
Text Mining with R
Description
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Content
- Intro
- Copyright
- Table of Contents
- Preface
- Outline
- Topics This Book Does Not Cover
- About This Book
- Conventions Used in This Book
- Using Code Examples
- O'Reilly Safari
- How to Contact Us
- Acknowledgements
- Chapter 1. The Tidy Text Format
- Contrasting Tidy Text with Other Data Structures
- The unnest_tokens Function
- Tidying the Works of Jane Austen
- The gutenbergr Package
- Word Frequencies
- Summary
- Chapter 2. Sentiment Analysis with Tidy Data
- The sentiments Dataset
- Sentiment Analysis with Inner Join
- Comparing the Three Sentiment Dictionaries
- Most Common Positive and Negative Words
- Wordclouds
- Looking at Units Beyond Just Words
- Summary
- Chapter 3. Analyzing Word and Document Frequency: tf-idf
- Term Frequency in Jane Austen's Novels
- Zipf's Law
- The bind_tf_idf Function
- A Corpus of Physics Texts
- Summary
- Chapter 4. Relationships Between Words: N-grams and Correlations
- Tokenizing by N-gram
- Counting and Filtering N-grams
- Analyzing Bigrams
- Using Bigrams to Provide Context in Sentiment Analysis
- Visualizing a Network of Bigrams with ggraph
- Visualizing Bigrams in Other Texts
- Counting and Correlating Pairs of Words with the widyr Package
- Counting and Correlating Among Sections
- Examining Pairwise Correlation
- Summary
- Chapter 5. Converting to and from Nontidy Formats
- Tidying a Document-Term Matrix
- Tidying DocumentTermMatrix Objects
- Tidying dfm Objects
- Casting Tidy Text Data into a Matrix
- Tidying Corpus Objects with Metadata
- Example: Mining Financial Articles
- Summary
- Chapter 6. Topic Modeling
- Latent Dirichlet Allocation
- Word-Topic Probabilities
- Document-Topic Probabilities
- Example: The Great Library Heist
- LDA on Chapters
- Per-Document Classification
- By-Word Assignments: augment
- Alternative LDA Implementations
- Summary
- Chapter 7. Case Study: Comparing Twitter Archives
- Getting the Data and Distribution of Tweets
- Word Frequencies
- Comparing Word Usage
- Changes in Word Use
- Favorites and Retweets
- Summary
- Chapter 8. Case Study: Mining NASA Metadata
- How Data Is Organized at NASA
- Wrangling and Tidying the Data
- Some Initial Simple Exploration
- Word Co-ocurrences and Correlations
- Networks of Description and Title Words
- Networks of Keywords
- Calculating tf-idf for the Description Fields
- What Is tf-idf for the Description Field Words?
- Connecting Description Fields to Keywords
- Topic Modeling
- Casting to a Document-Term Matrix
- Ready for Topic Modeling
- Interpreting the Topic Model
- Connecting Topic Modeling with Keywords
- Summary
- Chapter 9. Case Study: Analyzing Usenet Text
- Preprocessing
- Preprocessing Text
- Words in Newsgroups
- Finding tf-idf Within Newsgroups
- Topic Modeling
- Sentiment Analysis
- Sentiment Analysis by Word
- Sentiment Analysis by Message
- N-gram Analysis
- Summary
- Bibliography
- Index
- About the Authors
- Colophon
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