Description

This book presents a comprehensive and up-to-date exploration of recommender systems, integrating foundational concepts with recent advancements in the field. It covers classical approaches such as collaborative filtering, content-based methods, and hybrid models, while also examining modern deep learning architectures including transformers and graph-based techniques. Emphasis is placed on evaluation metrics beyond accuracy—such as diversity, novelty, serendipity, and fairness—reflecting real-world system requirements. The book further addresses challenges in scalability, data sparsity, cold-start problems, and privacy-preserving approaches like federated learning. Through practical examples and case studies across domains such as e-commerce, healthcare, and social media, it provides a balanced perspective on both theoretical principles and applied system design.

Additional Information
Weight0.5 kg
Dimensions22.9 × 14.87 × 1.5 cm
Binding Type

Paperback

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About Author

Dr. Jobin Thomas is an Assistant Professor at Dayandasagar University, Bangalore, with 12 years of academic experience in Computer Science and Engineering. His research interests focus on time series analysis and machine learning, and he has contributed extensively to international journals and conferences. Dr. Thomas also serves as a reviewer for reputed international journals. In…

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