Balancing Between Privacy and Utility for Affect Recognition Using Multitask Learning in Differential Privacy-Added Federated Learning Settings: Quantitative Study.

IF 4.8 2区 医学 Q1 PSYCHIATRY Jmir Mental Health Pub Date : 2024-12-23 DOI:10.2196/60003
Mohamed Benouis, Elisabeth Andre, Yekta Said Can
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Abstract

Background: The rise of wearable sensors marks a significant development in the era of affective computing. Their popularity is continuously increasing, and they have the potential to improve our understanding of human stress. A fundamental aspect within this domain is the ability to recognize perceived stress through these unobtrusive devices.

Objective: This study aims to enhance the performance of emotion recognition using multitask learning (MTL), a technique extensively explored across various machine learning tasks, including affective computing. By leveraging the shared information among related tasks, we seek to augment the accuracy of emotion recognition while confronting the privacy threats inherent in the physiological data captured by these sensors.

Methods: To address the privacy concerns associated with the sensitive data collected by wearable sensors, we proposed a novel framework that integrates differential privacy and federated learning approaches with MTL. This framework was designed to efficiently identify mental stress while preserving private identity information. Through this approach, we aimed to enhance the performance of emotion recognition tasks while preserving user privacy.

Results: Comprehensive evaluations of our framework were conducted using 2 prominent public datasets. The results demonstrate a significant improvement in emotion recognition accuracy, achieving a rate of 90%. Furthermore, our approach effectively mitigates privacy risks, as evidenced by limiting reidentification accuracies to 47%.

Conclusions: This study presents a promising approach to advancing emotion recognition capabilities while addressing privacy concerns in the context of empathetic sensors. By integrating MTL with differential privacy and federated learning, we have demonstrated the potential to achieve high levels of accuracy in emotion recognition while ensuring the protection of user privacy. This research contributes to the ongoing efforts to use affective computing in a privacy-aware and ethical manner.

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基于多任务学习的影响识别中隐私与效用的平衡:定量研究。
背景:可穿戴传感器的兴起标志着情感计算时代的重大发展。它们的受欢迎程度不断增加,它们有可能提高我们对人类压力的理解。这个领域的一个基本方面是通过这些不显眼的设备识别感知压力的能力。目的:本研究旨在利用多任务学习(MTL)提高情绪识别的性能,这是一项在各种机器学习任务中广泛探索的技术,包括情感计算。通过利用相关任务之间的共享信息,我们寻求提高情绪识别的准确性,同时面对这些传感器捕获的生理数据固有的隐私威胁。方法:为了解决与可穿戴传感器收集的敏感数据相关的隐私问题,我们提出了一个新的框架,该框架将差分隐私和联合学习方法与MTL相结合。该框架旨在有效识别精神压力,同时保留私人身份信息。通过这种方法,我们旨在提高情绪识别任务的性能,同时保护用户隐私。结果:使用2个著名的公共数据集对我们的框架进行了综合评估。结果表明,情绪识别的准确率显著提高,达到90%。此外,我们的方法有效地降低了隐私风险,将重新识别的准确率限制在47%。结论:本研究提出了一种有希望的方法来提高情感识别能力,同时解决移情传感器背景下的隐私问题。通过将MTL与差分隐私和联邦学习相结合,我们已经证明了在确保保护用户隐私的同时,在情感识别中实现高水平准确性的潜力。这项研究有助于正在进行的努力,以隐私意识和道德的方式使用情感计算。
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来源期刊
Jmir Mental Health
Jmir Mental Health Medicine-Psychiatry and Mental Health
CiteScore
10.80
自引率
3.80%
发文量
104
审稿时长
16 weeks
期刊介绍: JMIR Mental Health (JMH, ISSN 2368-7959) is a PubMed-indexed, peer-reviewed sister journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR Mental Health focusses on digital health and Internet interventions, technologies and electronic innovations (software and hardware) for mental health, addictions, online counselling and behaviour change. This includes formative evaluation and system descriptions, theoretical papers, review papers, viewpoint/vision papers, and rigorous evaluations.
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