基于注意力的CNN和BiLSTM混合模型学习未来恐怖分子目标

Namitha Nayak, Manasa Rayachoti, Ananya Gupta, G. Prerna, Sreenath M V, D. Annapurna
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引用次数: 2

摘要

恐怖主义是复杂的,具有广泛的信仰体系、理由、表演者和目标,它不仅对集会和组织构成威胁,而且对全人类构成威胁。通过这种方式,集中于被指定为高度威胁的人员或地区可以支持改进预防措施和分配资产以保护这些目标。利用2009年至2019年在南亚发生的袭击事件的真实信息,我们提出利用深度学习来绘制恐怖袭击之间的关联,捕捉它们的功能相似性和条件。它将被用来确定下一个被选中的风险最大的目标地区。执行将包括LSTM、Bi-LSTM、CNN、CNN-LSTM模型。该项目强调使用注意层改进CNN-BiLSTM模型,因此称为CNN-BiLSTM注意机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Future Terrorist Targets using Attention Based Hybrid CNN and BiLSTM Model
Terrorism is complex, with a huge scope of belief systems, reasons, entertainers, and objectives, and it represents a danger not exclusively to assemblies and organizations, yet in addition to humankind all in all. In this manner, concentrating on people or regions at high threat of being designated can support the improvement of precaution measures and the distribution of assets to protect these objectives. Utilizing true information on assaults that happened in South Asia from 2009 to 2019, our undertaking proposes the utilization of deep learning to map the associations among terrorist attacks, capturing their functional similarities and conditions. It will be used to determine what target districts that are at the most risk of being picked next. The execution will include LSTM, Bi-LSTM, CNN, CNN-LSTM models. The project emphasises on a CNN-BiLSTM model that is improved using attention layers, hence called the CNN-BiLSTM Attention Mechanism.
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