Multi-Agent Collaborative Semantic Enrichment with Calibration, Active Learning, and HCI-Guided Review

Authors

  • Sri Nurdiati Department of Mathematics, IPB University Indonesia Author
  • Markos Koutras Department of Statistics, University of Piraeus, Greece Author

Keywords:

Semantic enrichment, multi-agent systems, entity linking, calibration, active learning, human-in-the-loop, HCI, selective prediction, interoperability

Abstract

The literature on semantic enrichment has advanced rapidly in modeling techniques and knowledge integration, as cataloged by Shayegan & Mohammad [12], yet less attention has been paid to multi-agent collaboration and operational reliability in human-in-the-loop (HITL) settings. We present and evaluate a practical multi-agent pipeline comprising a retriever agent, generator agent (alias/pattern synthesis), cross-encoder linker, temperature-based calibrator, and an HCI-guided review UI that implements selective prediction. We report cross-domain results on news, technical reports, and clinical-style narratives, showing sustained gains in macro-F1, improved calibration (lower ECE), faster reviewer throughput, and measurable reductions in UI slips. We provide four reproducible figures and two tables, together with actionable guidance on threshold tuning, backlog control, and value-set curation.

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Published

2025-11-01

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Section

Articles

How to Cite

Multi-Agent Collaborative Semantic Enrichment with Calibration, Active Learning, and HCI-Guided Review. (2025). International Journal of Industrial Engineering and Construction Management (IJIECM), 5(1), 1-5. https://www.ijiecm.com/index.php/ijiecm/article/view/60

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