76 research outputs found

    The Analysis of Big Data on Cites and Regions - Some Computational and Statistical Challenges

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    Big Data on cities and regions bring new opportunities and challenges to data analysts and city planners. On the one side, they hold great promise to combine increasingly detailed data for each citizen with critical infrastructures to plan, govern and manage cities and regions, improve their sustainability, optimize processes and maximize the provision of public and private services. On the other side, the massive sample size and high-dimensionality of Big Data and their geo-temporal character introduce unique computational and statistical challenges. This chapter provides overviews on the salient characteristics of Big Data and how these features impact on paradigm change of data management and analysis, and also on the computing environment.Series: Working Papers in Regional Scienc

    Big Data and Regional Science: Opportunities, Challenges, and Directions for Future Research

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    Recent technological, social, and economic trends and transformations are contributing to the production of what is usually referred to as Big Data. Big Data, which is typically defined by four dimensions -- Volume, Velocity, Veracity, and Variety -- changes the methods and tactics for using, analyzing, and interpreting data, requiring new approaches for data provenance, data processing, data analysis and modeling, and knowledge representation. The use and analysis of Big Data involves several distinct stages from "data acquisition and recording" over "information extraction" and "data integration" to "data modeling and analysis" and "interpretation", each of which introduces challenges that need to be addressed. There also are cross-cutting challenges, which are common challenges that underlie many, sometimes all, of the stages of the data analysis pipeline. These relate to "heterogeneity", "uncertainty", "scale", "timeliness", "privacy" and "human interaction". Using the Big Data analysis pipeline as a guiding framework, this paper examines the challenges arising in the use of Big Data in regional science. The paper concludes with some suggestions for future activities to realize the possibilities and potential for Big Data in regional science.Series: Working Papers in Regional Scienc

    Silikon-Handstützen zur Prophylaxe von Palmarkontrakturen bei kleinen Kindern

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    Die Chirurgische Behandlung von Schwerbrandverletzten: Das Grazer Konzept

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    Dermisrekonstruktion mit Matriderm® bei ganzdermalen Verbrennungen im Kindesalter

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    Our bloody learning curve

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    Typische Verletzungsmuster nach Butangasexplosionen in Autos

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    Hebedefektmorbiditäten nach Hebung eines medialen Femurkondyllappens - Eine retrospektive Studie

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