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Globally, more than 130 million people are estimated to be in food crisis. These humanitarian disasters are associated with severe impacts on livelihoods that can reverse years of development gains. The existing outlooks of crisis-affected populations rely on expert assessment of evidence and are limited in their temporal frequency and ability to look beyond several months. This paper presents a statistical foresting approach to predict the outbreak of food crises with sufficient lead time for preventive action. Different use cases are explored related to possible alternative targeting policies and the levels at which finance is typically unlocked. The results indicate that, particularly at longer forecasting horizons, the statistical predictions compare favorably to expert-based outlooks. The paper concludes that statistical models demonstrate good ability to detect future outbreaks of food crises and that using statistical forecasting approaches may help increase lead time for action.
Climate and Meteorology --- Climate Change Economics --- Cost-Sensitive Learning --- Development Economics and Aid Effectiveness --- Economic Forecasting --- Extreme Event --- Famine --- Food Crisis --- Food Insecurity --- Food Security --- Forecasting --- Humanitarian Crisis --- Statistical and Mathematical Sciences --- Statistical Model --- Targeting --- Unbalanced Data
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Recent advances in food insecurity classification have made analytical approaches to predict and inform response to food crises possible. This paper develops a predictive, statistical framework to identify drivers of food insecurity risk with simulation capabilities for scenario analyses, risk assessment and forecasting purposes. It utilizes a panel vector-autoregression to model food insecurity distributions of 15 Sub-Saharan African countries between October 2009 and February 2019. Statistical variable selection methods are employed to identify the most important agronomic, weather, conflict and economic variables. The paper finds that food insecurity dynamics are asymmetric and past-dependent, with low insecurity states more likely to transition to high insecurity states than vice versa. Conflict variables are more relevant for dynamics in highly critical stages, while agronomic and weather variables are more important for less critical states. Food prices are predictive for all cases. A Bayesian extension is introduced to incorporate expert opinions through the use of priors, which lead to significant improvements in model performance.
Bayesian Extension --- Climate and Meteorology --- Disaster Management --- Economic Forecasting --- Expert Opinion --- Famine Risk --- Food Crisis --- Food Insecurity --- Food Security --- Forecasting --- Natural Disasters --- Panel Vector Autoregression --- Stochastic Simulation --- Variable Selection --- Weather Forecasting --- World Food Programme
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