The science of statistics versus data science: What is the future?

•A perspective on similarities and differences between data science and statistics.•Aims to stimulate debate and discourse among academics and practitioners.•Calls for data scientists and statisticians to increase collaboration.•SWOT analyses from both data scientist and statistician's perspect...

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Veröffentlicht in:Technological forecasting & social change 2021-12, Vol.173, p.121111, Article 121111
Hauptverfasser: Hassani, Hossein, Beneki, Christina, Silva, Emmanuel Sirimal, Vandeput, Nicolas, Madsen, Dag Øivind
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container_title Technological forecasting & social change
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creator Hassani, Hossein
Beneki, Christina
Silva, Emmanuel Sirimal
Vandeput, Nicolas
Madsen, Dag Øivind
description •A perspective on similarities and differences between data science and statistics.•Aims to stimulate debate and discourse among academics and practitioners.•Calls for data scientists and statisticians to increase collaboration.•SWOT analyses from both data scientist and statistician's perspectives.•Data science and statistics complement each other. The importance and relevance of the discipline of statistics with the merits of the evolving field of data science continues to be debated in academia and industry. Following a narrative literature review with over 100 scholarly and practitioner-oriented publications from statistics and data science, this article generates a pragmatic perspective on the relationships and differences between statistics and data science. Some data scientists argue that statistics is not necessary for data science as statistics delivers simple explanations and data science delivers results. Therefore, this article aims to stimulate debate and discourse among both academics and practitioners in these fields. The findings reveal the need for stakeholders to accept the inherent advantages and disadvantages within the science of statistics and data science. The science of statistics enables data science (aiding its reliability and validity), and data science expands the application of statistics to Big Data. Data scientists should accept the contribution and importance of statistics and statisticians must humbly acknowledge the novel capabilities made possible through data science and support this field of study with their theoretical and pragmatic expertise. Indeed, the emergence of data science does pose a threat to statisticians, but the opportunities for synergies are far greater.
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source Elsevier ScienceDirect Journals; Sociological Abstracts
subjects Big Data
Data science
Debates
Differences
Literature reviews
Perspective
Pragmatism
Science
Scientists
Similarities
Statistics
title The science of statistics versus data science: What is the future?
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