Integrating data-driven forecasting and large-scale optimization to improve humanitarian response planning and preparedness
This dissertation investigates the advantages of optimization and machine learning algorithms to characterize, predict, and solve Response Planning and Preparedness problems in large-scale humanitarian organizations. Organizations often base their operational decisions on the staff's experienti...
Published: |
|
---|---|
Online Access: | http://hdl.handle.net/2047/D20328704 |
Similar Items
-
Forecast-based Humanitarian Action and Conflict : Promises and pitfalls of planning for anticipatory humanitarian response to armed conflict
by: Hostetter, Loic
Published: (2019) -
SARS Preparedness and Response Planning
by: Umesh D. Parashar, et al.
Published: (2004-02-01) -
Improving epidemic malaria planning, preparedness and response in Southern Africa
by: Mason Simon J, et al.
Published: (2004-10-01) -
Improving Community Resilience and Emergency Plans by Mapping Risk and Preparedness at the Neighborhood Scale
by: Yaron Finzi, et al.
Published: (2021-06-01) -
Discourses of flood disaster preparedness by NGOs: humanitarian aid, teamwork and victimization
by: Selvaraj S., et al.
Published: (2019)