Frontiers in data analytics for adaptation research: Topic modeling

Resource type
Journal Article
Authors/contributors
Title
Frontiers in data analytics for adaptation research: Topic modeling
Abstract
Rapid growth over the past two decades in digitized textual information represents untapped potential for methodological innovations in the adaptation governance literature that draw on machine learning approaches already being applied in other areas of computational social sciences. This Focus Article explores the potential for text mining techniques, specifically topic modeling, to leverage this data for large‐scale analysis of the content of adaptation policy documents. We provide an overview of the assumptions and procedures that underlie the use of topic modeling, and discuss key areas in the adaptation governance literature where topic modeling could provide valuable insights. We demonstrate the diversity of potential applications for topic modeling with two examples that examine: (a) how adaptation is being talked about by political leaders in United Nations Framework Convention on Climate Change; and (b) how adaptation is being discussed by decision‐makers and public administrators in Canadian municipalities using documents collected from 25 city council archives. This article is categorized under: Vulnerability and Adaptation to Climate Change > Institutions for Adaptation
Publication
WIREs Climate Change
Volume
10
Issue
3
Pages
-
Date
2019-02-27
ISSN
1757-7780
Call Number
openalex: W2917452130
Extra
openalex: W2917452130 mag: 2917452130
Citation
Lesnikowski, A., Belfer, E., Rodman, E., Smith, J., Biesbroek, R., Wilkerson, J., Ford, J. D., & Berrang‐Ford, L. (2019). Frontiers in data analytics for adaptation research: Topic modeling. WIREs Climate Change, 10(3). https://doi.org/10.1002/wcc.576