№1, 2017

CONCEPTUAL MODEL FOR THE INTELLIGENT NETWORK SECURITY MONITORING
Yadigar N. İmamverdiyev, Babek R. Nabiyev

This paper offers a fundamentally new and more effective conceptual model for the intelligent network security monitoring. It reviews the general intellectual architecture of the monitoring process, its functional blocks, processing and application trends. In addition, it explores the gaps and weak points of the monitoring system. To tackle the mentioned problems, the proposed model combines functional capabilities, such as the monitoring of problem-oriented information, initial processing of the gathered data, data indexation, data structuring, storing and managing collected data, selecting the data at the request of decision makers and generating readable and analyzable reports (pp.70-77).

Keywords:network security, monitoring, artificial intelligence, network traffic, conceptual model.
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