La profondità dei big data. Datacentrismo, ragnatele di significati digitali e cultura algoritmica

Titolo Rivista SOCIOLOGIA E RICERCA SOCIALE
Autori/Curatori Antonio Di Stefano
Anno di pubblicazione 2016 Fascicolo 2016/109 Lingua Italiano
Numero pagine 16 P. 54-69 Dimensione file 97 KB
DOI 10.3280/SR2016-109006
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The main objective of this paper is to describe and analyze the high cultural density and ideological character of the Big Data phenomenon. The technical nature of computational models and the affirmative logic of algorithmic culture conceal the functioning of the mechanisms, simultaneously symbolic and ideological, that contribute to structuring Big Data. As data, it represents the result of an intricate process of construction, imagination, and interpretation. On the other hand, the role played by powerful technological corporations and by a specific form of neoliberal state highlights only the exchange value of Big Data, the production of which is aimed to fulfil commercial and surveillance needs.;

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Antonio Di Stefano, La profondità dei big data. Datacentrismo, ragnatele di significati digitali e cultura algoritmica in "SOCIOLOGIA E RICERCA SOCIALE " 109/2016, pp 54-69, DOI: 10.3280/SR2016-109006