Predicting Conflict

This paper studies the performance of alternative prediction models for conflict. The analysis contrasts the performance of conventional approaches based on predicted probabilities generated by binary response regressions and random forests with two unconventional classification algorithms. The unconventional algorithms are calibrated specifically to minimize a prediction loss function penalizing Type 1 and Type 2 errors: (1) an algorithm that selects linear combinations of correlates of conflict to minimize the prediction loss function, and (2) an algorithm that chooses a set of thresholds for the same variables, together with the number of breaches of thresholds that constitute a prediction of conflict, that minimize the prediction loss function. The paper evaluates the predictive power of these approaches in a set of conflict and non-conflict episodes constructed from a large country-year panel of developing countries since 1977, and finds substantial differences in the in-sample and out-of-sample predictive performance of these alternative algorithms. The threshold classifier has the best overall predictive performance, and moreover has advantages in simplicity and transparency that make it well suited for policy-making purposes. The paper explores the implications of these findings for the World Bank's classification of fragile and conflict-affected states.

Saved in:
Bibliographic Details
Main Authors: Celiku, Bledi, Kraay, Aart
Format: Working Paper biblioteca
Language:English
en_US
Published: World Bank, Washington, DC 2017-05
Subjects:CONFLICT, FORECASTING, FRAGILE STATES,
Online Access:http://documents.worldbank.org/curated/en/619721495821941125/Predicting-conflict
https://hdl.handle.net/10986/26847
Tags: Add Tag
No Tags, Be the first to tag this record!
id dig-okr-1098626847
record_format koha
spelling dig-okr-10986268472024-12-18T06:03:26Z Predicting Conflict Celiku, Bledi Kraay, Aart CONFLICT FORECASTING FRAGILE STATES This paper studies the performance of alternative prediction models for conflict. The analysis contrasts the performance of conventional approaches based on predicted probabilities generated by binary response regressions and random forests with two unconventional classification algorithms. The unconventional algorithms are calibrated specifically to minimize a prediction loss function penalizing Type 1 and Type 2 errors: (1) an algorithm that selects linear combinations of correlates of conflict to minimize the prediction loss function, and (2) an algorithm that chooses a set of thresholds for the same variables, together with the number of breaches of thresholds that constitute a prediction of conflict, that minimize the prediction loss function. The paper evaluates the predictive power of these approaches in a set of conflict and non-conflict episodes constructed from a large country-year panel of developing countries since 1977, and finds substantial differences in the in-sample and out-of-sample predictive performance of these alternative algorithms. The threshold classifier has the best overall predictive performance, and moreover has advantages in simplicity and transparency that make it well suited for policy-making purposes. The paper explores the implications of these findings for the World Bank's classification of fragile and conflict-affected states. 2017-06-02T17:25:21Z 2017-06-02T17:25:21Z 2017-05 Working Paper Document de travail Documento de trabajo http://documents.worldbank.org/curated/en/619721495821941125/Predicting-conflict https://hdl.handle.net/10986/26847 English en_US Policy Research Working Paper;No. 8075 CC BY 3.0 IGO http://creativecommons.org/licenses/by/3.0/igo World Bank application/pdf text/plain World Bank, Washington, DC
institution Banco Mundial
collection DSpace
country Estados Unidos
countrycode US
component Bibliográfico
access En linea
databasecode dig-okr
tag biblioteca
region America del Norte
libraryname Biblioteca del Banco Mundial
language English
en_US
topic CONFLICT
FORECASTING
FRAGILE STATES
CONFLICT
FORECASTING
FRAGILE STATES
spellingShingle CONFLICT
FORECASTING
FRAGILE STATES
CONFLICT
FORECASTING
FRAGILE STATES
Celiku, Bledi
Kraay, Aart
Predicting Conflict
description This paper studies the performance of alternative prediction models for conflict. The analysis contrasts the performance of conventional approaches based on predicted probabilities generated by binary response regressions and random forests with two unconventional classification algorithms. The unconventional algorithms are calibrated specifically to minimize a prediction loss function penalizing Type 1 and Type 2 errors: (1) an algorithm that selects linear combinations of correlates of conflict to minimize the prediction loss function, and (2) an algorithm that chooses a set of thresholds for the same variables, together with the number of breaches of thresholds that constitute a prediction of conflict, that minimize the prediction loss function. The paper evaluates the predictive power of these approaches in a set of conflict and non-conflict episodes constructed from a large country-year panel of developing countries since 1977, and finds substantial differences in the in-sample and out-of-sample predictive performance of these alternative algorithms. The threshold classifier has the best overall predictive performance, and moreover has advantages in simplicity and transparency that make it well suited for policy-making purposes. The paper explores the implications of these findings for the World Bank's classification of fragile and conflict-affected states.
format Working Paper
topic_facet CONFLICT
FORECASTING
FRAGILE STATES
author Celiku, Bledi
Kraay, Aart
author_facet Celiku, Bledi
Kraay, Aart
author_sort Celiku, Bledi
title Predicting Conflict
title_short Predicting Conflict
title_full Predicting Conflict
title_fullStr Predicting Conflict
title_full_unstemmed Predicting Conflict
title_sort predicting conflict
publisher World Bank, Washington, DC
publishDate 2017-05
url http://documents.worldbank.org/curated/en/619721495821941125/Predicting-conflict
https://hdl.handle.net/10986/26847
work_keys_str_mv AT celikubledi predictingconflict
AT kraayaart predictingconflict
_version_ 1819034624999817216