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Rainfall variability and violent, state-based conflict: A machine learning approach to estimate context specificity (MA)
Rainfall variability and violent, state-based conflict: A machine learning approach to estimate context specificity (MA)
Led by
Mathilde Bålsrud Mjelva
Sep 2019 - Aug 2020
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Jonas Vestby
Research Groups
Urbanization and Environment
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Master Thesis
Mjelva, Mathilde Bålsrud (2020)
Rainfall Variability and Violent, State-Based Conflict: A Machine Learning Approach to Estimate Context Specificity
. MA thesis, Department of Political Science, University of Oslo, Oslo.
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Mathilde Bålsrud Mjelva Successfully Defends Master's Thesis
- 07 Aug 2020
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Related pages
Related people:
Jonas Vestby
Related Research Groups:
Urbanization and Environment
Related news:
Mathilde Bålsrud Mjelva Successfully Defends Master's Thesis
07 Aug 2020
Related publications:
Rainfall Variability and Violent, State-Based Conflict: A Machine Learning Approach to Estimate Context Specificity