What is Normal? A Big Data Observational Science Model of Anonymized Internet Traffic
Understanding what is normal is a key aspect of protecting a domain. Other domains invest heavily in observational science to develop models of normal behavior to better detect anomalies. Recent advances in high performance graph libraries, such as the GraphBLAS, coupled with supercomputers enables...
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Zusammenfassung: | Understanding what is normal is a key aspect of protecting a domain. Other
domains invest heavily in observational science to develop models of normal
behavior to better detect anomalies. Recent advances in high performance graph
libraries, such as the GraphBLAS, coupled with supercomputers enables
processing of the trillions of observations required. We leverage this approach
to synthesize low-parameter observational models of anonymized Internet traffic
with a high regard for privacy. |
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DOI: | 10.48550/arxiv.2409.03111 |