Trustworthy Federated Label Distribution Learning under Annotation Quality Disparity

📅 2026-05-06
📈 Citations: 0
Influential: 0
📄 PDF

career value

182K/year
📝 Abstract
Label Distribution Learning (LDL) models supervision as an instance-wise probability distribution, enabling fine-grained learning under inherent ambiguity, but its success relies on high-fidelity label distributions that are costly to obtain and thus often noisy. Motivated by privacy-sensitive applications, we study Federated Label Distribution Learning (Fed-LDL), where data isolation further induces heterogeneous annotation quality across clients, making local updates unevenly reliable and breaking sample-size-based aggregation (e.g., FedAvg). To address this trust dilemma, we propose FedQual, a quality-aware Fed-LDL framework with two coupled mechanisms: (i) quality-adaptive client training guided by a global semantic anchor that calibrates low-quality clients while preserving high-quality autonomy, and (ii) reliability-aware server aggregation that reweights client contributions by effective reliable information rather than raw sample size. To enable rigorous evaluation, we construct four new Fed-LDL benchmarks (FER-LDL, FI-LDL, PIPAL-LDL, and KADID-LDL) with controlled annotation quality disparity. We further provide a theoretical guarantee showing that under heterogeneous supervision quality, client-specific calibration is strictly better than any uniform calibration. Extensive experiments on the proposed benchmarks demonstrate the effectiveness of FedQual.
Problem

Research questions and friction points this paper is trying to address.

Federated Learning
Label Distribution Learning
Annotation Quality Disparity
Trustworthy Aggregation
Heterogeneous Supervision
Innovation

Methods, ideas, or system contributions that make the work stand out.

Federated Label Distribution Learning
Annotation Quality Disparity
Quality-Adaptive Training
Reliability-Aware Aggregation
Global Semantic Anchor
🔎 Similar Papers
No similar papers found.
J
Junxiang Wu
School of Computer Science and Engineering, Southeast University, Nanjing, China; Key Laboratory of New Generation Artificial Intelligence Technology and Its Interdisciplinary Applications (Southeast University), Ministry of Education, China
Zhiqiang Kou
Zhiqiang Kou
Ph.D. Student at Southeast University, Internship at RIKEN AIP
Machine learning
Hongwei Zeng
Hongwei Zeng
Aerospace Information Research Institute, Chinese Academy of Sciences
Remote sensing for agricultureBasin's water resource management
Wenke Huang
Wenke Huang
School of Computer Science, Wuhan University
Federated LearningMLLM
B
Biao Liu
School of Computer Science and Engineering, Southeast University, Nanjing, China; Key Laboratory of New Generation Artificial Intelligence Technology and Its Interdisciplinary Applications (Southeast University), Ministry of Education, China
Hanlin Gu
Hanlin Gu
Webank
federated learningprivacy and securityLLM
Y
Yuheng Jia
School of Computer Science and Engineering, Southeast University, Nanjing, China; Key Laboratory of New Generation Artificial Intelligence Technology and Its Interdisciplinary Applications (Southeast University), Ministry of Education, China
D
Di Jiang
Academy for Artificial Intelligence, Hong Kong Polytechnic University, Hong Kong, China
Y
Yang Liu
Academy for Artificial Intelligence, Hong Kong Polytechnic University, Hong Kong, China
Xin Geng
Xin Geng
School of Computer Science and Engineering, Southeast University
Artificial IntelligencePattern RecognitionMachine Learning