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Small data, data infrastructures and big data (Working Paper 1)
Kitchin, Rob; Lauriault, Tracey P.
The production of academic knowledge has progressed for the past few centuries using small data studies characterized by sampled data generated to answer specific questions. It is a strategy that has been remarkably successful, enabling the sciences, social sciences and humanities to advance in leaps and bounds. This approach is presently being challenged by the development of big data. Small data studies will, however, continue to be important in the future because of their utility in answering targeted queries. Nevertheless, small data are being made more big data-like through the development of new data infrastructures that pool, scale and link small data in order to create larger datasets, encourage sharing and re-use, and open them up to combination with big data and analysis using big data analytics. This paper examines the logic and value of small data studies, their relationship to emerging big data and data science, and the implications of scaling small data into data infrastructures, with a focus on spatial data examples. The final section provides a framework for conceptualizing and making sense of data and data infrastructures.
Keyword(s): Geography; NIRSA-National Institute for Regional and Spatial Analysis; big data; small data; data infrastructures; data politics; spatial data infrastructures; cyber-infrastructures; epistemology
Publication Date:
2014
Type: Report
Peer-Reviewed: No
Institution: Maynooth University
Citation(s): Kitchin, Rob and Lauriault, Tracey P. (2014) Small data, data infrastructures and big data (Working Paper 1). Working Paper. Programmable City, Social Science Research Network.
Publisher(s): Programmable City
File Format(s): other
Related Link(s): http://mural.maynoothuniversity.ie/5684/1/KitchinLauriault_SmallandBigData_ProgrammableCity-WorkingPaper1_SSRN-id2376148.pdf
First Indexed: 2020-01-31 06:24:16 Last Updated: 2020-04-02 06:58:11