A Finite State Hidden Markov Model for Predicting Multistage Attacks in Cloud Systems
Title | A Finite State Hidden Markov Model for Predicting Multistage Attacks in Cloud Systems |
Publication Type | Conference Paper |
Year of Publication | 2014 |
Authors | Kholidy, H.A., Erradi, A., Abdelwahed, S., Azab, A. |
Conference Name | Dependable, Autonomic and Secure Computing (DASC), 2014 IEEE 12th International Conference on |
Date Published | Aug |
Keywords | ACIDF, adaptive risk approach, auto response controller, autonomous cloud intrusion detection framework, cloud computing, cloud resources, cloud systems, Correlation, DARPA 2000 dataset, early warning alerts, early warnings, finite state hidden Markov model, finite state hidden Markov prediction model, Hidden Markov models, HMM, intrusion prevention, LLDDoS1.0 attack, multistage attacks, multistaged cloud attack, occurrence probability, Prediction algorithms, prediction of multi-staged attacks, Predictive models, probability, risk analysis, risk assessment, risk model, security, security of data, security risk, security technology, security threat, Sensors, Vectors |
Abstract | Cloud computing significantly increased the security threats because intruders can exploit the large amount of cloud resources for their attacks. However, most of the current security technologies do not provide early warnings about such attacks. This paper presents a Finite State Hidden Markov prediction model that uses an adaptive risk approach to predict multi-staged cloud attacks. The risk model measures the potential impact of a threat on assets given its occurrence probability. The attacks prediction model was integrated with our autonomous cloud intrusion detection framework (ACIDF) to raise early warnings about attacks to the controller so it can take proactive corrective actions before the attacks pose a serious security risk to the system. According to our experiments on DARPA 2000 dataset, the proposed prediction model has successfully fired the early warning alerts 39.6 minutes before the launching of the LLDDoS1.0 attack. This gives the auto response controller ample time to take preventive measures. |
DOI | 10.1109/DASC.2014.12 |
Citation Key | 6945297 |
- risk model
- multistaged cloud attack
- occurrence probability
- Prediction algorithms
- prediction of multi-staged attacks
- Predictive models
- probability
- risk analysis
- risk assessment
- multistage attacks
- security
- security of data
- security risk
- security technology
- security threat
- sensors
- Vectors
- early warning alerts
- adaptive risk approach
- auto response controller
- autonomous cloud intrusion detection framework
- Cloud Computing
- cloud resources
- cloud systems
- Correlation
- DARPA 2000 dataset
- ACIDF
- early warnings
- finite state hidden Markov model
- finite state hidden Markov prediction model
- Hidden Markov models
- HMM
- intrusion prevention
- LLDDoS1.0 attack