Abstract

Cyber security has become a matter of a global interest, and several attacks target industrial companies and governmental organizations. The advanced persistent threats (APTs) have emerged as a new and complex version of multi-stage attacks (MSAs), targeting selected companies and organizations. Current APT detection systems focus on raising the detection alerts rather than predicting APTs. Forecasting the APT stages not only reveals the APT life cycle in its early stages but also helps to understand the attacker’s strategies and aims. This paper proposes a novel intrusion detection system for APT detection and prediction. This system undergoes two main phases; the first one achieves the attack scenario reconstruction. This phase has a correlation framework to link the elementary alerts that belong to the same APT campaign. The correlation is based on matching the attributes of the elementary alerts that are generated over a configurable time window. The second phase of the proposed system is the attack decoding. This phase utilizes the hidden Markov model (HMM) to determine the most likely sequence of APT stages for a given sequence of correlated alerts. Moreover, a prediction algorithm is developed to predict the next step of the APT campaign after computing the probability of each APT stage to be the next step of the attacker. The proposed approach estimates the sequence of APT stages with a prediction accuracy of at least 91.80%. In addition, it predicts the next step of the APT campaign with an accuracy of 66.50%, 92.70%, and 100% based on two, three, and four correlated alerts, respectively.

Highlights

  • Cyber attacks have become more widespread and several attacks have made headline news over the past decade, targeting industrial companies and governmental organizations [1]

  • This paper proposes a novel intrusion detection system for advanced persistent threats (APTs) detection and prediction

  • We proposed a probabilistic Intrusion Detection Systems (IDSs) for APT detection and prediction

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Summary

INTRODUCTION

Cyber attacks have become more widespread and several attacks have made headline news over the past decade, targeting industrial companies and governmental organizations [1]. This second phase, called the attack decoding, utilizes the HMM to determine the most likely sequence of APT stages for a given sequence of correlated alerts. This phase predicts the step of the APT campaign based on the current and past observations and the transition probabilities of the HMM model. The contribution of this work is summarized as follows: Relevant HMM has been developed for APT prediction This module employs the Viterbi algorithm to determine the most likely sequence of APT stages for the sequence of correlated alerts linked by the correlation framework in the first phase of the proposed IDS.

RELATED WORK
PROPOSED SYSTEM
6: Iterate the previous step until convergence
16: Output
EVALUATION RESULTS
9: Output
CONCLUSION
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