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Dear colleagues,

Please consider the following Call For Papers for the 2018 AAG Meeting in
New Orleans.


(Apologies for cross-posting)


*CALL FOR PAPERS*

2018 American Association of Geographers

April 10-14, 2018

New Orleans, LA


*Digital Natures: Critical Practices of Environmental Modeling in the Age
of Big Data*


*Session Organizers: *Eric Nost (University of Wisconsin) & Lily
House-Peters (California State University, Long Beach)


*Session Sponsorship: *Digital Geography Specialty Group (DGSG), Cultural
and Political Ecology (CAPE) Specialty Group


Aiming to confront coastal wetlands loss, Louisiana’s 2017 Coastal Master
Plan presents an explicitly data-driven and model-based framework to guide
future environmental decision-making, taking advantage of big environmental
data sets and tools powerful enough to mine and process them. Louisiana’s
Master Plan is hardly unique in this regard; in fact, it is emblematic of a
growing trend. The proliferation of big environmental data and powerful
modeling tools is rapidly rescripting how we understand and govern
environments, and may be casting environmental data itself as a (new)
resource. In this session, we explore what such “data-driven” governance
and environmental data as resource mean for environments and their
inhabitants around the world. We are especially interested in understanding
the practices by which actors make data available to “drive” governance.


Associated with the rise of big data is the birth new discourses: “data as
the new oil”, data as a hoard, data as a resource to be “mined” (e.g.
Toonders 2014). Increasingly, data managers believe there is value in data
just waiting to be realized, like oil waiting in the ground, ready to be
extracted, refined, transported, and consumed to realize its value. But as
(resource) geographers and political ecologists have long shown, resources
become useful only in relation to what they are asked to do and the
practices that make them legible within particular governance regimes. This
implies actors must work with the data, and this is no more evident than in
environmental modeling. On the one hand, big data discourse disavows
modeling when it emphasizes automaticity, unsupervised algorithms and
machine learning, and the “end of theory.” On the other hand, modeling -
practiced with people - is fundamental to producing and making sense of
data in the first place.


The work of having to sort through big data and determine appropriate
models can just as easily inspire dread for analysts as it can inspire
hopeful visions of data-driven decision-making. In this way, modeling
represents an important moment where both fractures and opportunities in
the project of data-driven governance may become legible - through
modelers’ practice or the technology itself. For instance, resource
geographers have shown how resources themselves can be resistant to
extraction and other aims of their users (Bakker and Bridge 2006; also,
Kinsley 2014). And while digital technologies are often promoted as
“disruptive,” scholars emphasize the conservative dimensions of modeling,
including “algorithmic injustices” that reinforce racism, sexism, and other
kinds of discrimination (Crawford 2016). At the same time, certain kinds of
modeling, like simulations, can generate abundant representations of
possible, even radical, futures.


In this session, we aim to interrogate and draw attention to the roles of
big data and modeling in the production of certain natures, human and
more-than-human resistances to these processes and practices, and the
conditions through which modeling transforms data into a resource.
  Seeking to bridge political ecology and digital geography, we welcome
theoretical and empirical contributions that bring diverse perspectives and
approaches to examine a series of critical questions:


*Who models?*


   - Given the neoliberalization of science (Lave et al. 2010), what are
   the political economic arrangements by which modeling is organized?
   -  In what ways can political ecologists employ modeling?
   - How do modelers navigate working under increasingly constrained
   budgets that limit data collection and tool development?
   - What are the affective dimensions of modeling? How do modelers bring
   not just “values” but emotional investments to bear in making models work?

*How does big data drive decisions?*


   - How exactly do decision-makers learn with models? In what ways are
   decisions algorithmic or not?
   - What roles do (geo)visualization and representation play in
   translating modeling into policy?
   - In what ways are models contested?

*What are the landscape effects?*


   - How do modelers understand the relationships between models and real
   world systems in a big data era? (Salmond et al. 2017)
   - How do different ecosystems enable or resist modeling?
   - In what ways does modeling and and data-driven environmental
   governance shape landscape outcomes? What natures are produced?

Those who would like to participate in the session should contact us
by *October
20* with a brief statement of interest and/or a title & abstract (250
words). Session participants will need to submit an abstract and register
for the conference by October 25.

*Contact Info*: Eric Nost ([log in to unmask]) & Lily House-Peters (
[log in to unmask])


*References*

Bakker, K., and G. Bridge. 2006. Material worlds? Resource geographies and
the `matter of nature’. *Progress in Human Geography* 30 (1):5–27.


Crawford, K. 2016. Artificial Intelligence’s White Guy Problem. NYT.com.
https://www.nytimes.com/2016/06/26/opinion/sunday/a
rtificial-intelligences-white-guy-problem.html (last accessed 20 September
2017)


Kinsley, S. 2014. The matter of “virtual” geographies. *Progress in Human
Geography* 38 (3):364–384.


Lave, R., P. Mirowski, and S. Randalls. 2010. Introduction: STS and
Neoliberal Science. *Social Studies of Science* 40 (5):659–675.


Salmond, J. A., M. Tadaki, and M. Dickson. 2017. Can big data tame a
“naughty” world?: Environmental big data. *The Canadian Geographer / Le
Géographe canadien*61 (1):52–63.


Toonders, J. 2014. Data is the New Oil of the Digital Economy. Wired.com.
https://www.wired.com/insights/2014/07/data-new-oil-digital-economy/ (last
accessed 20 September 2017).

-- 
Lily House-Peters, Ph.D.
Assistant Professor, Department of Geography
Resilience Commitment Coordinator, Office of Sustainability & Planning
California State University, Long Beach

Office: PH1-224
Tel: (562) 985-1889
Email: [log in to unmask]
http://www.cla.csulb.edu/departments/geography/faculty/lily-house-peters/

Personal Website: https://lilyhousepetersgeographer.wordpress.com/