Situated data analysis: a new method for analysing encoded power relationships in social media platforms and apps

Abstract This paper proposes situated data analysis as a new method for analysing social media platforms and digital apps. An analysis of the fitness tracking app Strava is used as a case study to develop and illustrate the method. Building upon Haraway’s concept of situated knowledge and recent res...

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Main Author: Jill Walker Rettberg
Format: Article
Language:English
Published: Springer Nature 2020-06-01
Series:Humanities & Social Sciences Communications
Online Access:https://doi.org/10.1057/s41599-020-0495-3
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author Jill Walker Rettberg
author_facet Jill Walker Rettberg
author_sort Jill Walker Rettberg
collection DOAJ
description Abstract This paper proposes situated data analysis as a new method for analysing social media platforms and digital apps. An analysis of the fitness tracking app Strava is used as a case study to develop and illustrate the method. Building upon Haraway’s concept of situated knowledge and recent research on algorithmic bias, situated data analysis allows researchers to analyse how data is constructed, framed and processed for different audiences and purposes. Situated data analysis recognises that data is always partial and situated, and it gives scholars tools to analyse how it is situated, and what effects this may have. Situated data analysis examines representations of data, like data visualisations, which are meant for humans, and operations with data, which occur when personal or aggregate data is processed algorithmically by machines, for instance to predict behaviour patterns, adjust services or recommend content. The continuum between representational and operational uses of data is connected to different power relationships between platforms, users and society, ranging from normative disciplinary power and technologies of the self to environmental power, a concept that has begun to be developed in analyses of digital media as a power that is embedded in the environment, making certain actions easier or more difficult, and thus remaining external to the subject, in contrast to disciplinary power which is internalised. Situated data analysis can be applied to the aggregation, representation and operationalization of personal data in social media platforms like Facebook or YouTube, or by companies like Google or Amazon, and gives researchers more nuanced tools for analysing power relationships between companies, platforms and users.
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spelling doaj.art-487dc4bca825455b9c8585613f607fb22022-12-21T20:25:17ZengSpringer NatureHumanities & Social Sciences Communications2662-99922020-06-017111310.1057/s41599-020-0495-3Situated data analysis: a new method for analysing encoded power relationships in social media platforms and appsJill Walker Rettberg0University of BergenAbstract This paper proposes situated data analysis as a new method for analysing social media platforms and digital apps. An analysis of the fitness tracking app Strava is used as a case study to develop and illustrate the method. Building upon Haraway’s concept of situated knowledge and recent research on algorithmic bias, situated data analysis allows researchers to analyse how data is constructed, framed and processed for different audiences and purposes. Situated data analysis recognises that data is always partial and situated, and it gives scholars tools to analyse how it is situated, and what effects this may have. Situated data analysis examines representations of data, like data visualisations, which are meant for humans, and operations with data, which occur when personal or aggregate data is processed algorithmically by machines, for instance to predict behaviour patterns, adjust services or recommend content. The continuum between representational and operational uses of data is connected to different power relationships between platforms, users and society, ranging from normative disciplinary power and technologies of the self to environmental power, a concept that has begun to be developed in analyses of digital media as a power that is embedded in the environment, making certain actions easier or more difficult, and thus remaining external to the subject, in contrast to disciplinary power which is internalised. Situated data analysis can be applied to the aggregation, representation and operationalization of personal data in social media platforms like Facebook or YouTube, or by companies like Google or Amazon, and gives researchers more nuanced tools for analysing power relationships between companies, platforms and users.https://doi.org/10.1057/s41599-020-0495-3
spellingShingle Jill Walker Rettberg
Situated data analysis: a new method for analysing encoded power relationships in social media platforms and apps
Humanities & Social Sciences Communications
title Situated data analysis: a new method for analysing encoded power relationships in social media platforms and apps
title_full Situated data analysis: a new method for analysing encoded power relationships in social media platforms and apps
title_fullStr Situated data analysis: a new method for analysing encoded power relationships in social media platforms and apps
title_full_unstemmed Situated data analysis: a new method for analysing encoded power relationships in social media platforms and apps
title_short Situated data analysis: a new method for analysing encoded power relationships in social media platforms and apps
title_sort situated data analysis a new method for analysing encoded power relationships in social media platforms and apps
url https://doi.org/10.1057/s41599-020-0495-3
work_keys_str_mv AT jillwalkerrettberg situateddataanalysisanewmethodforanalysingencodedpowerrelationshipsinsocialmediaplatformsandapps