<?xml version="1.0" encoding="UTF-8"?>
<reference anchor="I-D.ietf-nmop-network-anomaly-lifecycle" target="https://datatracker.ietf.org/doc/html/draft-ietf-nmop-network-anomaly-lifecycle-04">
   <front>
      <title>An Experiment: Network Anomaly Detection Lifecycle</title>
      <author initials="V." surname="Riccobene" fullname="Vincenzo Riccobene">
         <organization>Huawei</organization>
      </author>
      <author initials="T." surname="Graf" fullname="Thomas Graf">
         <organization>Swisscom</organization>
      </author>
      <author initials="W." surname="Du" fullname="Wanting Du">
         <organization>Swisscom</organization>
      </author>
      <author initials="A. H." surname="Feng" fullname="Alex Huang Feng">
         <organization>INSA-Lyon</organization>
      </author>
      <date month="November" day="21" year="2025" />
      <abstract>
	 <t>   Network Anomaly Detection is the act of detecting problems in the
   network.  Accurately detecting problems is very challenging for
   network operators in production networks.  Good results require a lot
   of expertise and knowledge around both the implied network
   technologies and the connectivity services provided to customers,
   apart from a proper monitoring infrastructure.  In order to
   facilitate network anomaly detection, novel techniques are being
   introduced, including programmatical, rule-based and AI-based, with
   the promise of improving scalability and the hope to keep a high
   detection accuracy.  To guarantee acceptable results, the process
   needs to be properly designed, adopting well-defined stages to
   accurately collect evidence of anomalies, validate their relevancy
   and improve the detection systems over time, iteratively.

   This document describes a well-defined approach on managing the
   lifecycle process of a network anomaly detection system, spanning
   across the recording of its output and its iterative refinement, in
   order to facilitate network engineers to interact with the network
   anomaly detection system, enable the &quot;human-in-the-loop&quot; paradigm and
   refine the detection abilities over time.  The major contributions of
   this document are: the definition of three key stages of the
   lifecycle process, the definition of a state machine for each anomaly
   annotation on the system and the definition of YANG data models
   describing a comprehensive format for the anomaly labels, allowing a
   well-structured exchange of those between all the interested actors.

	 </t>
      </abstract>
   </front>
   <seriesInfo name="Internet-Draft" value="draft-ietf-nmop-network-anomaly-lifecycle-04" />
   
</reference>
