ISBN:
978-81-8487-793-9 Publication Year: 2025
Pages: 234 Binding: Paper Back
About the book
This text book is designed as a self contained, comprehensive study material for students, faculty and practicing professionals. It serves as a study material for all branches of engineering, technology and sciences. Concepts are explained in a simplified manner, followed by mathematical analysis and implementation of different Machine Learning algorithms.
Key Features
• Helps to prepare for interviews of Artificial Intelligence and Maschine Learning companies
• Machine Learning Algorithms explained with necessary mathematical backgrounds
• Separate chapters of Linear Algebra and Probability Theory which are essential for understanding and developing Machine Learning algorithms
• Flowcharts and Python codes for Machine Learning algorithms provided
• Each Chapter contains Descriptive Questions, MCQ's and Computer assignments
• All chapters are supported with PPT's
• Self learning exercises and projects
• Suitable for various competitive exams - GATE, IES etc.
• Machine Learning Laboratory experiments included to enhance skills as per National Education Policy
Table
of content
Forword / Preface / Acknowledgement / Introduction / Logistic Regression and Support Vector Machine / Decision Trees / Artificial Neural Networks / Clustering / K Nearest Neighbor Algorithm / Bayesian Networks / Linear Algebra for Machine Learning / Probability Theory for Machine Learning / Performance Analysis of Machine Learning Algorithms / Appendix / References.
Audience
Undergraduate and Postgraduate Students, Professional and Researchers