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R Machine Learning By Example

You're reading from   R Machine Learning By Example Understand the fundamentals of machine learning with R and build your own dynamic algorithms to tackle complicated real-world problems successfully

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Product type Paperback
Published in Mar 2016
Publisher
ISBN-13 9781784390846
Length 340 pages
Edition 1st Edition
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Author (1):
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Raghav Bali Raghav Bali
Author Profile Icon Raghav Bali
Raghav Bali
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Table of Contents (10) Chapters Close

Preface 1. Getting Started with R and Machine Learning FREE CHAPTER 2. Let's Help Machines Learn 3. Predicting Customer Shopping Trends with Market Basket Analysis 4. Building a Product Recommendation System 5. Credit Risk Detection and Prediction – Descriptive Analytics 6. Credit Risk Detection and Prediction – Predictive Analytics 7. Social Media Analysis – Analyzing Twitter Data 8. Sentiment Analysis of Twitter Data Index

Data analysis and transformation


Now that we have processed our data, it is ready for analysis. We will be carrying out descriptive and exploratory analysis in this section, as mentioned earlier. We will analyze the different dataset attributes and talk about their significance, semantics, and relationship with the credit risk attribute. We will be using statistical functions, contingency tables, and visualizations to depict all of this.

Besides this, we will also be doing data transformation for some of the features in our dataset, namely the categorical variables. We will be doing this to combine the category classes which have similar semantics and remove the classes having very less proportion by merging them with a similar class. Some reasons for doing this include preventing the overfitting of our predictive models, which we will be building in Chapter 6, Credit Risk Detection and Prediction – Predictive Analytics, linking semantically similar classes together and also because modeling...

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