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Machine Learning and Statistical Analysis Techniques on Terrorism

机译:恐怖主义机器学习与统计分析技术

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Terrorism is a major issue facing the world today. It has negative impact on the economy of the nation suffering terrorist attacks from which it takes years to recover. Many developing countries are facing threats from terrorist groups and organizations. This paper examines various terrorist factors using data mining from the historical data to predict the terrorist groups most likely to attack a nation. In this paper we focus on sampled data primarily from India for the past two decades and also consider International database. To create meaningful insights, data mining, machine learning techniques and algorithms such as Decision Tree, Naive Bayes, Support Vector Machine, Ensemble methods, Random Forest Classification are implemented to analyze comparative based classification results. Patterns and predictions are represented in the form of visualizations with the help of Python and Jupyter Notebook. This analysis will help to take appropriate preventive measures to stop Terrorism attacks and to increase investments, to grow the economy and tourism.
机译:恐怖主义是当今世界面临的主要问题。它对国家遭受恐怖袭击的经济产生了负面影响,从中需要多年的恢复。许多发展中国家正面临来自恐怖主义团体和组织的威胁。本文研究了使用历史数据挖掘的各种恐怖主义因素来预测最有可能攻击国家的恐怖主义群体。在本文中,我们专注于过去二十年来主要来自印度的采样数据,并考虑国际数据库。为创建有意义的见解,数据挖掘,机器学习技术和算法,如决策树,天真贝叶斯,支持向量机,集合方法,随机林分类,以分析基于比较的分类结果。在Python和Jupyter笔记本的帮助下,模式和预测以可视化形式表示。这种分析将有助于采取适当的预防措施来阻止恐怖主义攻击并增加投资,以发展经济和旅游业。

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