Machine and Deep Learning Using MATLAB: Algorithms and Tools for Scientists and Engineers
- 7h 26m
- Kamal I. M. Al-Malah
- John Wiley & Sons (US)
- 2023
MACHINE AND DEEP LEARNING
In-depth resource covering machine and deep learning methods using MATLAB tools and algorithms, providing insights and algorithmic decision-making processes
Machine and Deep Learning Using MATLAB introduces early career professionals to the power of MATLAB to explore machine and deep learning applications by explaining the relevant MATLAB tool or app and how it is used for a given method or a collection of methods. Its properties, in terms of input and output arguments, are explained, the limitations or applicability is indicated via an accompanied text or a table, and a complete running example is shown with all needed MATLAB command prompt code.
The text also presents the results, in the form of figures or tables, in parallel with the given MATLAB code, and the MATLAB written code can be later used as a template for trying to solve new cases or datasets. Throughout, the text features worked examples in each chapter for self-study with an accompanying website providing solutions and coding samples. Highlighted notes draw the attention of the user to critical points or issues.
Readers will also find information on:
- Numeric data acquisition and analysis in the form of applying computational algorithms to predict the numeric data patterns (clustering or unsupervised learning)
- Relationships between predictors and response variable (supervised), categorically sub-divided into classification (discrete response) and regression (continuous response)
- Image acquisition and analysis in the form of applying one of neural networks, and estimating net accuracy, net loss, and/or RMSE for the successive training, validation, and testing steps
- Retraining and creation for image labeling, object identification, regression classification, and text recognition
Machine and Deep Learning Using MATLAB is a useful and highly comprehensive resource on the subject for professionals, advanced students, and researchers who have some familiarity with MATLAB and are situated in engineering and scientific fields, who wish to gain mastery over the software and its numerous applications.
About the Author
Kamal I. M. Al-Malah received his PhD degree from Oregon State University in 1993. He served as a Professor of Chemical Engineering in Jordan and Gulf countries, as well as Former Chairman of the Chemical Engineering Department at the University of Hail in Saudi Arabia. Professor Al-Malah is an expert in both Aspen Plus® and MATLAB® applications. He has created a bundle of Windows-based software for engineering applications.
In this Book
-
About the Companion Website
-
Unsupervised Machine Learning (ML) Techniques
-
ML Supervised Learning: Classification Models
-
Methods of Improving ML Predictive Models
-
Methods of ML Linear Regression
-
Neural Networks
-
Pretrained Neural Networks: Transfer Learning
-
A Convolutional Neural Network (CNN) Architecture and Training
-
Regression Classification: Object Detection
-
Recurrent Neural Network (RNN)
-
Image/Video-Based Apps