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Dynamic Control of Random Constant Spreading Worm using Depth Distribution Characteristics
Ever since the network-based malicious code commonly known as a 'worm' surfaced in the early part of the 1980's, its prevalence has grown more and more. The RCS (Random Constant Spreading) worm has become a dominant, malicious virus in recent computer networking circles. The worm reta...
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Published in: | Journal of information processing systems 2009, 5(1), 11, pp.33-40 |
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Main Authors: | , , , , |
Format: | Article |
Language: | English |
Subjects: | |
Online Access: | Get full text |
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Summary: | Ever since the network-based malicious code commonly known as a 'worm' surfaced in the
early part of the 1980's, its prevalence has grown more and more. The RCS (Random Constant
Spreading) worm has become a dominant, malicious virus in recent computer networking circles. The
worm retards the availability of an overall network by exhausting resources such as CPU capacity,
network peripherals and transfer bandwidth, causing damage to an uninfected system as well as an
infected system. The generation and spreading cycle of these worms progress rapidly. The existing
studies to counter malicious code have studied the Microscopic Model for detecting worm generation
based on some specific pattern or sign of attack, thus preventing its spread by countering the worm
directly on detection. However, due to zero-day threat actualization, rapid spreading of the RCS worm
and reduction of survival time, securing a security model to ensure the survivability of the network
became an urgent problem that the existing solution-oriented security measures did not address.
This paper analyzes the recently studied efficient dynamic network. Essentially, this paper suggests a
model that dynamically controls the RCS worm using the characteristics of Power-Law and depth
distribution of the delivery node, which is commonly seen in preferential growth networks. Moreover,
we suggest a model that dynamically controls the spread of the worm using information about the
depth distribution of delivery. We also verified via simulation that the load for each node was
minimized at an optimal depth to effectively restrain the spread of the worm. KCI Citation Count: 0 |
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ISSN: | 1976-913X 2092-805X |
DOI: | 10.3745/JIPS.2009.5.1.033 |