Competing Imaginaries and Partisan Divides in the Data Rhetoric of Advocacy Organizations

Author:

Darian Shiva1ORCID,Dym Brianna2ORCID,Voida Amy3ORCID

Affiliation:

1. University of Colorado Boulder, Boulder, CO, USA

2. Northeastern University, Portland, ME, USA

3. University of Colorado, Boulder, Boulder, CO, USA

Abstract

Data are wielded to shape public opinion, particularly in electoral contexts where the role and veracity of information is questioned. This post-truth era is characterized by world events in which facts too often are obfuscated and evidential standards are abandoned. To study how data are used to influence pressing and divisive contemporary issues, this paper explores the rhetorical work that quantitative data are doing through the blogging practices of advocacy organizations during the highly-polarized month preceding the 2016 United States elections. We present results of a qualitative content analysis of the quantitative data used in 337 blog posts published by five pairs of conservative and liberal advocacy organizations over the course of the month leading up to the 2016 US elections. We identify key data rhetoric practices along partisan lines and contribute an analytic framework-evaluating ethos, pathos, and logos- that can be used to analyze the rhetorical use of data in other contexts. We then characterize two different imaginaries that come into conflict in this research: 1) the political imaginaries being promoted through organizational blogging and 2) the sociotechnical imaginary of the data economy, foregrounding differences in the epistemic value of data in each. We conclude by outlining research challenges and trajectories for future research within each of the two imaginaries of data.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Human-Computer Interaction,Social Sciences (miscellaneous)

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