Update cookies preferences

Advancements in Knowledge Distillation: Towards New Horizons of Intelligent Systems 2023 ed. [Hardback]

Edited by , Edited by
  • Format: Hardback, 232 pages, height x width: 235x155 mm, weight: 535 g, 51 Illustrations, color; 19 Illustrations, black and white; VIII, 232 p. 70 illus., 51 illus. in color., 1 Hardback
  • Series: Studies in Computational Intelligence 1100
  • Pub. Date: 14-Jun-2023
  • Publisher: Springer International Publishing AG
  • ISBN-10: 3031320948
  • ISBN-13: 9783031320941
Other books in subject:
  • Hardback
  • Price: 187,67 €*
  • * the price is final i.e. no additional discount will apply
  • Regular price: 220,79 €
  • Save 15%
  • This book is not in stock. Book will arrive in about 2-4 weeks. Please allow another 2 weeks for shipping outside Estonia.
  • Quantity:
  • Add to basket
  • Delivery time 4-6 weeks
  • Add to Wishlist
  • Format: Hardback, 232 pages, height x width: 235x155 mm, weight: 535 g, 51 Illustrations, color; 19 Illustrations, black and white; VIII, 232 p. 70 illus., 51 illus. in color., 1 Hardback
  • Series: Studies in Computational Intelligence 1100
  • Pub. Date: 14-Jun-2023
  • Publisher: Springer International Publishing AG
  • ISBN-10: 3031320948
  • ISBN-13: 9783031320941
Other books in subject:

The book provides a timely coverage of the paradigm of knowledge distillation—an efficient way of model compression. Knowledge distillation is positioned in a general setting of transfer learning, which effectively learns a lightweight student model from a large teacher model. The book covers a variety of training schemes, teacher–student architectures, and distillation algorithms. The book covers a wealth of topics including recent developments in vision and language learning, relational architectures, multi-task learning, and representative applications to image processing, computer vision, edge intelligence, and autonomous systems. The book is of relevance to a broad audience including researchers and practitioners active in the area of machine learning and pursuing fundamental and applied research in the area of advanced learning paradigms.

Categories of Response-Based, Feature-Based, and Relation-Based Knowledge Distillation.- A Geometric Perspective on Feature-Based Distillation.- Knowledge Distillation Across Vision and Language.- Knowledge Distillation in Granular Fuzzy Models by Solving Fuzzy Relation Equations.- Ensemble Knowledge Distillation for Edge Intelligence in Medical Applications.- Self-Distillation with the New Paradigm in Multi-Task Learning.- Knowledge Distillation for Autonomous Intelligent Unmanned System.