Conformal Depression Prediction

IF 9.8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Transactions on Affective Computing Pub Date : 2025-02-13 DOI:10.1109/TAFFC.2025.3542023
Yonghong Li;Shan Qu;Xiuzhuang Zhou
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Abstract

While existing depression prediction methods based on deep learning show promise, their practical application is hindered by the lack of trustworthiness, as these deep models are often deployed as black box models, leaving us uncertain on the confidence of their predictions. For high-risk clinical applications like depression prediction, uncertainty quantification is essential in decision-making. In this paper, we introduce conformal depression prediction (CDP), a depression prediction method with uncertainty quantification based on conformal prediction (CP), giving valid confidence intervals with theoretical coverage guarantees for the model predictions. CDP is a plug-and-play module that requires neither model retraining nor an assumption about the depression data distribution. As CDP provides only an average coverage guarantee across all inputs rather than per-input performance guarantee, we further propose CDP-ACC, an improved conformal prediction with approximate conditional coverage. CDP-ACC firstly estimates the prediction distribution through neighborhood relaxation, and then introduces a conformal score function by constructing nested sequences, so as to provide a tighter prediction interval adaptive to specific input. We empirically demonstrate the application of CDP in uncertainty-aware facial depression prediction, as well as the effectiveness and superiority of CDP-ACC on the AVEC 2013 and AVEC 2014 datasets.
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适形凹陷预测
虽然现有的基于深度学习的抑郁症预测方法很有希望,但由于缺乏可信度,它们的实际应用受到了阻碍,因为这些深度模型通常被部署为黑盒模型,使我们对其预测的信心不确定。对于抑郁症预测等高风险临床应用,不确定性量化在决策中至关重要。本文介绍了一种基于保形预测(CP)的带不确定性量化的凹陷预测方法——保形凹陷预测(CDP),给出了模型预测的有效置信区间和理论覆盖保证。CDP是一个即插即用模块,既不需要模型再训练,也不需要对萧条数据分布进行假设。由于CDP仅提供所有输入的平均覆盖保证,而不是每个输入的性能保证,我们进一步提出了CDP- acc,一种改进的具有近似条件覆盖的保形预测。CDP-ACC首先通过邻域松弛估计预测分布,然后通过构造嵌套序列引入保形评分函数,从而提供更严格的自适应特定输入的预测区间。我们实证验证了CDP在不确定性感知面部抑郁预测中的应用,以及CDP- acc在AVEC 2013和AVEC 2014数据集上的有效性和优越性。
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来源期刊
IEEE Transactions on Affective Computing
IEEE Transactions on Affective Computing COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, CYBERNETICS
CiteScore
15.00
自引率
6.20%
发文量
174
期刊介绍: The IEEE Transactions on Affective Computing is an international and interdisciplinary journal. Its primary goal is to share research findings on the development of systems capable of recognizing, interpreting, and simulating human emotions and related affective phenomena. The journal publishes original research on the underlying principles and theories that explain how and why affective factors shape human-technology interactions. It also focuses on how techniques for sensing and simulating affect can enhance our understanding of human emotions and processes. Additionally, the journal explores the design, implementation, and evaluation of systems that prioritize the consideration of affect in their usability. We also welcome surveys of existing work that provide new perspectives on the historical and future directions of this field.
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