Join our mailing list
Get exclusive deals and learn about new products!
Reliable shipping
Flexible returns
From rule-based systems to deep learning, the author presents everything you need to know about sentiment analysis
As sentiment analysis evolves from simple lexicon matching to sophisticated multimodal deep learning, practitioners need authoritative guidance spanning the field's entire trajectory. Sentiment Analysis in NLP delivers this breadth, covering text-based, aspect-based, multimodal, and implicit sentiment analysis, integrating text, audio, and visual data processing while addressing both theoretical foundations and real-world implementations.
This book examines neural network architectures including CNNs and RNNs for text analysis, transformer models like BERT, and Graph Attention Networks. Dedicated chapters cover attention mechanisms and generative AI for synthetic data generation. Practical applications span product development, social media monitoring, and public health surveillance. Python code, datasets, and a solutions manual support hands-on learning.
Readers will also find:
This reference serves NLP researchers, data scientists, and business intelligence professionals who implement sentiment analysis systems. Graduate students in machine learning and deep learning will find both theoretical depth and practical resources for coursework and research applications.
Published by: Wiley-IEEE Press
Publication Date: 2026-11-24
Format: Hardcover
ISBN-13: 9781394349111
DOI:
Dimensions: cm xcm
Pages: 304