A rule-based predictive model for estimating human impact data in natural onset disasters—the case of a pred model

Date

2023-05-26

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MDPI

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Article

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2305-6290

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Rye S, Aktas E. (2023) A rule-based predictive model for estimating human impact data in natural onset disasters—the case of a pred model. Logistics, Volume 7, Issue 2, May 2023, Article number 31

Abstract

Background: This paper proposes a framework to cope with the lack of data at the time of a disaster by employing predictive models. The framework can be used for disaster human impact assessment based on the socio-economic characteristics of the affected countries. Methods: A panel data of 4252 natural onset disasters between 1980 to 2020 is processed through concept drift phenomenon and rule-based classifiers, namely the Moving Average (MA). Results: Predictive model for Estimating Data (PRED) is developed as a decision-making platform based on the Disaster Severity Analysis (DSA) Technique. Conclusions: comparison with the real data shows that the platform can predict the human impact of a disaster (fatality, injured, homeless) with up to 3% error; thus, it is able to inform the selection of disaster relief partners for various disaster scenarios.

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Github

Keywords

decision methods, disaster response network, disaster impact prediction, disaster severity, humanitarian aid network

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Attribution 4.0 International

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