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      Discovering Signals from Web Sources to Predict Cyber Attacks

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          Abstract

          Cyber attacks are growing in frequency and severity. Over the past year alone we have witnessed massive data breaches that stole personal information of millions of people and wide-scale ransomware attacks that paralyzed critical infrastructure of several countries. Combating the rising cyber threat calls for a multi-pronged strategy, which includes predicting when these attacks will occur. The intuition driving our approach is this: during the planning and preparation stages, hackers leave digital traces of their activities on both the surface web and dark web in the form of discussions on platforms like hacker forums, social media, blogs and the like. These data provide predictive signals that allow anticipating cyber attacks. In this paper, we describe machine learning techniques based on deep neural networks and autoregressive time series models that leverage external signals from publicly available Web sources to forecast cyber attacks. Performance of our framework across ground truth data over real-world forecasting tasks shows that our methods yield a significant lift or increase of F1 for the top signals on predicted cyber attacks. Our results suggest that, when deployed, our system will be able to provide an effective line of defense against various types of targeted cyber attacks.

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          Non-linear financial time series forecasting - Application to the Bel 20 stock market index

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            Forecasting a Moving Target: Ensemble Models for ILI Case Count Predictions

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              • Abstract: not found
              • Article: not found

              Predicting Cyber Risks through National Vulnerability Database

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                Author and article information

                Journal
                08 June 2018
                Article
                1806.03342
                21aafbeb-9b06-4919-bc02-be73410677d5

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                cs.LG stat.ML

                Machine learning,Artificial intelligence
                Machine learning, Artificial intelligence

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