[Previous message][Next message][Back to index]
[ecrea] Algorithms, Automation, & News Conference. CfP for Special Issue & Edited Book
Thu Apr 27 22:37:07 GMT 2017
ALGORITHMS, AUTOMATION, AND NEWS: Capabilities, cases, and consequences
CALL FOR PAPERS: Conference, special issue & edited book
http://algorithmic.news
* Conference in Munich, Germany — May 22–23, 2018
* Select papers published in special issue of Digital Journalism &
proposed edited volume
CONFERENCE BENEFITS:
* Free hotel accommodation for presenters
* Need-based travel stipends available for presenters
* No conference fee
* Precedes the 2018 ICA convention in nearby Prague
ORGANIZERS & EDITORS:
* Neil Thurman, Ludwig-Maximilians-University Munich
* Seth C. Lewis, University of Oregon
* With the assistance of Dr. Jessica Kunert,
Ludwig-Maximilians-University Munich
KEYNOTE SPEAKER:
* Philip M. Napoli, Duke University
CONFIRMED SPEAKERS:
* C.W. Anderson, College of Staten Island & University of Leeds
* Natali Helberger, University of Amsterdam
* Nicholas Diakopoulos, University of Maryland
* Steve Schifferes, City, University of London
* Konstantin Doerr, University of Zurich
CALL FOR PAPERS:
We live in a world increasingly influenced by algorithms and automation.
The ubiquity of computing in contemporary culture has resulted in human
decision-making being augmented, and even partially replaced, by
computational processes. Such augmentation and substitution is already
common, and even predominates, in some industries. This trend is now
spreading rapidly to the fourth estate—our news media.
Algorithms and automation are increasingly implicated in many aspects of
news production, distribution, and consumption. For example, algorithms
are being used to filter the enormous quantities of content published on
social media platforms, picking out what is potentially newsworthy and
alerting journalists to its existence (Thurman et al., 2016). Meanwhile,
automated journalism—the transforming of structured data on such things
as sports results and financial earnings reports into narrative news
texts with little to no human intervention aside from the original
programming (Carlson, 2015)—grows apace. What began some years ago as
small-scale experiments in machine-written news has, amid the
development of big data broadly, become a global phenomenon, involving
technology providers from the U.S. to Germany to China developing
algorithms to deliver automated news in multiple languages (Dörr, 2016).
And, algorithms are being used in new ways to distribute and package
news content, both enabling consumers to request more of what they like
and less of what they don’t and also making decisions on consumers’
behalf based on their behavioral traits, social networks, and personal
characteristics (Groot Kormelink and Costera Meijer, 2014).
Altogether, these developments raise questions about the social role of
journalism as a longstanding facilitator of public knowledge. What are
the implications for human labor and journalistic authority? for
concerns around news quality, transparency, and accountability? for
notions of who (or what) does journalism? for how news moves among
various publics (or not)? Ultimately, what happens when editorial
functions once performed by journalists are increasingly assumed by new
sets of actors situated at the intersection of human and machine?
Ultimately, what do algorithms and automation mean for journalism—its
people, purposes, and processes; its norms, ethics, and values; its
relationship with audiences and public life; and its obligations toward
data management and user privacy?
This three-part call—conference, special issue, and book project—takes
up these and other questions by bringing together the latest scholarly
research on algorithms, automation, and news. In particular, it seeks to
organize research on capabilities, cases, and consequences associated
with these technologies: explorations of the possibilities and perils,
of theory and practice, and of comparative perspectives according to
various sites and levels of analysis. Ultimately, we aim for research
that provides a future orientation while grounded in appropriate
historical context, contemporary empirical research, and rigorous
conceptual development.
By some accounts, the promise of algorithms and automation is that news
may be faster and more personalized, that websites and apps may be more
engaging, and even that quality journalism may be better funded, to the
benefit of all. However, there are also concerns, including anxieties
around:
* the hidden biases built into bots deciding what’s newsworthy,
* the ‘popularism’ that tracking trends inevitably promotes,
* how misplaced trust in algorithmic agency might blunt journalists’
critical faculties, and
* the privacy of data collected on individuals for the purposes of
newsgathering and distribution.
Moreover, as more news is templated or data-driven, there is unease
about issues such as:
* who and what gets reported,
* the ethics of authorship and accountability,
* the legal issues of libel by algorithm,
* the availability of opportunities for professional development,
training, and education, and
* the continuity of fact-checking and analysis, among others.
And, as more news is explicitly or implicitly personalized, there is
disquiet about:
* whether we will retreat into our own private information worlds,
‘protected’ from new, challenging and stimulating viewpoints,
* the algorithmically oriented spread of ‘fake news’ within such filter
bubbles,
* the boundaries between editorial and advertising content, and
* the transparency and accountability of the decisions made about what
we get to read and watch.
Through the conference, and the special issue and book to follow, we
seek to facilitate conversation around these and related issues across a
variety of academic fields, including computer science, information
science, computational linguistics, media informatics, law and public
policy, science and technology studies, philosophy, sociology, political
science, and design, in addition to communication, media and journalism
studies. We welcome original, unpublished articles drawing on a variety
of theoretical and methodological approaches, with a preference for
empirically driven and/or conceptually rich accounts. These papers might
touch on a range of themes, including but not limited to the issues
outlined above.
Inquiries about this call are encouraged and should be directed to
(conference /at/ algorithmic.news).
TIMELINE:
* July 15, 2017: abstract submission deadline. Abstracts should be
500-1,000 words (not including references) and sent to
(conference /at/ algorithmic.news). Please also include a 100-word biography of
each author and 6-8 keywords describing your proposal. Work should be
original, not previously published elsewhere.
* Mid-August 2017: decisions on abstracts
* February 15, 2018: full 7,000-word papers due for initial round of
feedback by conference peers
* May 22–23, 2018: conference in Munich
* Post-conference: peer-review and feedback process leading toward
publication in either the special issue or edited volume
http://algorithmic.news
ORGANISERS & SPONSORS:
The conference is being organised by the Center for Advanced Studies at
Ludwig-Maximilians-University Munich, and is sponsored by The Volkswagen
Foundation (VolkswagenStiftung) as well as the Shirley Papé Chair in
Emerging Media in the School of Journalism and Communication at the
University of Oregon.
---------------
The COMMLIST
---------------
This mailing list is a free service offered by Nico Carpentier. Please
use it responsibly and wisely.
--
To subscribe or unsubscribe, please visit http://commlist.org/
--
Before sending a posting request, please always read the guidelines at
http://commlist.org/
--
To contact the mailing list manager:
Email: (nico.carpentier /at/ vub.ac.be)
URL: http://nicocarpentier.net
---------------
[Previous message][Next message][Back to index]