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Grid- and dummy-cluster-based learning of normal and intrusive clusters for computer intrusion detection
Xiangyang Li,
Nong Ye
Industrial, Systems and Operations Engineering
Research output
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Contribution to journal
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Article
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peer-review
21
Scopus citations
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Business & Economics
Intrusion Detection
100%
Grid
67%
Computer Networks
32%
Computer Systems
28%
Robustness
21%
Incremental
15%
Testing
14%
Performance
13%
Data Mining
12%
Audit
11%
Module
9%
Information Security
8%
Clustering
8%
Attack
6%
Engineering & Materials Science
Intrusion detection
62%
Computer systems
43%
Computer networks
37%
UNIX
15%
Computer operating systems
13%
Testing
12%
Security of data
11%
Data mining
10%