EviDep: Trustworthy Multimodal Depression Estimation via Disentangled Evidential Learning
Fangyuan Liu, Sirui Zhao, Zeyu Zhang, Jinyang Huang, Feng-Qi Cui, Bin Luo, Meng Li, Tong Xu, Enhong Chen

TL;DR
EviDep is a novel multimodal depression estimation framework that quantifies uncertainty and employs disentangled, frequency-aware features to improve accuracy and trustworthiness in noisy, real-world environments.
Contribution
It introduces a disentangled evidential learning approach with frequency-aware feature extraction for more reliable depression estimation.
Findings
Achieves state-of-the-art accuracy on multiple datasets.
Provides well-calibrated uncertainty estimates.
Effectively filters out task-irrelevant behavioral artifacts.
Abstract
Automated multimodal depression estimation in unconstrained environments is inherently challenged by naturalistic noise and complex behavioral variability. Prevailing deterministic methods, however, produce uncalibrated point estimates without quantifying predictive uncertainty, exposing decision-making to the risk of overconfident, untrustworthy estimates. To establish a reliable and trustworthy estimation paradigm, we propose EviDep, an evidential learning framework that jointly quantifies depression severity alongside aleatoric and epistemic uncertainties via a Normal-Inverse-Gamma distribution. To ensure the integrity of the extracted behavioral evidence and prevent artificial confidence inflation during multimodal fusion, EviDep introduces two tailored mechanisms. First, addressing the temporal-frequency heterogeneity of behavioral cues, a Frequency-aware Feature Extraction module…
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