportunity to push towards successful explainable AI applications. This volume will help the research community to accelerate this process, to promote a more systematic use of explainable AI to improve models in diverse applications, and ultimately to better understand how current explainable AI methods need to be improved and what kind of theory of explainable AI is needed. After overviews of current methods and challenges, the editors include chapters that describe new developments in explainable AI. The contributions are from leading researchers in the field, drawn from both academia and industry, and many of the chapters take a clear interdisciplinary approach to problem-solving. The concepts discussed include explainability, causability, and AI interfaces with humans, and the applications include image processing, natural language, law, fairness, and climate science.
title 978-3-031-04083-2.pdf
spellingShingle 978-3-031-04083-2.pdf
title_short 978-3-031-04083-2.pdf
title_full 978-3-031-04083-2.pdf
title_fullStr 978-3-031-04083-2.pdf
title_full_unstemmed 978-3-031-04083-2.pdf
title_sort 978-3-031-04083-2.pdf
publisher Springer Nature
publishDate 2022
url https://link.springer.com/978-3-031-04083-2
_version_ 1771297533081944064