English

MILD: Multi-Intent Learning and Disambiguation for Proactive Failure Prediction in Intent-based Networking

Networking and Internet Architecture 2026-02-17 v1 Machine Learning

Abstract

In multi-intent intent-based networks, a single fault can trigger co-drift where multiple intents exhibit symptomatic KPI degradation, creating ambiguity about the true root-cause intent. We present MILD, a proactive framework that reformulates intent assurance from reactive drift detection to fixed-horizon failure prediction with intent-level disambiguation. MILD uses a teacher-augmented Mixture-of-Experts where a gated disambiguation module identifies the root-cause intent while per-intent heads output calibrated risk scores. On a benchmark with non-linear failures and co-drifts, MILD provides 3.8\%--92.5\% longer remediation lead time and improves intent-level root-cause disambiguation accuracy by 9.4\%--45.8\% over baselines. MILD also provides per-alert KPI explanations, enabling actionable diagnosis.

Cite

@article{arxiv.2602.14283,
  title  = {MILD: Multi-Intent Learning and Disambiguation for Proactive Failure Prediction in Intent-based Networking},
  author = {Md. Kamrul Hossain and Walid Aljoby},
  journal= {arXiv preprint arXiv:2602.14283},
  year   = {2026}
}

Comments

Copyright 2026 IEEE. Accepted for presentation in IEEE/IFIP NOMS 2026

R2 v1 2026-07-01T10:37:43.657Z