Where health and environment meet: The use of invariant parameters in big data analysis
Leonelli, S; Tempini, N
Date: 8 June 2018
Journal
Synthese
Publisher
Springer Verlag
Publisher DOI
Abstract
The use of big data to investigate the spread of infectious diseases or the impact of the
built environment on human wellbeing goes beyond the realm of traditional approaches
to epidemiology, and includes a large variety of data objects produced by research
communities with different methods and goals. This paper addresses the ...
The use of big data to investigate the spread of infectious diseases or the impact of the
built environment on human wellbeing goes beyond the realm of traditional approaches
to epidemiology, and includes a large variety of data objects produced by research
communities with different methods and goals. This paper addresses the conditions
under which researchers link, search and interpret such diverse data by focusing on
“data mash-ups” – that is the linking of data from epidemiology, biomedicine, climate
and environmental science, which is typically achieved by holding one or more basic
parameters, such as geolocation, as invariant. We argue that this strategy works best
when epidemiologists interpret localisation procedures through an idiographic
perspective that recognises their context-dependence and supports a critical evaluation
of the epistemic value of geolocation data whenever they are used for new research
purposes. Approaching invariants as strategic constructs can foster data linkage and reuse,
and support carefully-targeted predictions in ways that can meaningfully inform
public health. At the same time, it explicitly signals the limitations in the scope and
applicability of the original datasets incorporated into big data collections, and thus the
situated nature of data linkage exercises and their predictive power.
Social and Political Sciences, Philosophy, and Anthropology
Faculty of Humanities, Arts and Social Sciences
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