利用机器学习建立睡眠期间压力水平的预测模型

Shaheen Chouhan
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摘要

摘要:本研究利用包含各种生理参数的数据集对压力水平的分析和预测进行了深入探讨。数据集经过精心准备和仔细检查,以了解其组成和质量,为后续分析奠定基础。通过数据可视化,可以窥见压力水平和生理属性之间的联系,为进一步研究奠定基础。这项工作的主要重点是开发和评估用于压力水平预测的机器学习模型。各种模型,包括逻辑回归、随机森林、决策树、支持向量机 (SVM)、k-最近邻 (kNN) 和高斯直觉贝叶斯,都经过了严格的训练和测试。这些模型表现出卓越的性能,所选模型在测试数据上达到了无可挑剔的准确性。这些模型的成功开发为医疗保健、幸福监测和压力管理提供了实际应用。不过,这项研究也承认存在一定的局限性,尤其是在数据的描述和准确性方面。数据集的准确性和广泛性影响了模型的有效性。今后的研究和数据收集工作可能会提高压力水平预测的准确性和可靠性。总之,这项工作为在压力评估和管理中利用机器学习奠定了良好的基础,有可能对个人的健康和幸福产生积极影响。
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Predictive Modelling of Stress Levels During Sleep using Machine learning
Abstract: This study thoroughly explores the analysis and prediction of stress levels using a dataset that encompasses a diverse range of physiological parameters. The dataset undergoes meticulous preparation and scrutiny to comprehend its composition and quality, laying the groundwork for subsequent analysis. Through data visualization, valuable glimpses on the connections amongst stress levels and physiological attributes are gained, serving as a foundational step for further examination. The primary focus of this work is on the development and evaluation of machine learning models for stress level prediction. Various models, including Logistic Regression, Random Forest, Decision Tree, Support Vector Machine (SVM), k-Nearest Neighbors (kNN), and Gaussian Naive Bayes, are rigorously trained and tested. These models exhibit remarkable performance, with selected ones achieving impeccable accuracy on the test data. The successful development of these models opens up practical applications in healthcare, well-being monitoring, and stress management. However, the study acknowledges certain limitations, particularly about the portrayal and the accuracy of the data. The level of accuracy nor broadness of the dataset affect the effectiveness of the models. Future studies and data gathering initiatives might improve the precision and reliability of stress level predictions. In conclusion, this work establishes a promising foundation for utilizing machine learning in stress assessment and management, with the potential to positively impact individuals' health and well-being.
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