Saved in:
Bibliographic Details
Main Authors: Liu, Fangyuan, Zhao, Sirui, Zhang, Zeyu, Huang, Jinyang, Cui, Feng-Qi, Luo, Bin, Li, Meng, Xu, Tong, Chen, Enhong
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.16579
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917470792581120
author Liu, Fangyuan
Zhao, Sirui
Zhang, Zeyu
Huang, Jinyang
Cui, Feng-Qi
Luo, Bin
Li, Meng
Xu, Tong
Chen, Enhong
author_facet Liu, Fangyuan
Zhao, Sirui
Zhang, Zeyu
Huang, Jinyang
Cui, Feng-Qi
Luo, Bin
Li, Meng
Xu, Tong
Chen, Enhong
contents 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 leverages a wavelet-based Mixture-of-Experts to dynamically decouple stable macro-level affective baselines from transient micro-level behavioral bursts, effectively filtering out task-irrelevant artifacts. Second, a Disentangled Evidential Learning strategy enforces explicit decorrelation of features in these purified representations. By separating the cross-modal shared consensus from modality-specific behavioral nuances before Bayesian fusion, this rigorous disentanglement strictly prevents the model from double-counting overlapping information. Extensive experiments on the AVEC 2013, AVEC 2014, DAIC-WOZ, and E-DAIC datasets confirm that EviDep achieves state-of-the-art predictive accuracy and superior uncertainty calibration, thereby delivering a trustworthy, risk-aware decision-support tool for depression estimation.
format Preprint
id arxiv_https___arxiv_org_abs_2604_16579
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle EviDep: Trustworthy Multimodal Depression Estimation via Disentangled Evidential Learning
Liu, Fangyuan
Zhao, Sirui
Zhang, Zeyu
Huang, Jinyang
Cui, Feng-Qi
Luo, Bin
Li, Meng
Xu, Tong
Chen, Enhong
Machine Learning
Artificial Intelligence
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 leverages a wavelet-based Mixture-of-Experts to dynamically decouple stable macro-level affective baselines from transient micro-level behavioral bursts, effectively filtering out task-irrelevant artifacts. Second, a Disentangled Evidential Learning strategy enforces explicit decorrelation of features in these purified representations. By separating the cross-modal shared consensus from modality-specific behavioral nuances before Bayesian fusion, this rigorous disentanglement strictly prevents the model from double-counting overlapping information. Extensive experiments on the AVEC 2013, AVEC 2014, DAIC-WOZ, and E-DAIC datasets confirm that EviDep achieves state-of-the-art predictive accuracy and superior uncertainty calibration, thereby delivering a trustworthy, risk-aware decision-support tool for depression estimation.
title EviDep: Trustworthy Multimodal Depression Estimation via Disentangled Evidential Learning
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2604.16579