Learning future terrorist targets through temporal meta-graphs
Abstract In the last 20 years, terrorism has led to hundreds of thousands of deaths and massive economic, political, and humanitarian crises in several regions of the world. Using real-world data on attacks occurred in Afghanistan and Iraq from 2001 to 2018, we propose the use of temporal meta-graph...
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2021-04-01
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Online Access: | https://doi.org/10.1038/s41598-021-87709-7 |
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doaj-990abd3a107c41f394935ac5d9d90f7a2021-04-25T11:33:29ZengNature Publishing GroupScientific Reports2045-23222021-04-0111111510.1038/s41598-021-87709-7Learning future terrorist targets through temporal meta-graphsGian Maria Campedelli0Mihovil Bartulovic1Kathleen M. Carley2Department of Sociology and Social Research, University of TrentoSchool of Computer Science, Carnegie Mellon UniversitySchool of Computer Science, Carnegie Mellon UniversityAbstract In the last 20 years, terrorism has led to hundreds of thousands of deaths and massive economic, political, and humanitarian crises in several regions of the world. Using real-world data on attacks occurred in Afghanistan and Iraq from 2001 to 2018, we propose the use of temporal meta-graphs and deep learning to forecast future terrorist targets. Focusing on three event dimensions, i.e., employed weapons, deployed tactics and chosen targets, meta-graphs map the connections among temporally close attacks, capturing their operational similarities and dependencies. From these temporal meta-graphs, we derive 2-day-based time series that measure the centrality of each feature within each dimension over time. Formulating the problem in the context of the strategic behavior of terrorist actors, these multivariate temporal sequences are then utilized to learn what target types are at the highest risk of being chosen. The paper makes two contributions. First, it demonstrates that engineering the feature space via temporal meta-graphs produces richer knowledge than shallow time-series that only rely on frequency of feature occurrences. Second, the performed experiments reveal that bi-directional LSTM networks achieve superior forecasting performance compared to other algorithms, calling for future research aiming at fully discovering the potential of artificial intelligence to counter terrorist violence.https://doi.org/10.1038/s41598-021-87709-7 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Gian Maria Campedelli Mihovil Bartulovic Kathleen M. Carley |
spellingShingle |
Gian Maria Campedelli Mihovil Bartulovic Kathleen M. Carley Learning future terrorist targets through temporal meta-graphs Scientific Reports |
author_facet |
Gian Maria Campedelli Mihovil Bartulovic Kathleen M. Carley |
author_sort |
Gian Maria Campedelli |
title |
Learning future terrorist targets through temporal meta-graphs |
title_short |
Learning future terrorist targets through temporal meta-graphs |
title_full |
Learning future terrorist targets through temporal meta-graphs |
title_fullStr |
Learning future terrorist targets through temporal meta-graphs |
title_full_unstemmed |
Learning future terrorist targets through temporal meta-graphs |
title_sort |
learning future terrorist targets through temporal meta-graphs |
publisher |
Nature Publishing Group |
series |
Scientific Reports |
issn |
2045-2322 |
publishDate |
2021-04-01 |
description |
Abstract In the last 20 years, terrorism has led to hundreds of thousands of deaths and massive economic, political, and humanitarian crises in several regions of the world. Using real-world data on attacks occurred in Afghanistan and Iraq from 2001 to 2018, we propose the use of temporal meta-graphs and deep learning to forecast future terrorist targets. Focusing on three event dimensions, i.e., employed weapons, deployed tactics and chosen targets, meta-graphs map the connections among temporally close attacks, capturing their operational similarities and dependencies. From these temporal meta-graphs, we derive 2-day-based time series that measure the centrality of each feature within each dimension over time. Formulating the problem in the context of the strategic behavior of terrorist actors, these multivariate temporal sequences are then utilized to learn what target types are at the highest risk of being chosen. The paper makes two contributions. First, it demonstrates that engineering the feature space via temporal meta-graphs produces richer knowledge than shallow time-series that only rely on frequency of feature occurrences. Second, the performed experiments reveal that bi-directional LSTM networks achieve superior forecasting performance compared to other algorithms, calling for future research aiming at fully discovering the potential of artificial intelligence to counter terrorist violence. |
url |
https://doi.org/10.1038/s41598-021-87709-7 |
work_keys_str_mv |
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