Amazon cover image
Image from Amazon.com

Machine learning using python

By: Pradhan, ManaranjanContributor(s): Kumar, U. DineshMaterial type: TextTextPublication details: New Delhi Wiley India Pvt. Ltd. 2023 Description: xx, 343 pISBN: 9788126579907Subject(s): Machine learningDDC classification: 006.31 Summary: This book is written to provide a strong foundation in Machine Learning using Python libraries by providing real-life case studies and examples. It covers topics such as Foundations of Machine Learning, Introduction to Python, Descriptive Analytics and Predictive Analytics. Advanced Machine Learning concepts such as decision tree learning, random forest, boosting, recommender systems, and text analytics are covered. The book takes a balanced approach between theoretical understanding and practical applications. All the topics include real-world examples and provide step-by-step approach on how to explore, build, evaluate, and optimize machine learning models.
List(s) this item appears in: Fiction
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Call number Copy number Status Date due Barcode
Book Book Indian Institute of Management LRC
General Stacks
IT & Decisions Sciences 006.31 PRA (Browse shelf(Opens below)) 1 Checked out 02/20/2024 004869

Table of content

1 Introduction To Machine Learning
1.1 Introduction to Analytics and Machine Learning
1.2 Why Machine Learning?
1.3 Framework for Developing Machine Learning Models
1.4 Why Python?
1.5 Python Stack for Data Science
1.6 Getting Started with Anaconda Platform
1.7 Introduction to Python

2 Descriptive Analytics
2.1 Working with DataFrames in Python
2.2 Handling Missing Values
2.3 Exploration of Data using Visualization

3 Probability Distributions And Hypothesis Tests
3.1 Overview
3.2 Probability Theory – Terminology
3.3 Random Variables
3.4 Binomial Distribution
3.5 Poisson Distribution
3.6 Exponential Distribution
3.7 Normal Distribution
3.7.5 Other Important Distributions
3.8 Central Limit Theorem
3.9 Hypothesis Test
3.10 Analysis of Variance (ANOVA)

4 Linear Regression
4.1 Simple Linear Regression
4.2 Steps in Building a Regression Model
4.3 Building Simple Linear Regression Model
4.4 Model Diagnostics
4.5 Multiple Linear Regression

5 Classification Problems
5.1 Classification Overview
5.2 Binary Logistic Regression
5.3 Credit Classification
5.4 Gain Chart and Lift Chart
5.5 Classification Tree (Decision Tree Learning)

6 Advanced Machine Learning
6.1 Overview
6.2 Gradient Descent Algorithm
6.3 Scikit-Learn Library for Machine Learning
6.4 Advanced Regression Models
6.5 Advanced Machine Learning Algorithms

7 Clustering
7.1 Overview
7.2 How Does Clustering Work?
7.3 K-Means Clustering
7.4 Creating Product Segments Using Clustering
7.5 Hierarchical Clustering

8 Forecasting
8.1 Forecasting Overview
8.2 Components of Time-Series Data
8.3 Moving Average
8.4 Decomposing Time Series
8.5 Auto-Regressive Integrated Moving Average Models

9 Recommender Systems
9.1 Overview
9.2 Association Rules (Association Rule Mining)
9.3 Collaborative Filtering
9.4 Using Surprise Library
9.5 Matrix Factorization

10 Text Analytics
10.1 Overview
10.2 Sentiment Classification
10.3 Naïve-Bayes Model for Sentiment Classification
10.4 Using TF-IDF Vectorizer
10.5 Challenges of Text Analytics

Conclusion
Exercises
References
Index

This book is written to provide a strong foundation in Machine Learning using Python libraries by providing real-life case studies and examples. It covers topics such as Foundations of Machine Learning, Introduction to Python, Descriptive Analytics and Predictive Analytics. Advanced Machine Learning concepts such as decision tree learning, random forest, boosting, recommender systems, and text analytics are covered. The book takes a balanced approach between theoretical understanding and practical applications. All the topics include real-world examples and provide step-by-step approach on how to explore, build, evaluate, and optimize machine learning models.

There are no comments on this title.

to post a comment.

©2019-2020 Learning Resource Centre, Indian Institute of Management Bodhgaya

Powered by Koha