Modeling of countermeasure against self-evolving botnets
Title | Modeling of countermeasure against self-evolving botnets |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Hongyo, K., Kimura, T., Kudo, T., Inoue, Y., Hirata, K. |
Conference Name | 2017 IEEE International Conference on Consumer Electronics - Taiwan (ICCE-TW) |
ISBN Number | 978-1-5090-4017-9 |
Keywords | botnets, compositionality, Computational modeling, Computers, computing resources, digital simulation, invasive software, learning (artificial intelligence), machine learning, malicious attackers, Markov chains, Markov processes, Metrics, pubcrawl, Radiation detectors, Resiliency, self-evolving botnets, simulation experiments, Software, Viruses (medical), zombie computers |
Abstract | Machine learning has been widely used and achieved considerable results in various research areas. On the other hand, machine learning becomes a big threat when malicious attackers make use it for the wrong purpose. As such a threat, self-evolving botnets have been considered in the past. The self-evolving botnets autonomously predict vulnerabilities by implementing machine learning with computing resources of zombie computers. Furthermore, they evolve based on the vulnerability, and thus have high infectivity. In this paper, we consider several models of Markov chains to counter the spreading of the self-evolving botnets. Through simulation experiments, this paper shows the behaviors of these models. |
URL | https://ieeexplore.ieee.org/document/7991078 |
DOI | 10.1109/ICCE-China.2017.7991078 |
Citation Key | hongyo_modeling_2017 |
- Markov chains
- zombie computers
- Viruses (medical)
- Software
- simulation experiments
- self-evolving botnets
- Resiliency
- Radiation detectors
- pubcrawl
- Metrics
- Markov processes
- botnets
- malicious attackers
- machine learning
- learning (artificial intelligence)
- invasive software
- digital simulation
- computing resources
- Computers
- Computational modeling
- Compositionality