Living Multiples: How Large-scale Scientific Data-mining Pursues Identity and Differences
Dados Bibliográficos
AUTOR(ES) | |
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AFILIAÇÃO(ÕES) | Lancaster University, UK, Anglia Ruskin University, UK |
ANO | 2013 |
TIPO | Artigo |
PERIÓDICO | Theory, Culture and Society |
ISSN | 0263-2764 |
E-ISSN | 1460-3616 |
EDITORA | Annual Reviews (United States) |
DOI | 10.1177/0263276413476558 |
CITAÇÕES | 5 |
ADICIONADO EM | 2025-08-18 |
MD5 |
9375b22f38481b8e4f071a86f1a639ea
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Resumo
This article responds to two problems confronting social and human sciences: how to relate to digital data, inasmuch as it challenges established social science methods; and how to relate to life sciences, insofar as they produce knowledge that impinges on our own ways of knowing. In a case study of proteomics, we explore how digital devices grapple with large-scale multiples – of molecules, databases, machines and people. We analyse one particular visual device, a cluster-heatmap, produced by scientists by mining data from a large number of experiments on human blood plasma proteins. These proteins make up a myriad multiple whose identity shifts in many ways. Rather than displaying data about proteins, the heatmap constructs a view of the differences and similarities between experiments. We find this attempt to construct a view on many things at once instructive in thinking about multiples more generally. Instead of flattening molecular 'life itself', this visual device superimposes layers of digital devices and techniques from a wide variety of disciplines. This layering suggests a different way of relating to the life sciences more generally: rather than what they know, how they know might be of use to social and human sciences when attending to multiplicities.