Engineering Mathematics and Artificial Intelligence: Foundations, Methods, and Applications

This document was uploaded by one of our users. The uploader already confirmed that they had the permission to publish it. If you are author/publisher or own the copyright of this documents, please report to us by using this DMCA report form.

Simply click on the Download Book button.

Yes, Book downloads on Ebookily are 100% Free.

Sometimes the book is free on Amazon As well, so go ahead and hit "Search on Amazon"

The fields of Artificial Intelligence (AI) and Machine Learning (ML) have grown dramatically in recent years, with an increasingly impressive spectrum of successful applications. This book represents a key reference for anybody interested in the intersection between mathematics and AI/ML and provides an overview of the current research streams. Engineering Mathematics and Artificial Intelligence: Foundations, Methods, and Applications discusses the theory behind ML and shows how mathematics can be used in AI. The book illustrates how to improve existing algorithms by using advanced mathematics and offers cutting-edge AI technologies. The book goes on to discuss how ML can support mathematical modeling and how to simulate data by using artificial neural networks. Future integration between ML and complex mathematical techniques is also highlighted within the book. This book is written for researchers, practitioners, engineers, and AI consultants.

Author(s): Herb Kunze, Davide La Torre, Adam Riccoboni, Manuel Ruiz Galán
Series: Mathematics and its Applications
Publisher: CRC Press
Year: 2023

Language: English
Pages: 529
City: Boca Raton

Cover
Half Title
Series Page
Title Page
Copyright Page
Contents
Preface
Editors
Contributors
Chapter 1: Multiobjective Optimization: An Overview
Chapter 2: Inverse Problems
Chapter 3: Decision Tree for Classification and Forecasting
Chapter 4: A Review of Choice Topics in Quantum Computing and Some Connections with Machine Learning
Chapter 5: Sparse Models for Machine Learning
Chapter 6: Interpretability in Machine Learning
Chapter 7: Big Data: Concepts, Techniques, and Considerations
Chapter 8: A Machine of Many Faces: On the Issue of Interface in Artificial Intelligence and Tools from User Experience
Chapter 9: Artificial Intelligence Technologies and Platforms
Chapter 10: Artificial Neural Networks
Chapter 11: Multicriteria Optimization in Deep Learning
Chapter 12: Natural Language Processing: Current Methods and Challenges
Chapter 13: AI and Imaging in Remote Sensing
Chapter 14: AI in Agriculture
Chapter 15: AI and Cancer Imaging
Chapter 16: AI in Ecommerce: From Amazon and TikTok, GPT-3 and LaMDA, to the Metaverse and Beyond
Chapter 17: The Difficulties of Clinical NLP
Chapter 18: Inclusive Green Growth in OECD Countries: Insight from the Lasso Regularization and Inferential Techniques
Chapter 19: Quality Assessment of Medical Images
Chapter 20: Securing Machine Learning Models: Notions and Open Issues
Index