LoD: Loss-difference OOD Detection by Intentionally Label-Noisifying Unlabeled Wild Data

  • Chuanxing Geng
  • , Qifei Li
  • , Xinrui Wang
  • , Dong Liang
  • , Songcan Chen
  • , Pong C. Yuen*
  • *Corresponding author for this work

Research output: Chapter in book/report/conference proceedingConference proceedingpeer-review

Abstract

Using unlabeled wild data containing both in-distribution (ID) and out-of-distribution (OOD) data to improve the safety and reliability of models has recently received increasing attention. Existing methods either design customized losses for labeled ID and unlabeled wild data then perform joint optimization, or first filter out OOD data from the latter then learn an OOD detector. While achieving varying degrees of success, two potential issues remain: (i) Labeled ID data typically dominates the learning of models, inevitably making models tend to fit OOD data as IDs; (ii) The selection of thresholds for identifying OOD data in unlabeled wild data usually faces dilemma due to the unavailability of pure OOD samples. To address these issues, we propose a novel loss-difference OOD detection framework (LoD) by intentionally label-noisifying unlabeled wild data. Such operations not only enable labeled ID data and OOD data in unlabeled wild data to jointly dominate the models' learning but also ensure the distinguishability of the losses between ID and OOD samples in unlabeled wild data, allowing the classic clustering technique (e.g., K-means) to filter these OOD samples without requiring thresholds any longer. We also provide theoretical foundation for LoD's viability, and extensive experiments verify its superiority.

Original languageEnglish
Title of host publicationProceedings of the 34th International Joint Conference on Artificial Intelligence, IJCAI 2025
EditorsJames Kwok
PublisherInternational Joint Conferences on Artificial Intelligence
Pages5217-5225
Number of pages9
ISBN (Electronic)9781956792065
DOIs
Publication statusPublished - Aug 2025
Event34th International Joint Conference on Artificial Intelligence, IJCAI 2025 - Montreal, Canada
Duration: 16 Aug 202522 Aug 2025
https://www.ijcai.org/proceedings/2025/ (Conference proceedings)
https://2025.ijcai.org/ (Conference website)
https://2025.ijcai.org/montreal-at-a-glance/ (Conference program)

Publication series

NameIJCAI International Joint Conference on Artificial Intelligence
ISSN (Print)1045-0823

Conference

Conference34th International Joint Conference on Artificial Intelligence, IJCAI 2025
Country/TerritoryCanada
CityMontreal
Period16/08/2522/08/25
Internet address

User-Defined Keywords

  • Machine Learning
  • ML
  • Open-World/Open-Set/OOD Learning
  • Data Mining
  • DM
  • Anomaly/outlier detection

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