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Predictive analytics for safer smart cities

机译:预测性分析,打造更安全的智慧城市

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摘要

The threat of incendiary and often, catstrophical terrorist attacks is a major challenge for the urban administrators. The urban landscape is changing at a fast pace with the emphasis moving toward “smart cities”. Terrorists, for obvious reasons, prefer attacking cities compared to rural areas. Smart cities are expected to absorb larger populations of inhabitants in smaller area implying the damage inflicted by these attacks would be maximum unless some preventive mechanisms exist in the smart city ecosystem. There exist very few methodologies for attack forecasting due to lack of real-time data (confidentiality and reluctance of law enforement in sharing data). In this paper, we propose a way to predict future attacks, weapons used and likely targets using a class of powerful machine learning algorithms known as ensemble learning. The features used to train the model are location, attack type, weapon type and target type.
机译:对于城市管理者来说,燃烧性威胁和经常性的恐怖袭击是威胁。城市景观正在快速变化,重点转向“智能城市”。出于明显的原因,恐怖分子比农村地区更喜欢袭击城市。智慧城市有望在较小的区域吸收更多的居民,这意味着除非智慧城市生态系统中存在某些预防机制,否则这些袭击所造成的破坏将是最大的。由于缺乏实时数据(机密性和不愿共享数据的法律依据),攻击预测的方法很少。在本文中,我们提出了一种使用称为集合学习的强大的机器学习算法来预测未来的攻击,使用的武器以及可能的目标的方法。用于训练模型的功能包括位置,攻击类型,武器类型和目标类型。

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