Big data and statistics: A statistician’s perspective

Authors

  • David Rossell University of Warwick (United Kingdom).

DOI:

https://doi.org/10.7203/metode.0.3590

Keywords:

Big Data, statistics, case studies, pitfalls, challenges

Abstract

Big Data brings unprecedented power to address scientific, economic and societal issues, but also amplifies the possibility of certain pitfalls. These include using purely data-driven approaches that disregard understanding the phenomenon under study, aiming at a dynamically moving target, ignoring critical data collection issues, summarizing or preprocessing the data inadequately and mistaking noise for signal. We review some success stories and illustrate how statistical principles can help obtain more reliable information from data. We also touch upon current challenges that require active methodological research, such as strategies for efficient computation, integration of heterogeneous data, extending the underlying theory to increasingly complex questions and, perhaps most importantly, training a new generation of scientists to develop and deploy these strategies.

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Author Biography

David Rossell, University of Warwick (United Kingdom).

Professor at the Department of Statistics. University of Warwick (United Kingdom).

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Published

2015-04-16

How to Cite

Rossell, D. (2015). Big data and statistics: A statistician’s perspective. Metode Science Studies Journal, (5), 143–149. https://doi.org/10.7203/metode.0.3590
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The digits of science. Statistics as scientific tool

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