📖 The Scoop
Concepts of Machine Learning with Practical Approaches.
KEY FEATURES
● Includes real-scenario examples to explain the working of Machine Learning algorithms.
● Includes graphical and statistical representation to simplify modeling Machine Learning and Neural Networks.
● Full of Python codes, numerous exercises, and model question papers for data science students.
DESCRIPTION
The book offers the readers the fundamental concepts of Machine Learning techniques in a user-friendly language. The book aims to give in-depth knowledge of the different Machine Learning (ML) algorithms and the practical implementation of the various ML approaches.
This book covers different Supervised Machine Learning algorithms such as Linear Regression Model, Naïve Bayes classifier Decision Tree, K-nearest neighbor, Logistic Regression, Support Vector Machine, Random forest algorithms, Unsupervised Machine Learning algorithms such as k-means clustering, Hierarchical Clustering, Probabilistic clustering, Association rule mining, Apriori Algorithm, f-p growth algorithm, Gaussian mixture model and Reinforcement Learning algorithm such as Markov Decision Process (MDP), Bellman equations, policy evaluation using Monte Carlo, Policy iteration and Value iteration, Q-Learning, State-Action-Reward-State-
By the end of this book, the reader can understand Machine Learning concepts and easily implement various ML algorithms to real-world problems.
WHAT YOU WILL LEARN
● Perform feature extraction and feature selection techniques.
● Learn to select the best Machine Learning algorithm for a given problem.
● Get a stronghold in using popular Python libraries like Scikit-learn, pandas, and matplotlib.
● Practice how to implement different types of Machine Learning techniques.
● Learn about Artificial Neural Network along with the Back Propagation Algorithm.
● Make use of various recommended systems with powerful algorithms.
WHO THIS BOOK IS FOR
This book is designed for data science and analytics students, academicians, and researchers who want to explore the concepts of machine learning and practice the understanding of real cases. Knowing basic statistical and programming concepts would be good, although not mandatory.
TABLE OF CONTENTS
1. Introduction
2. Supervised Learning Algorithms
3. Unsupervised Learning
4. Introduction to the Statistical Learning Theory
5. Semi-Supervised Learning and Reinforcement Learning
6. Recommended Systems
Genre: Computers / Information Technology (fancy, right?)
🤖Next read AI recommendation
Greetings, bookworm! I'm Robo Ratel, your AI librarian extraordinaire, ready to uncover literary treasures after your journey through "Machine Learning" by Dr Ruchi Doshi! 📚✨
Eureka! I've unearthed some literary gems just for you! Scroll down to discover your next favorite read. Happy book hunting! 📖😊
Reading Playlist for Machine Learning
Enhance your reading experience with our curated music playlist. It's like a soundtrack for your book adventure! 🎵📚
🎶 A Note About Our Spotify Integration
Hey book lovers! We're working on bringing you the full power of Spotify integration. 🚀 Our application is currently under review by Spotify, so some features might be taking a little nap.
Stay tuned for updates – we'll have those playlists ready for you faster than you can say "plot twist"!
🎲AI Book Insights
Curious about "Machine Learning" by Dr Ruchi Doshi? Let our AI librarian give you personalized insights! 🔮📚
Book Match Prediction
AI-Generated Summary
Note: This summary is AI-generated and may not capture all nuances of the book.