事件分类、地点预测及伤亡

Tanmay Deshpande, Sarun Varghese, Pratik Dynaneshwar Kale, M. Atre
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引用次数: 1

摘要

印度军队一直被武装分子和不同恐怖组织的持续袭击所困扰。这样的遭遇总是让我们付出生命的代价,这些士兵以无比无私的态度为我们工作,他们在印度的不同地区多次遭到屠杀。这些被洗脑的暴徒利用了制度的漏洞,因为基层官员没有现场决策权。他们使用枪支、手榴弹、简易爆炸装置(IED)作为武器。投掷石块、破坏财产、火灾、暴民私刑等事件为动荡的社会奠定了基调。不幸的是,为了应对这些被洗脑的人的愤怒,士兵们是第一道防线,并被置于导致流血的激烈局面中。为了避免这种情况,作者实施了一个使用人工智能的模型,来预测下一个可能的“反国家”事件的位置和该事件中的伤亡人数。利用时间序列分析、自回归综合移动平均模型和随机森林回归的原理,预测了下一次可能发生的事故的位置和伤亡人数。使用靓汤库数据库是通过从网页上抓取新闻创建的。逻辑回归,用于分类是否以下新闻是“反国家”或不是。开发的算法被有效地用于发现i)这些攻击的模式,ii)引发此类事件的因素,并帮助采取预防措施或完全避免它们。该模型实现可以跟踪活动并协助印度军队。
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Incident Classification, Prediction of Location and Casualties
Indian Army is always being troubled by the constant attacks of the militants and different terrorist organizations. Such encounters always cost us the lives of the soldiers who work for us with an immeasurable selfless attitude, many a times getting slaughtered in different regions of India. Such brainwashed mobs exploit the loopholes of the system, where the ground level officials don't have on-the-spot decision making authority. They use guns, hand grenades, Improvised Explosive Devices (IED) as weapons. Incidents of stone pelting, damage to property, fire incident, mob lynching, etc set the tone for an unrest society. Unfortunately to deal with the rage of such brainwashed minds, soldiers are the first line of defense and are put into a heated situation which leads to bloodshed. To avoid this, authors implemented a model which uses Artificial Intelligence, to predict the location of the next probable ‘Anti-National’ incident and the number of casualties in that incident. By using the principles of Timeseries Analysis, Auto Regressive Integrated Moving Average model in combination with Random Forest Regressor, authors predict the location of the next probable incident and the number of casualties in it. Using Beautiful Soup Library database is created by scraping the news from webpages. A Logistic Regression, is used to classify whether the following news is ‘Anti-National’ or not. The developed algorithm is used effectively to find i) the patterns in these attacks, ii) the factors which spark such incidents and help to take precautionary actions or completely avoid them. This model implementation can track down the activities and assist the Indian Army.
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