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Recent Advances in Deep Learning Applications: New Techniques and Practical Examples [Kõva köide]

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  • Formaat: Hardback, 376 pages, kõrgus x laius: 234x156 mm, 93 Tables, black and white; 170 Line drawings, black and white; 28 Halftones, black and white; 198 Illustrations, black and white
  • Ilmumisaeg: 24-Sep-2025
  • Kirjastus: Chapman & Hall/CRC
  • ISBN-10: 1032944625
  • ISBN-13: 9781032944623
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  • Formaat: Hardback, 376 pages, kõrgus x laius: 234x156 mm, 93 Tables, black and white; 170 Line drawings, black and white; 28 Halftones, black and white; 198 Illustrations, black and white
  • Ilmumisaeg: 24-Sep-2025
  • Kirjastus: Chapman & Hall/CRC
  • ISBN-10: 1032944625
  • ISBN-13: 9781032944623
"This book presents a collection of extended papers selected from the 22nd IEEE International Conference on Machine Learning and Applications (IEEE ICMLA 2023) and focuses on deep learning architectures and their applications in domains such as health care, security and threat detection, education, fault diagnosis, and robotic control in industrial environments. Novel ways of using convolutional neural networks, transformers, autoencoders, graph-based neural networks, large language models for the above applications are covered in this book. Readers will find insights to help them realize novel ways of using deep learning architectures and models in real-world applications and contexts, making the book an essential reference guide for academic researchers, professionals, software engineers in the industry, and innovative product developers"-- Provided by publisher.

This book presents a collection of extended papers selected from the 22nd IEEE International Conference on Machine Learning and Applications (IEEE ICMLA 2023) and focuses on deep learning architectures and their applications in domains such as healthcare, security, education, fault diagnosis, and robotic control in industrial environments.



This book presents a collection of extended papers selected from the 22nd IEEE International Conference on Machine Learning and Applications (IEEE ICMLA 2023) and focuses on deep learning architectures and their applications in domains such as health care, security and threat detection, education, fault diagnosis, and robotic control in industrial environments. Novel ways of using convolutional neural networks, transformers, autoencoders, graph-based neural networks, large language models for the above applications are covered in this book. Readers will find insights to help them realize novel ways of using deep learning architectures and models in real-world applications and contexts, making the book an essential reference guide for academic researchers, professionals, software engineers in the industry, and innovative product developers.

Key Features:

· Presents state-of-the-art research on deep learning

· Covers modern real-world applications of deep learning

· Provides value to students, academic researchers, professionals, software engineers in the industry, and innovative product developers.

Preface

Editor Bios

List of Contributors

Part I Deep Learning for Computer Vision

Chapter 01 Automated Image Segmentation Using Self-Iterative Training and
Self-Supervised Learning with Uncertainty Scores

Jinyoon Kim, Tianjie Chen, and Md Faisal Kabir

Chapter 02 Energy Efficient Glaucoma Detection: Leveraging GAN-based Data
Augmentation for Advanced Diagnostics

Krish Nachnani

Chapter 03 Deep JPEG Compression Artifact Removal with Harmonic Networks

Hasan H. Karaoglu, Ender M. Eksioglu

Chapter 04 Modeling Face Emotion Perception from Naturalistic Face Viewing:
Insights from Fixational Events and Gaze Strategies "Meisam J. Seikavanidi

Maria J. Barrett, Paolo Burelli

Part II Deep Learning for Natural language Processing

Chapter 05 Large Language Models for Automated Short-Answer Grading and
Student Misconception Detection in STEM

Indika Kahanda, Nazmul Kazi, and James Becker

Chapter 06 Word class and syntax rule representations spontaneously emerge in
recurrent language models

Patrick Krauss, Kishore Surendra, Paul Stoewer, Andreas Maier, Claus Metzner,
and Achim Schilling

Chapter 07 Detection of Emerging Cyberthreats through Active Learning

Joel Brynielsson, Amanda Carp, and Agnes Tegen

Chapter 08 Enhanced Health Information Retrieval with Explainable Biomedical
Inconsistency Detection using Large Language Models

Prajwol Lamichhane, Indika Kahanda, Xudong Liu, Karthikeyan Umapathy, Sandeep
Reddivari, and Andrea Arikawa

Chapter 09 Human-like e-Learning Mediation Agents

Chukwuka Victor Obionwu, Diptesh Mukherjee, Andreas Nurnberger, Aarathi
Vijayachandran Bhagavathi, Aishwarya Suresh, Eathorne Choongo, Bhavya Baburaj
Chovatta Valappil, Amit Kumar, and Gunter Saake

Part III Deep Learning for Real World Predictive Modelling

Chapter 10 Transformer Graph Neural Networks (T-GNN) for Home Valuation

Faraz Moghimi, Reid Johnson, and Andy Krause

Chapter 11 Model Error Clustering Approach for HVAC and Water Heater in
Residential Subpopulations

Viswadeep Lebakula, Eve Tsybina, Jeff Munk, and Justin Hill

Chapter 12 A Hybrid Physics-Informed Neural Network - SEIRD Model for
Forecasting COVID-19 Intensive Care Unit Demand in England "Michael
Ajao-Olarinoye

Vasile Palade, Fei He, Petra A Wark, Zindoga Mukandavire, and Seyed Mousavi

Part IV Deep Learning Methodological Approaches in Other Applications

Chapter 13 A Novel Data Reduction Technique for Medicare Fraud Detection with
Gaussian Mixture Models

John T. Hancock III, Taghi M. Khoshgoftaar

Chapter 14 Convolutional Recurrent Deep Q-Learning for Gas Source
Localization with a Mobile Robot

Iliya Kulbaka, Ayan Dutta, Ladislau Bölöni, O. Patrick Kreidl, and Swapnoneel
Roy

Chapter 15 Conditioned Cycles in Sparse Data Domains: Applications to the
Physical Sciences Maria Barger, Randy Paffenroth, and Harsh Pathak

Chapter 16 Enhancing Aerial Combat Tactics through Hierarchical Multi-Agent
Reinforcement Learning

Ardian Selmonaj, Oleg Szehr, Giacomo Del Rio, Alessandro Antonucci, Adrian
Schneider, and Michael Rüegsegger
Dr. Uche Onyekpe is a Machine Learning Expert at Ofcom (Office of Communications, UK), where he focuses on developing assessment/audit strategies for AI algorithms used by online platforms such as Instagram, TikTok, and X. He also serves as the Director of the African Institute for Artificial Intelligence, a nonprofit organization dedicated to advancing AI across the African continent.

Dr. Onyekpe previously held academic positions at York St John University and Coventry University on Machine Learning. His professional experience spans various sectors, including health, construction, and transport, where he has led projects at the intersection of artificial intelligence and these fields. He has published numerous research papers in these areas and has several years of experience working as a consultant within the robotics and social care. He has delivered keynote talks at reputable seminars and events on machine learning and applications.

Vasile Palade is a Professor of Artificial Intelligence and Data Science in the Centre for Computational Science and Mathematical Modelling at Coventry University, UK. He previously held several academic and research positions at the University of Oxford - UK, University of Hull - UK, and the University of Galati - Romania. His research interests are in machine learning, with a focus on neural networks and deep learning, and with main application to computer vision, natural language processing, autonomous driving, smart cities, health, among others. Prof. Palade is author and co-author of more than 300 papers in journals and conference proceedings as well as several books on machine learning and applications. He is an Associate Editor for several reputed journals, such as IEEE Transactions on Neural Networks and Learning Systems, and Neural Networks. He has delivered keynote talks to reputed international conferences on machine learning and applications.

Prof. M. Arif Wani completed his M.Tech. in Computer Technology at the Indian Institute of Technology, Delhi, and his PhD in Computer Vision at Cardiff University, UK. He is a Professor at the University of Kashmir, having previously served as a Professor at California State University Bakersfield.

His research interests are in the area of machine learning, with a focus on neural networks, deep learning, computer vision, pattern recognition, and classification tasks. He has published many papers in reputed journals and conferences in these areas. Dr. Wani has co-authored the book Advances in Deep Learning and co-edited many books on Machine Learning and Deep Learning applications.