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Interrelated Climate Change Adaptation Measures and Factors
Creator
S. Gil-Clavel (Delft University of Technology)
T. Filatova (Delft University of Technology)
Study number / PID
doi:10.17026/SS/PYZCXK (DOI)
Data access
Information not available
Series
Not available
Abstract
Climate is changing. While worldwide societies experience climate-induced hazards, progress in climate change adaptation – both public and private – remains slow. Understanding who, when, and how pursues Climate Change Adaptation (CCA) is essential. Factors explaining adaptation by different actors (governments, communities, households, farmers, and individuals) may vary across countries and per type of adaptation (incremental vs. transformational). Worldwide rich qualitative research reveals factors influencing these different adaptation decisions. Thousands of articles report valuable insights, and the literature reporting mounting evidence constantly grows. To address this challenge, we use a novel approach to elicit patterns in decision factors for various actors and types of adaptation. Specifically, using natural language processing, thematic coding books, and network analysis, we consolidate empirical evidence fragmented across various textual sources. Here, we provide two exemplar datasets derived using this approach. Both databases provide systematic overviews of various adaptation factors associated (positively, negatively, or neutrally) with particular adaptation measures. The first dataset provides a systematic overview of factors associated with CCA to floods and sea-level rise by actor (see Dataset 1). The second set of data provides a systematic overview of factors associated with transformational vs. incremental adaptation by farmers (Dataset 2).
Both datasets rely on the textual information reported in peer-reviewed articles and derived using our algorithm Gil-Clavel & Filatova (2024). The coding book for adaptation factors per actor group is provided in Gil-Clavel et al. (2024), and the coding book for classifying CCA measures as transformational adaptation is described in Gil-Clavel et al. (2023). We go beyond the traditional automatic analysis of textual data focused on the word count and topic modeling. Instead, we strive to elicit...
Terminology used is generally based on DDI controlled vocabularies: Time Method, Analysis Unit, Sampling Procedure and Mode of Collection, available at CESSDA Vocabulary Service.
Methodology
Data collection period
30/08/2022 - 01/02/2024
Country
Time dimension
Not available
Analysis unit
Not available
Universe
Not available
Sampling procedure
Not available
Kind of data
Data frame
Data collection mode
Not available
Funding information
Funder
Netherlands Organization for Scientific Research NWO VIDI