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Related Experiment Videos

Closed-Set Heterogeneous Domain Adaptation for IoT Intrusion Detection: An Anchor-Based Benchmark Across Single- and

Mohammad Chizari1, Qublai Khan Ali Mirza1, Abu Alam1

  • 1School of Business, Computing and Social Sciences, University of Gloucestershire, Park Campus, Cheltenham GL50 2RH, UK.

Sensors (Basel, Switzerland)
|June 12, 2026
PubMed
Summary

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This summary is machine-generated.

A new benchmark for heterogeneous domain adaptation (HDA) in IoT intrusion detection reveals that while HDA can recover significant performance gains, its deployment competitiveness varies by context. Direct target-side labeling is sometimes superior, emphasizing context-specific evaluation.

Failed At:

2026-06-19T13:40:45.679921+00:00

Keywords:
GapClosureIoT intrusion detectionbenchmark evaluationheterogeneous domain adaptationmulti-source domain adaptationrepresentation contractssemi-supervised learning

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