Normal view MARC view ISBD view

Applied machine learning

By: Gopal, M.
Publisher: Chennai McGraw Hill Education 2018Description: xix, 630p | Binding - Paperback | 24*18.5 cm.ISBN: 9789353160258.Subject(s): Computer EngineeringDDC classification: 006.31 Summary: Applied Machine Learning textcovers all the fundamentals and theoretical concepts and presents a widerange of techniques (algorithms) applicable to challenges in our day-to-daylives. The book recognizes that most of the ideas behind machinelearning are simple and straightforward. It provides a platform for hands-onexperience through self-study machine learning projects. Datasets for somebenchmark applications have been explained to encourage the use of algorithmscovered in this book. This is a comprehensive textbook on machine learning for undergraduates in computer science and allengineering degree programs. Post graduates and research scholars will find ita useful initial exposure to the subject, before they go for highly theoreticaldepth in the specific areas of their research. For engineers, scientists, business managers and other practitioners,the book will help build the foundations of machine learning. CONTENT: 1. Introduction 2. Supervised Learning: Rationale and Basics 3. Statistical Learning 4. Learning With Support Vector Machines (SVM) 5. Learning With Neural Networks (NN) 6. Fuzzy Inference Systems 7. Data Clustering and Data Transformations 8. Decision Tree Learning 9. Business Intelligence and Data Mining: Techniques andApplications ? Appendix AGenetic Algorithm (GA) For Search Optimization ? Appendix BReinforcement Learning (RL) ? Datasets fromReal-Life Applications for Machine Learning Experiments
Tags from this library: No tags from this library for this title. Log in to add tags.
    average rating: 0.0 (0 votes)
Item type Current location Collection Call number Status Date due Barcode Item holds
 Text Books Text Books School of Engineering & Technology
Reference Section
Reference 006.31 GOP (Browse shelf) Not For Loan E14770
 Text Books Text Books School of Engineering & Technology
General Stacks
Circulation 006.31 GOP (Browse shelf) Available E14771
 Text Books Text Books School of Engineering & Technology
General Stacks
Circulation 006.31 GOP (Browse shelf) Checked out to Sadiya SHAIKH (24BEC05) 18/09/2024 E14772
 Text Books Text Books School of Engineering & Technology
General Stacks
Circulation 006.31 GOP (Browse shelf) Available E14773
 Text Books Text Books School of Engineering & Technology
General Stacks
Circulation 006.31 GOP (Browse shelf) Checked out to Geeta Desai (ETF018) 16/01/2024 E14774
Total holds: 0

Applied Machine Learning textcovers all the fundamentals and theoretical concepts and presents a widerange of techniques (algorithms) applicable to challenges in our day-to-daylives.

The book recognizes that most of the ideas behind machinelearning are simple and straightforward. It provides a platform for hands-onexperience through self-study machine learning projects. Datasets for somebenchmark applications have been explained to encourage the use of algorithmscovered in this book.

This is a comprehensive textbook on machine learning for undergraduates in computer science and allengineering degree programs. Post graduates and research scholars will find ita useful initial exposure to the subject, before they go for highly theoreticaldepth in the specific areas of their research. For engineers, scientists, business managers and other practitioners,the book will help build the foundations of machine learning.

CONTENT:
1. Introduction

2. Supervised Learning: Rationale and Basics

3. Statistical Learning

4. Learning With Support Vector Machines (SVM)

5. Learning With Neural Networks (NN)

6. Fuzzy Inference Systems

7. Data Clustering and Data Transformations

8. Decision Tree Learning

9. Business Intelligence and Data Mining: Techniques andApplications

? Appendix AGenetic Algorithm (GA) For Search Optimization

? Appendix BReinforcement Learning (RL)

? Datasets fromReal-Life Applications for Machine Learning Experiments

There are no comments for this item.

Log in to your account to post a comment.
Unique Visitors hit counter Total Page Views free counter
Implemented and Maintained by AIKTC-KRRC (Central Library).
For any Suggestions/Query Contact to library or Email: librarian@aiktc.ac.in | Ph:+91 22 27481247
Website/OPAC best viewed in Mozilla Browser in 1366X768 Resolution.

Powered by Koha