Author:
Lee Yongho,Lee Nahyun,Pham Vinh,Lee Jiwoo,Chung Tai-myoung
Abstract
Stress is considered to be an emotional state deserving of special
attention, as it brings about harmful effects on human health when exposed
to in the long term. Stress may also induce general health risks, including
headaches, sleep disorders, and cardiovascular diseases. Continuous
monitoring of emotion can help patients suffering from psychiatric disorders
better understand themselves and promote the emotional well-being of the
public in general. Recent advancements in wearable technologies and
biosensors enable a decent level of emotion and stress detection through
multimodal machine learning analysis and measurement outside of lab
conditions. As machine learning solutions demand a large amount of training
data, collecting and combining personal data is a prerequisite for accurate
analysis. However, due to the highly sensitive nature of medical data, the
additional implementation of measures for the preservation of user privacy
is a non-trivial task when developing an AI-based stress detection solution.
We propose a novel machine learning stress detection system that facilitates
privacy-preserving data exploitation based on FedAvg, a renowned federated
learning algorithm. We evaluated our system design on a standard multimodal
dataset for the detection of stress. Experiment results demonstrate that our
system may achieve a detection accuracy of 75% without jeopardizing the
privacy of user data.
Cited by
2 articles.
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