Machine Learning Solutions for Inverse Problems: Part A, 9780443417894
Hardcover
Solve inverse problems with machine learning’s cutting-edge techniques and innovations.
Pre-Order

$629.48

  • Hardcover

    500 pages

  • Release Date

    1 October 2025

Check Delivery Options

Summary

Unlocking Inverses: Machine Learning Solutions Explored

Machine Learning Solutions for Inverse Problems: Part A, Volume 26 in the Handbook of Numerical Analysis, showcases cutting-edge progress in the field. This volume delivers insightful chapters on a range of current topics, including:

  • Data-Driven Approaches for Generalized Lasso Problems
  • Implicit Regularization of the Deep Inverse Prior via (Inertial) Gradient Flow
  • Generalized Har…

Book Details

ISBN-13:9780443417894
ISBN-10:044341789X
Series:Handbook of Numerical Analysis
Author:Michael Hintermüller, Andreas Hauptmann, Bangti Jin, Carola-Bibiane Schönlieb
Publisher:Elsevier Science Publishing Co Inc
Imprint:Academic Press Inc
Format:Hardcover
Number of Pages:500
Release Date:1 October 2025
Weight:0g
Dimensions:229mm x 152mm
About The Author

Michael Hintermüller

Andreas Hauptmann received his PhD in 2017 from the University of Helsinki in Applied Mathematics. He currently holds a position as Academy Research Fellow and Associate Professor (tenure track) of Computational Mathematics at the Research Unit of Mathematical Sciences, University of Oulu, and as Honorary Associate Professor at the Department of Computer Science, University College London. His research interest is in inverse problems and tomographic imaging, with a focus on combining model-based inversion techniques with data-driven methods and the study of their theoretical properties.

Bangti Jin received a PhD in Mathematics from The Chinese University of Hong Kong, Hong Kong in 2008. Previously, he was Lecturer and Reader, and Professor at Department of Computer Science, University College London (2014-2022), an assistant professor of Mathematics at the University of California, Riverside (2013–2014), a visiting assistant professor at Texas A&M University (2010–2013), an Alexandre von Humboldt Postdoctoral Researcher at University of Bremen (2009–2010). Currently he is Professor of Mathematics, Global STEM Scholar, at The Chinese University of Hong Kong. His research interests include inverse problems, numerical analysis and machine learning.

Carola-Bibiane Schönlieb graduated from the Institute for Mathematics, University of Salzburg (Austria) in 2004. From 2004 to 2005 she held a teaching position in Salzburg. She received her PhD degree from the University of Cambridge (UK) in 2009. After one year of postdoctoral activity at the University of Göttingen (Germany), she became a Lecturer at Cambridge in 2010, promoted to Reader in 2015 and promoted to Professor in 2018. Since 2011 she is a fellow of Jesus College Cambridge. She currently is Professor of Applied Mathematics (2006) at the University of Cambridge where she is head of the Cambridge Image Analysis group. Her current research interests focus on variational methods, partial differential equations and machine learning for image analysis, image processing and inverse imaging problems.

Returns

This item is eligible for free returns within 30 days of delivery. See our returns policy for further details.