The potential of machine learning for weather index insurance

<p>Weather index insurance is an innovative tool in risk transfer for disasters induced by natural hazards. This paper proposes a methodology that uses machine learning algorithms for the identification of extreme flood and drought events aimed at reducing the basis risk connected to this kind...

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Main Authors: L. Cesarini, R. Figueiredo, B. Monteleone, M. L. V. Martina
Format: Article
Language:English
Published: Copernicus Publications 2021-08-01
Series:Natural Hazards and Earth System Sciences
Online Access:https://nhess.copernicus.org/articles/21/2379/2021/nhess-21-2379-2021.pdf
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spelling doaj-68b53975bec749f09bfe52fb0f031fea2021-08-11T09:07:12ZengCopernicus PublicationsNatural Hazards and Earth System Sciences1561-86331684-99812021-08-01212379240510.5194/nhess-21-2379-2021The potential of machine learning for weather index insuranceL. Cesarini0R. Figueiredo1B. Monteleone2M. L. V. Martina3Department of Science, Technology and Society, Scuola Universitaria Superiore IUSS Pavia, Pavia, 27100, ItalyCONSTRUCT-LESE, Faculty of Engineering, University of Porto, 4200-465 Porto, PortugalDepartment of Science, Technology and Society, Scuola Universitaria Superiore IUSS Pavia, Pavia, 27100, ItalyDepartment of Science, Technology and Society, Scuola Universitaria Superiore IUSS Pavia, Pavia, 27100, Italy<p>Weather index insurance is an innovative tool in risk transfer for disasters induced by natural hazards. This paper proposes a methodology that uses machine learning algorithms for the identification of extreme flood and drought events aimed at reducing the basis risk connected to this kind of insurance mechanism. The model types selected for this study were the neural network and the support vector machine, vastly adopted for classification problems, which were built exploring thousands of possible configurations based on the combination of different model parameters. The models were developed and tested in the Dominican Republic context, based on data from multiple sources covering a time period between 2000 and 2019. Using rainfall and soil moisture data, the machine learning algorithms provided a strong improvement when compared to logistic regression models, used as a baseline for both hazards. Furthermore, increasing the amount of information provided during the training of the models proved to be beneficial to the performances, increasing their classification accuracy and confirming the ability of these algorithms to exploit big data and their potential for application within index insurance products.</p>https://nhess.copernicus.org/articles/21/2379/2021/nhess-21-2379-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author L. Cesarini
R. Figueiredo
B. Monteleone
M. L. V. Martina
spellingShingle L. Cesarini
R. Figueiredo
B. Monteleone
M. L. V. Martina
The potential of machine learning for weather index insurance
Natural Hazards and Earth System Sciences
author_facet L. Cesarini
R. Figueiredo
B. Monteleone
M. L. V. Martina
author_sort L. Cesarini
title The potential of machine learning for weather index insurance
title_short The potential of machine learning for weather index insurance
title_full The potential of machine learning for weather index insurance
title_fullStr The potential of machine learning for weather index insurance
title_full_unstemmed The potential of machine learning for weather index insurance
title_sort potential of machine learning for weather index insurance
publisher Copernicus Publications
series Natural Hazards and Earth System Sciences
issn 1561-8633
1684-9981
publishDate 2021-08-01
description <p>Weather index insurance is an innovative tool in risk transfer for disasters induced by natural hazards. This paper proposes a methodology that uses machine learning algorithms for the identification of extreme flood and drought events aimed at reducing the basis risk connected to this kind of insurance mechanism. The model types selected for this study were the neural network and the support vector machine, vastly adopted for classification problems, which were built exploring thousands of possible configurations based on the combination of different model parameters. The models were developed and tested in the Dominican Republic context, based on data from multiple sources covering a time period between 2000 and 2019. Using rainfall and soil moisture data, the machine learning algorithms provided a strong improvement when compared to logistic regression models, used as a baseline for both hazards. Furthermore, increasing the amount of information provided during the training of the models proved to be beneficial to the performances, increasing their classification accuracy and confirming the ability of these algorithms to exploit big data and their potential for application within index insurance products.</p>
url https://nhess.copernicus.org/articles/21/2379/2021/nhess-21-2379-2021.pdf
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