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R Data Analysis Projects

You're reading from   R Data Analysis Projects Build end to end analytics systems to get deeper insights from your data

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Product type Paperback
Published in Nov 2017
Publisher Packt
ISBN-13 9781788621878
Length 366 pages
Edition 1st Edition
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Author (1):
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Gopi Subramanian Gopi Subramanian
Author Profile Icon Gopi Subramanian
Gopi Subramanian
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Table of Contents (9) Chapters Close

Preface 1. Association Rule Mining 2. Fuzzy Logic Induced Content-Based Recommendation FREE CHAPTER 3. Collaborative Filtering 4. Taming Time Series Data Using Deep Neural Networks 5. Twitter Text Sentiment Classification Using Kernel Density Estimates 6. Record Linkage - Stochastic and Machine Learning Approaches 7. Streaming Data Clustering Analysis in R 8. Analyze and Understand Networks Using R

Building a sentiment classifier


In the beginning of the chapter we devoted a section to understand kernel density estimation and how it can be leveraged to approximate the probability density function for the given samples from a random variable. We are going to use it in this section.

We have a set of tweets positively labeled. Another set of tweets negatively labeled. The idea is to learn the PDF of these two data sets independently using kernel density estimation.

From Bayes rule, we know that

P(Label | x)  =  P(x| label) * P(label) / P(x)

Here, P(x | label) is the likelihood, P(label) is prior, and P(x) is the evidence. Here the label can be positive sentiment or negative sentiment.

Using the PDF learned from kernel density estimation, we can easily calculate the likelihood, P(x | label)

From our class distribution, we know the prior P(label)

For any new tweet, we can now calculate using the Bayes Rule,

P(Label = Positive | words and their delta tfidf weights)
P(Label = Negative | words and their...
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