BibTeX for papers by David Kotz; for complete/updated list see
https://www.cs.dartmouth.edu/~kotz/research/papers.html

@Article{camacho:networkmetrics-j,
  author =        {Jos{\'{e}} Camacho and Katarzyna Wasielewska and Rasmus Bro and David Kotz},
  title =         {{Interpretable Learning in Multivariate Big Data Analysis for Network Monitoring}},
  journal =       {IEEE Transactions on Network and Service Management},
  year =          2024,
  month =         {June},
  volume =        21,
  number =        3,
  pages =         {2926--2943},
  publisher =     {IEEE},
  copyright =     {IEEE (open access)},
  DOI =           {10.1109/TNSM.2024.3368501},
  URL =           {https://www.cs.dartmouth.edu/~kotz/research/camacho-networkmetrics-j/index.html},
  abstract =      {There is an increasing interest in the development of new data-driven models useful to assess the performance of communication networks. For many applications, like network monitoring and troubleshooting, a data model is of little use if it cannot be interpreted by a human operator. In this paper, we present an extension of the Multivariate Big Data Analysis (MBDA) methodology, a recently proposed interpretable data analysis tool. In this extension, we propose a solution to the automatic derivation of features, a cornerstone step for the application of MBDA when the amount of data is massive. The resulting network monitoring approach allows us to detect and diagnose disparate network anomalies, with a data-analysis workflow that combines the advantages of interpretable and interactive models with the power of parallel processing. We apply the extended MBDA to two case studies: UGR'16, a benchmark flow-based real-traffic dataset for anomaly detection, and Dartmouth'18, the longest and largest Wi-Fi trace known to date.},
}