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Project type/Form of grant
EU grant
Title [en]
ViEWS: a political Violence Early Warning System
Abstract [en]
The challenges of preventing and mitigating large-scale political violence are daunting, particularly when violence escalates where it is not expected. The ViEWS project started in January 2017 and is developing a pilot early-warning system that is rigorous, data-based and which will be publicly available to researchers and the international community. The project has funding for five years from the European Research Council under their Advanced Grant scheme.

ViEWS will provide early warnings for three forms of political violence:
•Armed conflict between states and rebel groups
•Armed conflict between non-state actors
•Violence against civilians

These warnings will refer to three units of analysis:
•Countries
•Detailed geographical locations
•Actors
Publications (10 of 11) Show all publications
Croicu, M. (2025). Forecasting battles: New machine learning methods for predicting armed conflict. (Doctoral dissertation). Uppsala: Uppsala University
Open this publication in new window or tab >>Forecasting battles: New machine learning methods for predicting armed conflict
2025 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Over the past decade, the field of conflict forecasting has undergone a remarkable metamorphosis, transforming from a series of isolated efforts with low predictive power into large, globe-spanning projects with impressive performance. However, despite this evolution, many challenges still remain. First, while we are good at predicting absolute risks, we are poor at predicting conflict dynamics (onsets, escalations, de-escalations and terminations). Second, we are over-reliant on spatio-temporal features and mechanistic models due to the nature of the event-data we use, thus excluding actor agency. Third, we do not handle either data or model uncertainty. Fourth, we are lagging behind the state-of-the-art in machine-learning. This dissertation attempts to resolve some of these salient difficulties, by contributing to six core elements of current-generation forecasting systems. First, time, by looking at the substantive effects and uncertainties of the temporal distance between data and forecast horizons. Second, space, by looking at the inherent uncertainties of high-resolution geospatial data and proposing a statistical method to address this. Third, feature space, by tackling the extreme feature sparsity in event-data and proposing a novel, deep active learning approach to mine features from existing large conflict-related text corpora. Fourth, substantive knowledge, by combining findings from the previous papers to take a fresh look at the microdynamics of conflict escalation. Fifth, the forecasting process itself, by building models that directly forecast from text, eliminating the intermediate step of manual data curation. Finally, the frontier of event-data, by looking at whether the news-media heavy way we collect violent fatal events can be extended to the collection of non-violent events. Methodologically, the dissertation introduces state-of-the art methods to the field, including the use of large language models, Gaussian processes, active learning and deep time series modelling. The six papers in the dissertation exhibit significant performance improvement, especially in forecasting dynamics.

Place, publisher, year, edition, pages
Uppsala: Uppsala University, 2025. p. 62
Series
Report / Department of Peace and Conflict Research, ISSN 0566-8808 ; 132
Keywords
conflict forecasting, predictive methodology, event data, battle events, spatial forecasting, machine learning, large language models, computational linguistics, civil war, armed conflict
National Category
Political Science (excluding Public Administration Studies and Globalisation Studies) Other Social Sciences not elsewhere specified Peace and Conflict Studies Other Social Sciences not elsewhere specified Computer Sciences Social and Economic Geography
Research subject
Peace and Conflict Research; Computational Linguistics; Political Science; Social and Economic Geography; Machine learning
Identifiers
urn:nbn:se:uu:diva-545176 (URN)978-91-506-3086-2 (ISBN)
Public defence
2025-03-21, Brusewitzsalen, Gamla Torget 6, Uppsala, 13:15 (English)
Opponent
Supervisors
Available from: 2025-01-27 Created: 2024-12-12 Last updated: 2025-02-20
Croicu, M. (2023). Enhancing geospatial precision in conflict data: A stochastic approach to addressing known geographically imprecise observations in conflict event data. In: : . Paper presented at 64th International Studies Association Annual Convention, Montreal, Canada, 15-18 March, 2023. International Studies Association
Open this publication in new window or tab >>Enhancing geospatial precision in conflict data: A stochastic approach to addressing known geographically imprecise observations in conflict event data
2023 (English)Conference paper, Oral presentation with published abstract (Other academic)
Abstract [en]

The proliferation of large-scale, geographically disaggregated data on armed conflicts, protests, and similar events has opened new avenues of research, but has also introduced significant data quality challenges. A notable yet often overlooked issue involves observations with “known geographic imprecision” (KGI), where event locations are unknown and instead arbitrarily assigned by dataset authors. Although this issue is widely recognized and accounts for up to a quarter of observations in datasets like UCDP GED, it is rarely addressed by users. This paper presents a stochastic method derived from the multiple-imputation literature, employing spatio-temporal Gaussian processes and leveraging latent actor-conflict features in the data to enhance location accuracy. Extensive Monte-Carlo simulations demonstrate that this approach substantially enhances the accuracy of these observations and improves predictive performance beyond the state-of-the-art when applied out-of-sample. Additionally, an adapted version of the UCDP GED dataset that employs this new procedure is provided, showcasing the practical application and benefits of the methodology.

Place, publisher, year, edition, pages
International Studies Association, 2023
National Category
Social and Economic Geography Other Social Sciences not elsewhere specified Peace and Conflict Studies Other Social Sciences not elsewhere specified
Identifiers
urn:nbn:se:uu:diva-544709 (URN)
Conference
64th International Studies Association Annual Convention, Montreal, Canada, 15-18 March, 2023
Available from: 2024-12-07 Created: 2024-12-07 Last updated: 2025-02-20
Hegre, H., Akbari, F., Croicu, M., Dale, J., Gåsste, T., Jansen, R., . . . Vesco, P. (2022). Forecasting fatalities.
Open this publication in new window or tab >>Forecasting fatalities
Show others...
2022 (English)Report (Other academic)
Publisher
p. 54
Keywords
Africa, Middle East, Conflict, War, Political Violence, Forecast, ViEWS, Afrika, Mellanöstern, konflikt, krig, politiskt våld, prediktioner, förutspå, ViEWS
National Category
Social Sciences
Research subject
Peace and Conflict Research
Identifiers
urn:nbn:se:uu:diva-476476 (URN)
Available from: 2022-06-09 Created: 2022-06-09 Last updated: 2022-06-16Bibliographically approved
Hegre, H., Lindqvist-McGowan, A., Dale, J., Croicu, M., Randahl, D. & Vesco, P. (2022). Forecasting fatalities in armed conflict: Forecasts for April 2022-March 2025.
Open this publication in new window or tab >>Forecasting fatalities in armed conflict: Forecasts for April 2022-March 2025
Show others...
2022 (English)Report (Other (popular science, discussion, etc.))
Keywords
Africa, Middle East, Conflict, Forecast, ViEWS
National Category
Peace and Conflict Studies Other Social Sciences not elsewhere specified
Research subject
Peace and Conflict Research
Identifiers
urn:nbn:se:uu:diva-476228 (URN)
Funder
EU, European Research Council, AdG 694640Uppsala UniversitySwedish National Infrastructure for Computing (SNIC)
Available from: 2022-06-08 Created: 2022-06-08 Last updated: 2025-02-20Bibliographically approved
Blocher, J., Destrijcker, L., Fischer, B., Gleixner, S., Gornott, C., Hegre, H., . . . Zvolsky, A. (2022). Moving from Reaction to Action - Anticipating Vulnerability Hotspots in the Sahel: A synthesis report from the Sahel Predictive Analytics project in support of the United Nations Integrated Strategy for the Sahel (UNISS). United Nations Office of the Special Coordinator for Development in the Sahel (OSCDS); United Nations High Commissioner for Refugees (UNHCR)
Open this publication in new window or tab >>Moving from Reaction to Action - Anticipating Vulnerability Hotspots in the Sahel: A synthesis report from the Sahel Predictive Analytics project in support of the United Nations Integrated Strategy for the Sahel (UNISS)
Show others...
2022 (English)Report (Other academic)
Place, publisher, year, edition, pages
United Nations Office of the Special Coordinator for Development in the Sahel (OSCDS); United Nations High Commissioner for Refugees (UNHCR), 2022
Keywords
Sahel, Conflict, Forecast, Climate change, Predictive Analytics, Strategic foresight
National Category
Other Social Sciences not elsewhere specified
Identifiers
urn:nbn:se:uu:diva-488475 (URN)
Projects
Sahel Predictive Analytics project
Available from: 2022-11-16 Created: 2022-11-16 Last updated: 2022-11-21Bibliographically approved
Hegre, H., Nygård, H. M. & Landsverk, P. (2021). Can We Predict Armed Conflict?: How the First 9 Years of Published Forecasts Stand Up to Reality. International Studies Quarterly, 65(3), 660-668
Open this publication in new window or tab >>Can We Predict Armed Conflict?: How the First 9 Years of Published Forecasts Stand Up to Reality
2021 (English)In: International Studies Quarterly, ISSN 0020-8833, E-ISSN 1468-2478, Vol. 65, no 3, p. 660-668Article in journal (Refereed) Published
Abstract [en]

Can we predict civil war? This article sheds light on this question by evaluating 9 years of, at the time, future predictions made by Hegre et al. (2013) in 2011. We evaluate the ability of this study to predict observed conflicts in the 2010–2018 period, using multiple metrics. We also evaluate the original performance evaluation, i.e., whether the performance measures presented by Hegre et al. hold in this new 9-year window. Overall, we conclude that Hegre et al. were able to produce meaningful and reasonably accurate predictions of armed conflict. Of course, they did not always hit the mark. We find that the model has performed worse in predicting low level incidence of conflict than in predicting major armed conflict. The model also failed to predict some important broader regional shifts. These, however, represent important insights for future research and illustrate the utility in predictive models for both testing and developing theory.

Place, publisher, year, edition, pages
Oxford University PressOxford University Press (OUP), 2021
National Category
Political Science
Research subject
Peace and Conflict Research
Identifiers
urn:nbn:se:uu:diva-465013 (URN)10.1093/isq/sqaa094 (DOI)000756262300009 ()
Funder
The Research Council of Norway, 275400EU, European Research Council, 694640
Available from: 2022-01-17 Created: 2022-01-17 Last updated: 2024-01-15Bibliographically approved
Vesco, P., Kovacic, M., Mistry, M. & Croicu, M. (2021). Climate variability, crop and conflict: Exploring the impacts of spatial concentration in agricultural production. Journal of Peace Research, 58(1), 98-113
Open this publication in new window or tab >>Climate variability, crop and conflict: Exploring the impacts of spatial concentration in agricultural production
2021 (English)In: Journal of Peace Research, ISSN 0022-3433, E-ISSN 1460-3578, Vol. 58, no 1, p. 98-113Article in journal (Refereed) Published
Abstract [en]

Although substantive agreement exists on the role of climate variability and food scarcity in increasing violence, a limited number of studies have investigated how food resources affect violent conflict. This article explores the complex linkages between climate variability, agricultural production and conflict onset, by focusing on the spatial distribution of crop production in a cross-country setting. We hypothesize that spatial differences in crop production within countries are a relevant factor in shaping the impact of climate variability on conflict in agriculturally -dependent countries. To test this hypothesis, we rely on high-resolution global gridded data on the local yield of four main crops for the period 1982–2015 and aggregate the grid-cell information on crop production to compute an empirical indicator of the spatial concentration of agricultural production within countries. Our results show that the negative impacts of climate variability lead to an increase in the spatial concentration of agricultural production within countries. In turn, the combined effect of climate extremes and crop production concentration increases the predicted probability of conflict onset by up to 14% in agriculturally dependent countries.

Place, publisher, year, edition, pages
Sage Publications, 2021
Keywords
agriculture, food, climate variability, conflict
National Category
Political Science Climate Science
Identifiers
urn:nbn:se:uu:diva-430701 (URN)10.1177/0022343320971020 (DOI)000614542200007 ()
Projects
CLIMSECENERGYA
Available from: 2021-01-13 Created: 2021-01-13 Last updated: 2025-02-01Bibliographically approved
Vesco, P. & Buhaug, H. (2020). Climate and Conflict. In: Hampson, Fen Osler; Azerdem, Alpaslan & Kent, Jonathan (Ed.), Routledge handbook of peace, security and development: (pp. 105-120). Abingdon; New York: Routledge
Open this publication in new window or tab >>Climate and Conflict
2020 (English)In: Routledge handbook of peace, security and development / [ed] Hampson, Fen Osler; Azerdem, Alpaslan & Kent, Jonathan, Abingdon; New York: Routledge , 2020, p. 105-120Chapter in book (Refereed)
Place, publisher, year, edition, pages
Abingdon; New York: Routledge, 2020
Keywords
Climate, Conflict
National Category
Climate Science Political Science (excluding Public Administration Studies and Globalisation Studies)
Identifiers
urn:nbn:se:uu:diva-431286 (URN)978-1-351-17220-2 (ISBN)978-0-8153-9785-4 (ISBN)
Funder
EU, European Research Council, 648291
Available from: 2021-01-13 Created: 2021-01-13 Last updated: 2025-02-01Bibliographically approved
Hegre, H., Croicu, M., Eck, K. & Högbladh, S. (2020). Introducing the UCDP Candidate Events Dataset. Research & Politics, 7(3), 1-8
Open this publication in new window or tab >>Introducing the UCDP Candidate Events Dataset
2020 (English)In: Research & Politics, E-ISSN 2053-1680, Vol. 7, no 3, p. 1-8Article in journal (Refereed) Published
Abstract [en]

This article presents a new, monthly updated dataset on organized violence—the Uppsala Conflict Data Program Candidate Events Dataset. It contains recent observations of candidate events, a majority of which are eventually included in the Uppsala Conflict Data Program Georeferenced Event Dataset as part of its annual update after a careful vetting process. We describe the definitions, sources and procedures employed to code the candidate events, and a set of issues that emerge when coding data on organized violence in near-real time. Together, the Uppsala Conflict Data Program Candidate and Georeferenced Event Datasets minimize an inherent trade-off between update speed and quality control. Having monthly updated conflict data is advantageous for users needing near-real time monitoring of violent situations and aiming to anticipate future developments. To demonstrate this, we show that including them in a conflict forecasting system yields distinct improvements in terms of predictive performance: Average precision increases by 20–40% relative to using the Uppsala Conflict Data Program Georeferenced Event Dataset only. We also show that to ensure quality and consistency, revisiting the initial coding making use of sources that become available later is absolutely necessary.

Keywords
Armed conflict, event data, Africa, forecasting
National Category
Political Science (excluding Public Administration Studies and Globalisation Studies)
Research subject
Peace and Conflict Research; Peace and Conflict Research
Identifiers
urn:nbn:se:uu:diva-420461 (URN)10.1177/2053168020935257 (DOI)000575049900001 ()
Funder
EU, European Research Council, H2020-ERC-2015-AdG 694640Swedish National Infrastructure for Computing (SNIC)
Available from: 2020-09-26 Created: 2020-09-26 Last updated: 2024-12-12Bibliographically approved
Hegre, H., Hultman, L. & Nygård, H. M. (2019). Evaluating the conflict-reducing effect of UN peacekeeping operations. Journal of Politics, 81(1), 215-232
Open this publication in new window or tab >>Evaluating the conflict-reducing effect of UN peacekeeping operations
2019 (English)In: Journal of Politics, ISSN 0022-3816, E-ISSN 1468-2508, Vol. 81, no 1, p. 215-232Article in journal (Refereed) Published
Abstract [en]

Several studies show a beneficial effect of peacekeeping operations (PKOs). However, by looking at individual effect pathways (intensity, duration, recurrence, diffusion) in isolation, they underestimate the peacekeeping impact of PKOs. We propose a novel method of evaluating the combined impact across all pathways based on a statistical model of the efficacy of UN PKOs in preventing the onset, escalation, continuation, and recurrence of internal armed conflict. We run a set of simulations based on the statistical estimates to assess the impact of alternative UN policies for the 2001-13 period. If the UN had invested US$200 billion in PKOs with strong mandates, major armed conflict would have been reduced by up to two-thirds relative to a scenario without PKOs and 150,000 lives would have been saved over the 13-year period compared to a no-PKO scenario. UN peacekeeping is clearly a cost-effective way of increasing global security.

National Category
Peace and Conflict Studies Other Social Sciences not elsewhere specified
Identifiers
urn:nbn:se:uu:diva-354690 (URN)10.1086/700203 (DOI)000455040500020 ()
Funder
EU, Horizon 2020, 694640Knut and Alice Wallenberg Foundation, 2014.0162
Available from: 2018-06-21 Created: 2018-06-21 Last updated: 2025-02-20Bibliographically approved
Principal InvestigatorHegre, Håvard
InvestigatorNilsson, Desirée
InvestigatorFjelde, Hanne
InvestigatorHultman, Lisa
InvestigatorRød, Espen Geelmuyden
Coordinating organisation
Uppsala University, Disciplinary Domain of Humanities and Social Sciences, Faculty of Social Sciences, Department of Peace and Conflict Research
Period
2017-01-01 - 2021-12-31
National Category
Political Science
Identifiers
DiVA, id: project:1Project, id: 694640_EU

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