Make Data Sing: The Automation of Storytelling

Research output: Contribution to journalJournal articleResearchpeer-review

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Make Data Sing : The Automation of Storytelling. / Veel, Kristin.

In: Big Data & Society, Vol. 5, No. 1, 2018.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Veel, K 2018, 'Make Data Sing: The Automation of Storytelling', Big Data & Society, vol. 5, no. 1. https://doi.org/10.1177/2053951718756686

APA

Veel, K. (2018). Make Data Sing: The Automation of Storytelling. Big Data & Society, 5(1). https://doi.org/10.1177/2053951718756686

Vancouver

Veel K. Make Data Sing: The Automation of Storytelling. Big Data & Society. 2018;5(1). https://doi.org/10.1177/2053951718756686

Author

Veel, Kristin. / Make Data Sing : The Automation of Storytelling. In: Big Data & Society. 2018 ; Vol. 5, No. 1.

Bibtex

@article{d75c1dd6b0124912b705c7eedbbcc630,
title = "Make Data Sing: The Automation of Storytelling",
abstract = "With slogans such as {\textquoteleft}Tell the stories hidden in your data{\textquoteright} (www.narrativescience.com) and {\textquoteleft}From data to clear, insightful content – Wordsmith automatically generates narratives on a massive scale that sound like a person crafted each one{\textquoteright} (www.automatedinsights.com), a series of companies currently market themselves on the ability to turn data into stories through Natural Language Generation (NLG) techniques. The data interpretation and knowledge production process is here automated, while at the same time hailing narrativity as a fundamental human ability of meaning-making. Reading both the marketing rhetoric and the functionality of the automated narrative services through narrative theory allows for a contextualization of the rhetoric flourishing in Big Data discourse. Building upon case material obtained from companies such as Arria NLG, Automated Insights, Narrativa, Narrative Science, and Yseop, this article argues that what might be seen as a {\textquoteleft}re-turn{\textquoteright} of narrative as a form of knowledge production that can make sense of large data sets inscribes itself in – but also rearticulates – an ongoing debate about what narrative entails. Methodological considerations are thus raised on the one hand about the insights to be gained for critical data studies by turning to literary theory, and on the other hand about how automated technologies may inform our understanding of narrative as a faculty of human meaning-making.",
keywords = "Faculty of Humanities, Narrative, Natural Language Generation, knowledge production, automation, literary theory, datafication",
author = "Kristin Veel",
year = "2018",
doi = "10.1177/2053951718756686",
language = "English",
volume = "5",
journal = "Big Data & Society",
issn = "2053-9517",
publisher = "SAGE Publications",
number = "1",

}

RIS

TY - JOUR

T1 - Make Data Sing

T2 - The Automation of Storytelling

AU - Veel, Kristin

PY - 2018

Y1 - 2018

N2 - With slogans such as ‘Tell the stories hidden in your data’ (www.narrativescience.com) and ‘From data to clear, insightful content – Wordsmith automatically generates narratives on a massive scale that sound like a person crafted each one’ (www.automatedinsights.com), a series of companies currently market themselves on the ability to turn data into stories through Natural Language Generation (NLG) techniques. The data interpretation and knowledge production process is here automated, while at the same time hailing narrativity as a fundamental human ability of meaning-making. Reading both the marketing rhetoric and the functionality of the automated narrative services through narrative theory allows for a contextualization of the rhetoric flourishing in Big Data discourse. Building upon case material obtained from companies such as Arria NLG, Automated Insights, Narrativa, Narrative Science, and Yseop, this article argues that what might be seen as a ‘re-turn’ of narrative as a form of knowledge production that can make sense of large data sets inscribes itself in – but also rearticulates – an ongoing debate about what narrative entails. Methodological considerations are thus raised on the one hand about the insights to be gained for critical data studies by turning to literary theory, and on the other hand about how automated technologies may inform our understanding of narrative as a faculty of human meaning-making.

AB - With slogans such as ‘Tell the stories hidden in your data’ (www.narrativescience.com) and ‘From data to clear, insightful content – Wordsmith automatically generates narratives on a massive scale that sound like a person crafted each one’ (www.automatedinsights.com), a series of companies currently market themselves on the ability to turn data into stories through Natural Language Generation (NLG) techniques. The data interpretation and knowledge production process is here automated, while at the same time hailing narrativity as a fundamental human ability of meaning-making. Reading both the marketing rhetoric and the functionality of the automated narrative services through narrative theory allows for a contextualization of the rhetoric flourishing in Big Data discourse. Building upon case material obtained from companies such as Arria NLG, Automated Insights, Narrativa, Narrative Science, and Yseop, this article argues that what might be seen as a ‘re-turn’ of narrative as a form of knowledge production that can make sense of large data sets inscribes itself in – but also rearticulates – an ongoing debate about what narrative entails. Methodological considerations are thus raised on the one hand about the insights to be gained for critical data studies by turning to literary theory, and on the other hand about how automated technologies may inform our understanding of narrative as a faculty of human meaning-making.

KW - Faculty of Humanities

KW - Narrative

KW - Natural Language Generation

KW - knowledge production

KW - automation

KW - literary theory

KW - datafication

U2 - 10.1177/2053951718756686

DO - 10.1177/2053951718756686

M3 - Journal article

VL - 5

JO - Big Data & Society

JF - Big Data & Society

SN - 2053-9517

IS - 1

ER -

ID: 186413249