Big Data Recommender Systems
Application Paradigms
Herausgeber: Khalid, Osman; Zomaya, Albert Y; Khan, Samee U
Big Data Recommender Systems
Application Paradigms
Herausgeber: Khalid, Osman; Zomaya, Albert Y; Khan, Samee U
- Gebundenes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
This book combines experimental and theoretical research on big data recommender systems to help computer scientists develop new concepts and methodologies for complex applications. It includes original scientific contributions in the form of theoretical foundations, comparative analysis, surveys, case studies, techniques and tools.
Andere Kunden interessierten sich auch für
- Machine Learning, Blockchain Technologies and Big Data Analytics for Iots184,99 €
- José J. Pazos AriasRecommender Systems for the Social Web77,99 €
- Povilas PilkauskasWikipedia Recommender System33,99 €
- Aiot Technologies and Applications for Smart Environments150,99 €
- Thaddeus EzeTrustworthy Autonomic Computing143,99 €
This book combines experimental and theoretical research on big data recommender systems to help computer scientists develop new concepts and methodologies for complex applications. It includes original scientific contributions in the form of theoretical foundations, comparative analysis, surveys, case studies, techniques and tools.
Produktdetails
- Produktdetails
- Verlag: Institution of Engineering & Technology
- Seitenzahl: 520
- Erscheinungstermin: 29. August 2019
- Englisch
- Abmessung: 239mm x 160mm x 30mm
- Gewicht: 862g
- ISBN-13: 9781785619779
- ISBN-10: 1785619772
- Artikelnr.: 56156665
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
- Verlag: Institution of Engineering & Technology
- Seitenzahl: 520
- Erscheinungstermin: 29. August 2019
- Englisch
- Abmessung: 239mm x 160mm x 30mm
- Gewicht: 862g
- ISBN-13: 9781785619779
- ISBN-10: 1785619772
- Artikelnr.: 56156665
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
* Chapter 1: Introduction to big data recommender systems - volume 2
* Chapter 2: Deep neural networks meet recommender systems
* Chapter 3: Cold-start solutions for recommendation systems
* Chapter 4: Performance metrics for traditional and context-aware big
data recommender systems
* Chapter 5: Mining urban lifestyles: urban computing, human behavior
and recommender systems
* Chapter 6: Embedding principal component analysis inference in expert
sensors for big data applications
* Chapter 7: Decision support system to detect hidden pathologies of
stroke: the CIPHER project
* Chapter 8: Big data analytics for smart grids
* Chapter 9: Internet of Things and big data recommender systems to
support Smart Grid
* Chapter 10: Recommendation techniques and their applications to the
delivery of an online bibliotherapy
* Chapter 11: Stream processing in Big Data for e-health care
* Chapter 12: How Hadoop and Spark benchmarking algorithms can improve
remote health monitoring and data management platforms?
* Chapter 13: Extracting and understanding user sentiments for big data
analytics in big business brands
* Chapter 14: A recommendation system for allocating video resources in
multiple partitions
* Chapter 15: A mood-sensitive recommendation system in social sensing
* Chapter 16: The paradox of opinion leadership and recommendation
culture in Chinese online movie reviews
* Chapter 17: Real-time optimal route recommendations using MapReduce
* Chapter 18: Investigation of relationships between high-level user
contexts and mobile application usage
* Chapter 19: Machine learning and stock recommendation
* Chapter 20: The role of smartphone in recommender systems:
opportunities and challenges
* Chapter 21: Graph-based recommendations: from data representation to
feature extraction and application
* Chapter 22: AmritaDGA: a comprehensive data set for domain generation
algorithms (DGAs) based domain name detection systems and application
of deep learning
* Chapter 2: Deep neural networks meet recommender systems
* Chapter 3: Cold-start solutions for recommendation systems
* Chapter 4: Performance metrics for traditional and context-aware big
data recommender systems
* Chapter 5: Mining urban lifestyles: urban computing, human behavior
and recommender systems
* Chapter 6: Embedding principal component analysis inference in expert
sensors for big data applications
* Chapter 7: Decision support system to detect hidden pathologies of
stroke: the CIPHER project
* Chapter 8: Big data analytics for smart grids
* Chapter 9: Internet of Things and big data recommender systems to
support Smart Grid
* Chapter 10: Recommendation techniques and their applications to the
delivery of an online bibliotherapy
* Chapter 11: Stream processing in Big Data for e-health care
* Chapter 12: How Hadoop and Spark benchmarking algorithms can improve
remote health monitoring and data management platforms?
* Chapter 13: Extracting and understanding user sentiments for big data
analytics in big business brands
* Chapter 14: A recommendation system for allocating video resources in
multiple partitions
* Chapter 15: A mood-sensitive recommendation system in social sensing
* Chapter 16: The paradox of opinion leadership and recommendation
culture in Chinese online movie reviews
* Chapter 17: Real-time optimal route recommendations using MapReduce
* Chapter 18: Investigation of relationships between high-level user
contexts and mobile application usage
* Chapter 19: Machine learning and stock recommendation
* Chapter 20: The role of smartphone in recommender systems:
opportunities and challenges
* Chapter 21: Graph-based recommendations: from data representation to
feature extraction and application
* Chapter 22: AmritaDGA: a comprehensive data set for domain generation
algorithms (DGAs) based domain name detection systems and application
of deep learning
* Chapter 1: Introduction to big data recommender systems - volume 2
* Chapter 2: Deep neural networks meet recommender systems
* Chapter 3: Cold-start solutions for recommendation systems
* Chapter 4: Performance metrics for traditional and context-aware big
data recommender systems
* Chapter 5: Mining urban lifestyles: urban computing, human behavior
and recommender systems
* Chapter 6: Embedding principal component analysis inference in expert
sensors for big data applications
* Chapter 7: Decision support system to detect hidden pathologies of
stroke: the CIPHER project
* Chapter 8: Big data analytics for smart grids
* Chapter 9: Internet of Things and big data recommender systems to
support Smart Grid
* Chapter 10: Recommendation techniques and their applications to the
delivery of an online bibliotherapy
* Chapter 11: Stream processing in Big Data for e-health care
* Chapter 12: How Hadoop and Spark benchmarking algorithms can improve
remote health monitoring and data management platforms?
* Chapter 13: Extracting and understanding user sentiments for big data
analytics in big business brands
* Chapter 14: A recommendation system for allocating video resources in
multiple partitions
* Chapter 15: A mood-sensitive recommendation system in social sensing
* Chapter 16: The paradox of opinion leadership and recommendation
culture in Chinese online movie reviews
* Chapter 17: Real-time optimal route recommendations using MapReduce
* Chapter 18: Investigation of relationships between high-level user
contexts and mobile application usage
* Chapter 19: Machine learning and stock recommendation
* Chapter 20: The role of smartphone in recommender systems:
opportunities and challenges
* Chapter 21: Graph-based recommendations: from data representation to
feature extraction and application
* Chapter 22: AmritaDGA: a comprehensive data set for domain generation
algorithms (DGAs) based domain name detection systems and application
of deep learning
* Chapter 2: Deep neural networks meet recommender systems
* Chapter 3: Cold-start solutions for recommendation systems
* Chapter 4: Performance metrics for traditional and context-aware big
data recommender systems
* Chapter 5: Mining urban lifestyles: urban computing, human behavior
and recommender systems
* Chapter 6: Embedding principal component analysis inference in expert
sensors for big data applications
* Chapter 7: Decision support system to detect hidden pathologies of
stroke: the CIPHER project
* Chapter 8: Big data analytics for smart grids
* Chapter 9: Internet of Things and big data recommender systems to
support Smart Grid
* Chapter 10: Recommendation techniques and their applications to the
delivery of an online bibliotherapy
* Chapter 11: Stream processing in Big Data for e-health care
* Chapter 12: How Hadoop and Spark benchmarking algorithms can improve
remote health monitoring and data management platforms?
* Chapter 13: Extracting and understanding user sentiments for big data
analytics in big business brands
* Chapter 14: A recommendation system for allocating video resources in
multiple partitions
* Chapter 15: A mood-sensitive recommendation system in social sensing
* Chapter 16: The paradox of opinion leadership and recommendation
culture in Chinese online movie reviews
* Chapter 17: Real-time optimal route recommendations using MapReduce
* Chapter 18: Investigation of relationships between high-level user
contexts and mobile application usage
* Chapter 19: Machine learning and stock recommendation
* Chapter 20: The role of smartphone in recommender systems:
opportunities and challenges
* Chapter 21: Graph-based recommendations: from data representation to
feature extraction and application
* Chapter 22: AmritaDGA: a comprehensive data set for domain generation
algorithms (DGAs) based domain name detection systems and application
of deep learning