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Big data for regional science / Laurie A. Schintler
Titre : Big data for regional science Type de document : texte imprimé Auteurs : Laurie A. Schintler, Auteur ; Zhenhua Chen, Auteur Editeur : Routledge Année de publication : 2018 Collection : Routledge Advances in Regional Economics, Science and Policy Importance : 1 vol. (350 p.) Présentation : ill. Format : 24 cm. ISBN/ISSN/EAN : 978-1-138-28218-6 Prix : 111 Langues : Anglais (eng) Tags : data urban studies Résumé : Recent technological advancements and other related factors and trends are contributing to the production of an astoundingly large and rapidly accelerating collection of data, or ‘Big Data’. This data now allows us to examine urban and regional phenomena in ways that were previously not possible. Despite the tremendous potential of big data for regional science, its use and application in this context is fraught with issues and challenges. This book brings together leading contributors to present an interdisciplinary, agenda-setting and action-oriented platform for research and practice in the urban and regional community.
This book provides a comprehensive, multidisciplinary and cutting-edge perspective on big data for regional science. Chapters contain a collection of research notes contributed by experts from all over the world with a wide array of disciplinary backgrounds. The content is organized along four themes: sources of big data; integration, processing and management of big data; analytics for big data; and, higher level policy and programmatic considerations. As well as concisely and comprehensively synthesising work done to date, the book also considers future challenges and prospects for the use of big data in regional science.
Big Data for Regional Science provides a seminal contribution to the field of regional science and will appeal to a broad audience, including those at all levels of academia, industry, and government.Niveau : Recherche Publication de Théma : Non Big data for regional science [texte imprimé] / Laurie A. Schintler, Auteur ; Zhenhua Chen, Auteur . - Routledge, 2018 . - 1 vol. (350 p.) : ill. ; 24 cm.. - (Routledge Advances in Regional Economics, Science and Policy) .
ISBN : 978-1-138-28218-6 : 111
Langues : Anglais (eng)
Tags : data urban studies Résumé : Recent technological advancements and other related factors and trends are contributing to the production of an astoundingly large and rapidly accelerating collection of data, or ‘Big Data’. This data now allows us to examine urban and regional phenomena in ways that were previously not possible. Despite the tremendous potential of big data for regional science, its use and application in this context is fraught with issues and challenges. This book brings together leading contributors to present an interdisciplinary, agenda-setting and action-oriented platform for research and practice in the urban and regional community.
This book provides a comprehensive, multidisciplinary and cutting-edge perspective on big data for regional science. Chapters contain a collection of research notes contributed by experts from all over the world with a wide array of disciplinary backgrounds. The content is organized along four themes: sources of big data; integration, processing and management of big data; analytics for big data; and, higher level policy and programmatic considerations. As well as concisely and comprehensively synthesising work done to date, the book also considers future challenges and prospects for the use of big data in regional science.
Big Data for Regional Science provides a seminal contribution to the field of regional science and will appeal to a broad audience, including those at all levels of academia, industry, and government.Niveau : Recherche Publication de Théma : Non Réservation
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