JOURNAL ARTICLE

Evidential Neighborhood Contrastive Learning for Universal Domain Adaptation

Liang ChenYihang LouJianzhong HeTao BaiMinghua Deng

Year: 2022 Journal:   Proceedings of the AAAI Conference on Artificial Intelligence Vol: 36 (6)Pages: 6258-6267   Publisher: Association for the Advancement of Artificial Intelligence

Abstract

Universal domain adaptation (UniDA) aims to transfer the knowledge learned from a labeled source domain to an unlabeled target domain without any constraints on the label sets. However, domain shift and category shift make UniDA extremely challenging, mainly attributed to the requirement of identifying both shared “known” samples and private “unknown” samples. Previous methods barely exploit the intrinsic manifold structure relationship between two domains for feature alignment, and they rely on the softmax-based scores with class competition nature to detect underlying “unknown” samples. Therefore, in this paper, we propose a novel evidential neighborhood contrastive learning framework called TNT to address these issues. Specifically, TNT first proposes a new domain alignment principle: semantically consistent samples should be geometrically adjacent to each other, whether within or across domains. From this criterion, a cross-domain multi-sample contrastive loss based on mutual nearest neighbors is designed to achieve common category matching and private category separation. Second, toward accurate “unknown” sample detection, TNT introduces a class competition-free uncertainty score from the perspective of evidential deep learning. Instead of setting a single threshold, TNT learns a category-aware heterogeneous threshold vector to reject diverse “unknown” samples. Extensive experiments on three benchmarks demonstrate that TNT significantly outperforms previous state-of-the-art UniDA methods.

Keywords:
Computer science Artificial intelligence Softmax function Domain (mathematical analysis) Domain adaptation Perspective (graphical) Matching (statistics) Pattern recognition (psychology) Sample (material) Feature (linguistics) Machine learning Transfer of learning Natural language processing Mathematics Deep learning Statistics

Metrics

35
Cited By
4.11
FWCI (Field Weighted Citation Impact)
58
Refs
0.94
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Domain Adaptation and Few-Shot Learning
Physical Sciences →  Computer Science →  Artificial Intelligence

Related Documents

JOURNAL ARTICLE

Synthetic Source Universal Domain Adaptation through Contrastive Learning

Jungchan Cho

Journal:   Sensors Year: 2021 Vol: 21 (22)Pages: 7539-7539
JOURNAL ARTICLE

Domain consensual contrastive learning for few-shot universal domain adaptation

Haojin LiaoQiang WangSicheng ZhaoTengfei XingRunbo Hu

Journal:   Applied Intelligence Year: 2023 Vol: 53 (22)Pages: 27191-27206
JOURNAL ARTICLE

MLNet: Mutual Learning Network with Neighborhood Invariance for Universal Domain Adaptation

Yanzuo LuMeng ShenJ. AndyXiaohua XieJianhuang Lai

Journal:   Proceedings of the AAAI Conference on Artificial Intelligence Year: 2024 Vol: 38 (4)Pages: 3900-3908
JOURNAL ARTICLE

Evidential Graph Contrastive Alignment for Source-Free Blending-Target Domain Adaptation

Juepeng ZhengGuowen LiYibin WenJinxiao ZhangRunmin DongHaohuan Fu

Journal:   IEEE Transactions on Neural Networks and Learning Systems Year: 2025 Vol: 37 (1)Pages: 233-246
© 2026 ScienceGate Book Chapters — All rights reserved.