The State of Data: Reflections on Using 'Big' and Administrative Data Sources in Social Research

Authors

DOI:

https://doi.org/10.46991/BYSU:F/2022.13.2.028

Keywords:

social research, sociology, big data, administrative data, quantitative data analysis, methodology

Abstract

Recent computing power and storage advancements have meant more data are being collected and stored. Referred to as 'Big data', these data sources offer researchers myriad opportunities to make observations about the social world. These data can be massive, provide insight into whole populations rather than just a sample, and be used to analyse social behaviour in real time. Administrative data, a subcategory under the big data umbrella, also offers researchers abundant opportunities to conduct highly relevant research in many areas, including sociology, social policy, education, health studies and many more. This paper offers reflections on social research during the digital age by examining different forms of data, both 'big' and 'small', and their associated advantages and disadvantages. The paper concludes by suggesting that although big data has some promising elements, it also comes with some limitations and povwill not replace 'traditional' social surveys. And yet, when used in conjunction with social surveys, appropriately and ethically, big data could offer the researchers additional valuable insights.

Author Biographies

Scot Hunter, University of Stirling

Research Fellow, PhD student (University of Stirling)

Marina Shapira, University of Stirling

Associate Professor in Sociology, University of Stirling

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Published

2022-12-31

How to Cite

Hunter, S., & Shapira, M. (2022). The State of Data: Reflections on Using ’Big’ and Administrative Data Sources in Social Research . Journal of Sociology: Bulletin of Yerevan University, 13(2 (36), 28–37. https://doi.org/10.46991/BYSU:F/2022.13.2.028

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Section

Theory of Sociology