Mastering Classification Algorithms for Machine Learning
eBook - PDF

Mastering Classification Algorithms for Machine Learning

Learn how to apply Classification algorithms for effective Machine Learning solutions (English Edition)

  1. English
  2. PDF
  3. Available on iOS & Android
eBook - PDF

Mastering Classification Algorithms for Machine Learning

Learn how to apply Classification algorithms for effective Machine Learning solutions (English Edition)

About this book

A practical guide to mastering Classification algorithms for Machine learning

Key Features
? Get familiar with all the state-of-the-art classification algorithms for machine learning.
? Understand the mathematical foundations behind building machine learning models.
? Learn how to apply machine learning models to solve real-world industry problems.

Description
Classification algorithms are essential in machine learning as they allow us to make predictions about the class or category of an input by considering its features. These algorithms have a significant impact on multiple applications like spam filtering, sentiment analysis, image recognition, and fraud detection. If you want to expand your knowledge about classification algorithms, this book is the ideal resource for you.The book starts with an introduction to problem-solving in machine learning and subsequently focuses on classification problems. It then explores the Naïve Bayes algorithm, a probabilistic method widely used in industrial applications. The application of Bayes Theorem and underlying assumptions in developing the Naïve Bayes algorithm for classification is also covered. Moving forward, the book centers its attention on the Logistic Regression algorithm, exploring the sigmoid function and its significance in binary classification. The book also covers Decision Trees and discusses the Gini Factor, Entropy, and their use in splitting trees and generating decision leaves. The Random Forest algorithm is also thoroughly explained as a cutting-edge method for classification (and regression). The book concludes by exploring practical applications such as Spam Detection, Customer Segmentation, Disease Classification, Malware Detection in JPEG and ELF Files, Emotion Analysis from Speech, and Image Classification.By the end of the book, you will become proficient in utilizing classification algorithms for solving complex machine learning problems.

What you will learn
? Learn how to apply Naïve Bayes algorithm to solve real-world classification problems.
? Explore the concept of K-Nearest Neighbor algorithm for classification tasks.
? Dive into the Logistic Regression algorithm for classification.
? Explore techniques like Bagging and Random Forest to overcome the weaknesses of Decision Trees.
? Learn how to combine multiple models to improve classification accuracy and robustness.

Who this book is for
This book is for Machine Learning Engineers, Data Scientists, Data Science Enthusiasts, Researchers, Computer Programmers, and Students who are interested in exploring a wide range of algorithms utilized for classification tasks in machine learning.

Table of Contents
1. Introduction to Machine Learning
2. Naïve Bayes Algorithm
3. K-Nearest Neighbor Algorithm
4. Logistic Regression
5. Decision Tree Algorithm
6. Ensemble Models
7. Random Forest Algorithm
8. Boosting Algorithm
Annexure 1: Jupyter Notebook
Annexure 2: Python
Annexure 3: Singular Value Decomposition
Annexure 4: Preprocessing Textual Data
Annexure 5: Stemming and Lamentation
Annexure 6: Vectorizers
Annexure 7: Encoders
Annexure 8: Entropy

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Yes, you can access Mastering Classification Algorithms for Machine Learning by Partha Majumdar in PDF and/or ePUB format, as well as other popular books in Computer Science & Artificial Intelligence (AI) & Semantics. We have over one million books available in our catalogue for you to explore.

Table of contents

  1. Book title
  2. Inner title
  3. Copyright
  4. Dedicated
  5. About the Author
  6. Acknowledgement
  7. Preface
  8. Code Bundle and Coloured Images
  9. Piracy
  10. Table of Contents
  11. Chapter 1: Introduction to Machine Learning
  12. Chapter 2: Naïve Bayes Algorithm
  13. Chapter 3: K-Nearest Neighbor Algorithm
  14. Chapter 4: Logistic Regression
  15. Chapter 5: Decision Tree Algori thm
  16. Chapter 6: Ensemble Models
  17. Chapter 7: Random Forest Algorithm
  18. Chapter 8: Boosting Algorithm
  19. Annexure 1: Jupyter Notebook
  20. Annexure 2: Python
  21. Annexure 3: Singular Value Decomposition
  22. Annexure 4: Preprocessing Textual Data
  23. Annexure 5: Stemming and Lamentation
  24. Annexure 6: Vectorizers
  25. Annexure 7: Encoders
  26. Annexure 8: Entropy
  27. Index
  28. Back title