Assignment 2 Machine Learning Modelling

134 views 7:07 am 0 Comments July 5, 2023

Early Incident IdentificationHuman Computer Interaction

Disc Consulting Enterprises (DCE) has identified some potentially suspicious attacks on their network and computer systems. The attacks are thought to be a new type of attack from a skilled threat actor. To date, the attacks have only been identified ‘after the fact’ by examining post-exploitation activities of the attacker on compromised systems.

Unfortunately, the attackers are skilled enough to evade detection and the exact mechanisms of their exploits have not been identified.

The incident response team, including IT services, security operations, security architecture, risk management, the CISO (Chief Information Security Officer), and the CTO (Chief Technology Officer) have been meeting regularly to determine next steps.

It has been suggested that the security architecture and operations teams could try to implement some real-time threat detection using machine learning models that build on earlier consultancy your firm has completed (i.e., building upon your Assessment 1 work).

Data description

The data have already been provided (in Assessment 1), and the ML team (you) have undertaken some initial cleaning and analysis.

Things to keep in mind:

  • Each event record is a snapshot triggered by an individual network ‘packet’. The exact triggering conditions for the snapshot are unknown. But it is known that multiple packets are exchanged in a ‘TCP conversation’ between the source and the target before an event is triggered and a record created. It is also known that each event record is anomalous in some way (the SIEM logs many events that may be suspicious).
  • The malicious events account for a very small amount of data. As such, your training needs to consider the “imbalanced” data and the effect these data may have on accuracy (both specificity and sensitivity).
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