Big Data Recommender Systems Volume 1 Algorithms Architectures Big Data Security And Trust 2019 Edition at Meripustak

Big Data Recommender Systems Volume 1 Algorithms Architectures Big Data Security And Trust 2019 Edition

Books from same Author: Osman Khalid, Samee U. Khan

Books from same Publisher: Institution of Engineering and Technology

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  • General Information  
    Author(s)Osman Khalid, Samee U. Khan
    PublisherInstitution of Engineering and Technology
    ISBN9781785619755
    Pages368
    BindingHardbound
    LanguageEnglish
    Publish YearAugust 2019

    Description

    Institution of Engineering and Technology Big Data Recommender Systems Volume 1 Algorithms Architectures Big Data Security And Trust 2019 Edition by Osman Khalid, Samee U. Khan

    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.