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ThreatPredict: From Global Social and Technical Big Data to Cyber Threat Forecast

机译:威胁预报:从全球社会和技术大数据到网络威胁预测

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Predicting the next threats that may occurs in the Internet is a multi-faceted problem as the predictions must be enough precise and given as most as possible in advance to be exploited efficiently, for example to setup defensive measures. The ThreatPredict project aims at building predictive models by integrating exogenous sources of data using machine learning algorithms. This paper reports the most notable results using technical data from security sensors or contextual information about darkweb cyber-criminal markets and data breaches.
机译:预测Internet中可能发生的下一个威胁是多关节问题,因为预测必须足够的精确并且预先给予最多,以便有效地利用,例如设置防御度量。 植物预备项目旨在通过使用机器学习算法集成外源数据来构建预测模型。 本文通过安全传感器的技术数据或有关Darkweb网络刑事市场和数据泄露的上下文信息,报告最值得注意的结果。

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