Hostname: page-component-89b8bd64d-r6c6k Total loading time: 0 Render date: 2026-05-07T15:20:17.979Z Has data issue: false hasContentIssue false

Lesson (un)replicated: Predicting levels of political violence in Afghan administrative units per month using ARFIMA and ICEWS data

Published online by Cambridge University Press:  04 October 2022

Tamir Libel*
Affiliation:
Department of Leadership and Command & Control, Swedish Defence University, Stockholm, Sweden
*
*Corresponding author. E-mail: tamirlibelphd@gmail.com

Abstract

The aim of the present article is to evaluate the use of the Autoregressive Fractionally Integrated Moving Average (ARFIMA) model in predicting spatially and temporally localized political violent events using the Integrated Crisis Early Warning System (ICEWS). The performance of the ARFIMA model is compared to that of a naïve model in reference to two common relevant hypotheses: the ARFIMA model would outperform a naïve model and the rate of outperformance would deteriorate the higher the level of spatial aggregation. This analytical strategy is used to predict political violent events in Afghanistan. The analysis consists of three parts. The first is a replication of Yonamine’s study for the period beginning in April 2010 and ending in March 2012. The second part compares the results to those of Yonamine. The comparison was used to assess the validity of the conclusions drawn in the original study, which was based on the Global Database of Events, Language, and Tone, for the implementation of this approach to ICEWS data. Building on the conclusions of this comparison, the third part uses Yonamine’s approach to predict violent events in Afghanistan over a significantly longer period of time (January 1995–August 2021). The conclusions provide an assessment of the utility of short-term localized forecasting.

Information

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Open Practices
Open materials
Copyright
© The Author(s), 2022. Published by Cambridge University Press
Figure 0

Figure 1. Number of violent events per year, 1995–August 2021. Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 1

Figure 2. Events per month in Afghanistan in 2001. Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 2

Figure 3. Annual number of material conflict events in districts, 1995–2020.17 Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 3

Figure 4. Annual number of material conflict events in provinces, 1995–2020.18 Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 4

Figure 5. Assessing accuracy at the district level.23 Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 5

Table 1. A comparison of the MAE results of Yonamine (2013) and the current study

Figure 6

Figure 6. Assessing accuracy at the province level.24 Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 7

Figure 7. Assessing accuracy at the country level.26 Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 8

Figure 8. Comparison of observed, ARFIMA predictions, and naïve predictions at the country level. Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 9

Table 2. A comparison of the reduction in MAE size

Figure 10

Table 3. A comparison of predictions at the country level

Figure 11

Table 4. A comparison of predictions at the district level

Figure 12

Table 5. A comparison of predictions with a cutting point at ½ full timeframe

Figure 13

Figure 9. A comparison of observed, ARFIMA predictions, and naïve predictions for the Kabul City district. Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 14

Figure 10. A comparison of accuracy assessments between Yonamine (2013) and the current study at the district level. Legend: original, Yonamine (2013); current, current study; AE, ARFIMA error; NE, naïve error. Data source: Yonamine (2013) and Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 15

Figure 11. A comparison of accuracy assessments between Yonamine (2013) and the current study at the province level. Legend: original, Yonamine (2013); current, current study; AE, ARFIMA error; NE, naïve error. Data source: Yonamine (2013) and Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 16

Figure 12. A comparison of accuracy assessments between Yonamine (2013) and the current study at the country level. Legend: original, Yonamine (2013); current, current study; AE, ARFIMA error; NE, Naïve error. Data source: Yonamine (2013) and Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 17

Figure 13. An accuracy assessment with a cutting point at ½ of the full timeframe—district level. Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 18

Figure 14. Accuracy assessment with cutting point ½ of the full timeframe—province level. Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Figure 19

Figure 15. Accuracy assessment with cutting point ½ of the full timeframe—country level. Data source: Lockheed Martin Advanced Technology Laboratories (ATL) (2021).

Submit a response

Comments

No Comments have been published for this article.