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A Machine Learning Approach for Enhancing Defence Against Global Terrorism

机译:一种增强对全球恐怖主义的防御的机器学习方法

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The objective of this work is to predict the region and country of a terrorist attack using machine learning approaches. The work has been carried out upon the Global Terrorism Database (GTD), which is an open database containing list of terrorist activities from 1970 to 2017. Six machine learning algorithms have been applied on a selected set of features from the dataset to achieve an accuracy of up to 82%. The results suggest that it is possible to train machine learning models in order to predict the region and country of terrorist attack if certain parameters are known. It is postulated that the work can be used for enhancing security against terrorist attacks in the world.
机译:这项工作的目的是使用机器学习方法预测恐怖袭击的地区和国家。该工作是在全球恐怖主义数据库(GTD)上进行的,该数据库是一个开放数据库,其中包含1970年至2017年的恐怖活动清单。六种机器学习算法已应用于数据集中的一组选定特征,以实现准确性高达82%。结果表明,如果知道某些参数,则可以训练机器学习模型以预测恐怖袭击的地区和国家。据推测,这项工作可用于增强安全性,以抵抗世界范围内的恐怖袭击。

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