
Big Data Recommender Systems: Volume 1
Algorithms, Architectures, Big Data, Security and Trust
Institution of Engineering and Technology (Publisher)
Published on 29. August 2019
Book
Hardback
368 pages
978-1-78561-975-5 (ISBN)
Description
First designed to generate personalized recommendations to users in the 90s, recommender systems apply knowledge discovery techniques to users' data to suggest information, products, and services that best match their preferences. In recent decades, we have seen an exponential increase in the volumes of data, which has introduced many new challenges.
Divided into two volumes, this comprehensive set covers recent advances, challenges, novel solutions, and applications in big data recommender systems. Volume 1 contains 14 chapters addressing foundations, algorithms and architectures, approaches for big data, and trust and security measures. Volume 2 covers a broad range of application paradigms for recommender systems over 22 chapters.
Divided into two volumes, this comprehensive set covers recent advances, challenges, novel solutions, and applications in big data recommender systems. Volume 1 contains 14 chapters addressing foundations, algorithms and architectures, approaches for big data, and trust and security measures. Volume 2 covers a broad range of application paradigms for recommender systems over 22 chapters.
More details
Series
Language
English
Place of publication
Stevenage
United Kingdom
Target group
College/higher education
Professional and scholarly
Product notice
sewn/stitched
Cloth over boards
Dimensions
Height: 241 mm
Width: 161 mm
Thickness: 26 mm
Weight
720 gr
ISBN-13
978-1-78561-975-5 (9781785619755)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Persons
Osman Khalid is assistant professor at the department of computer sciences, COMSATS Institute of Information Technology, Abbottabad, Pakistan. His research interests include recommender systems, trust and reputation system, disaster response systems, delay tolerant networks, wireless networks, and fog computing.
Samee U. Khan is associate professor of electrical and computer engineering at the North Dakota State University, USA. His research interests include optimization, robustness, and security of systems.
Albert Y. Zomaya is chair professor of high performance computing & networking and Australian research council professorial fellow in the School of Information Technologies, The University of Sydney, Australia. He is also the director of the Centre for Distributed and High Performance Computing.
Samee U. Khan is associate professor of electrical and computer engineering at the North Dakota State University, USA. His research interests include optimization, robustness, and security of systems.
Albert Y. Zomaya is chair professor of high performance computing & networking and Australian research council professorial fellow in the School of Information Technologies, The University of Sydney, Australia. He is also the director of the Centre for Distributed and High Performance Computing.
Editor
Assistant ProfessorCOMSATS Institute of Information Technology, Department of Computer Sciences, Pakistan
Associate ProfessorNorth Dakota State University, USA
Chair ProfessorThe University of Sydney, Australia
Content
Chapter 1: Introduction to big data recommender systems - volume 1
Chapter 2: Theoretical foundations for recommender systems
Chapter 3: Benchmarking big data recommendation algorithms using Hadoop orApache Spark
Chapter 4: Efficient and socio-aware recommendation approaches for bigdata networked systems
Chapter 5: Novel hybrid approaches for big data recommendations
Chapter 6: Deep generative models for recommender systems
Chapter 7: Recommendation algorithms for unstructured big data such as text, audio, image and video
Chapter 8: Deep segregation of plastic (DSP): segregation of plastic and nonplastic using deep learning
Chapter 9: Spatiotemporal recommendation with big geo-social networking data
Chapter 10: Recommender system for predicting malicious Android applications
Chapter 11: Security threats and their mitigation in big data recommender systems
Chapter 12: User's privacy in recommendation systems applying online social network data: a survey and taxonomy
Chapter 13: Private entity resolution for big data on Apache Spark using multiple phonetic codes
Chapter 14: Deep learning architecture for big data analytics in detecting intrusions and malicious URL
Chapter 2: Theoretical foundations for recommender systems
Chapter 3: Benchmarking big data recommendation algorithms using Hadoop orApache Spark
Chapter 4: Efficient and socio-aware recommendation approaches for bigdata networked systems
Chapter 5: Novel hybrid approaches for big data recommendations
Chapter 6: Deep generative models for recommender systems
Chapter 7: Recommendation algorithms for unstructured big data such as text, audio, image and video
Chapter 8: Deep segregation of plastic (DSP): segregation of plastic and nonplastic using deep learning
Chapter 9: Spatiotemporal recommendation with big geo-social networking data
Chapter 10: Recommender system for predicting malicious Android applications
Chapter 11: Security threats and their mitigation in big data recommender systems
Chapter 12: User's privacy in recommendation systems applying online social network data: a survey and taxonomy
Chapter 13: Private entity resolution for big data on Apache Spark using multiple phonetic codes
Chapter 14: Deep learning architecture for big data analytics in detecting intrusions and malicious URL