5 books on Sentiment Analysis [PDF]
Like
29
Books on Sentiment Analysis cover various aspects of natural language processing, machine learning and text analysis techniques used in sentiment analysis. They explain detection and classifying human emotions and opinions expressed in text data.
1. Sentiment Analysis Unveiled: Techniques, Applications, and Innovations
2025 by Neha Nandal, Rohit Tanwar, Varun Sapra

This book is a collection of fairly specific and interesting white papers on the use of sentiment analysis technology. But first, it gives the theoretical background, starting with the Naive Bayes algorithm. Surprisingly, it is still a great starting point for sentiment analysis of customer reviews or tweets, due to its simplicity, efficiency and ability to handle large amounts of data. It is especially good for binary classification (positive/negative). The algorithm is called "naive" because it assumes that all words in a text are independent of each other. It is able to quickly learn which words indicate which sentiment using labeled examples and then apply this knowledge to new, previously unseen texts.
Download PDF
2. New Opportunities for Sentiment Analysis and Information Processing
2021 by Sharaff, Aakanksha, Sinha, G. R., Bhatia, Surbhi

This book shows how sentiment analysis can be enhanced using deep learning across multiple domains and explores practical applications of emotion detection. For example, you'll know about sentiment visualization - a tool to reduce dimensionality in data processing or sentiment identification in communication networks.
Download PDF
3. Sentiment Analysis: Mining Opinions, Sentiments, and Emotions
2020 by Bing Liu

This book concentrates on such specific applications as fake-opinion detection, debate analysis, emotion-enhanced dialogue research and intention mining that can be conducted using sentiment analysis techniques.
Download PDF
4. Multimodal Sentiment Analysis
2018 by Soujanya Poria, Amir Hussain, Erik Cambria

Sentiment analysis can be multi-modal - i.e. enhanced by combining text, audio and visual cues. From this book I found out that linguistics and machine learning, audio and visual data processing frameworks are essential in multimodal analysis and improve sentiment analysis accuracy. Data visualizations and case studies, that you can find in this work, can clarify the application of multimodal sentiment analysis techniques.
Download PDF
5. Semantic Sentiment Analysis in Social Streams
2017 by H. Saif

This author showcases how contextual semantics (from word co-occurrences) improves sentiment analysis accuracy in Twitter data and conceptual semantics (from external sources) enhances sentiment models for entities and tweets. It's interesting that tweet-level sentiment analysis performs better when semantics are considered and entity-level sentiment analysis can benefit significantly from semantic. You'll also see that context-sensitive sentiment lexicon adaptation can outperform traditional methods in social media sentiment analysis.
Download PDF
How to download PDF:
1. Install Gooreader
2. Enter Book ID to the search box and press Enter
3. Click "Download Book" icon and select PDF*
* - note that for yellow books only preview pages are downloaded
1. Sentiment Analysis Unveiled: Techniques, Applications, and Innovations
2025 by Neha Nandal, Rohit Tanwar, Varun Sapra

This book is a collection of fairly specific and interesting white papers on the use of sentiment analysis technology. But first, it gives the theoretical background, starting with the Naive Bayes algorithm. Surprisingly, it is still a great starting point for sentiment analysis of customer reviews or tweets, due to its simplicity, efficiency and ability to handle large amounts of data. It is especially good for binary classification (positive/negative). The algorithm is called "naive" because it assumes that all words in a text are independent of each other. It is able to quickly learn which words indicate which sentiment using labeled examples and then apply this knowledge to new, previously unseen texts.
Download PDF
2. New Opportunities for Sentiment Analysis and Information Processing
2021 by Sharaff, Aakanksha, Sinha, G. R., Bhatia, Surbhi

This book shows how sentiment analysis can be enhanced using deep learning across multiple domains and explores practical applications of emotion detection. For example, you'll know about sentiment visualization - a tool to reduce dimensionality in data processing or sentiment identification in communication networks.
Download PDF
3. Sentiment Analysis: Mining Opinions, Sentiments, and Emotions
2020 by Bing Liu

This book concentrates on such specific applications as fake-opinion detection, debate analysis, emotion-enhanced dialogue research and intention mining that can be conducted using sentiment analysis techniques.
Download PDF
4. Multimodal Sentiment Analysis
2018 by Soujanya Poria, Amir Hussain, Erik Cambria

Sentiment analysis can be multi-modal - i.e. enhanced by combining text, audio and visual cues. From this book I found out that linguistics and machine learning, audio and visual data processing frameworks are essential in multimodal analysis and improve sentiment analysis accuracy. Data visualizations and case studies, that you can find in this work, can clarify the application of multimodal sentiment analysis techniques.
Download PDF
5. Semantic Sentiment Analysis in Social Streams
2017 by H. Saif

This author showcases how contextual semantics (from word co-occurrences) improves sentiment analysis accuracy in Twitter data and conceptual semantics (from external sources) enhances sentiment models for entities and tweets. It's interesting that tweet-level sentiment analysis performs better when semantics are considered and entity-level sentiment analysis can benefit significantly from semantic. You'll also see that context-sensitive sentiment lexicon adaptation can outperform traditional methods in social media sentiment analysis.
Download PDF
How to download PDF:
1. Install Gooreader
2. Enter Book ID to the search box and press Enter
3. Click "Download Book" icon and select PDF*
* - note that for yellow books only preview pages are downloaded


