Sleep Quality Prediction from Wearables using Convolution Neural Networks and Ensemble Learning

被引:2
作者
Kilic, Ozan [1 ]
Saylam, Berrenur [1 ]
Incel, Ozlem Durmaz [1 ]
机构
[1] Bogazici Univ, Dept Comp Engn, Istanbul, Turkiye
来源
PROCEEDINGS OF 2023 8TH INTERNATIONAL CONFERENCE ON MACHINE LEARNING TECHNOLOGIES, ICMLT 2023 | 2023年
关键词
student's life dataset; convolutional neural networks; random forest; pervasive health; HUMAN ACTIVITY RECOGNITION; PERFORMANCE; SENSORS; STRESS;
D O I
10.1145/3589883.3589900
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Sleep is among the most important factors affecting one's daily performance, well-being, and life quality. Nevertheless, it became possible to measure it in daily life in an unobtrusive manner with wearable devices. Rather than camera recordings and extraction of the state from the images, wrist-worn devices can measure directly via accelerometer, heart rate, and heart rate variability sensors. Some measured features can be as follows: time to bed, time out of bed, bedtime duration, minutes to fall asleep, and minutes after wake-up. There are several studies in the literature regarding sleep quality and stage prediction. However, they use only wearable data to predict or focus on the sleep stage. In this study, we use the NetHealth dataset, which is collected from 698 college students' via wearables, as well as surveys. Recently, there has been an advancement in deep learning algorithms, and they generally perform better than conventional machine learning techniques. Among them, Convolutional Neural Networks (CNN) have high performances. Thus, in this study, we apply different CNN architectures that have already performed well in the human activity recognition domain and compare their results. We also apply Random Forest (RF) since it performs best among the conventional methods. In future studies, we will compare them with other deep learning algorithms.
引用
收藏
页码:116 / 120
页数:5
相关论文
共 19 条
[1]   Analysis of Data from Wearable Sensors for Sleep Quality Estimation and Prediction Using Deep Learning [J].
Arora, Anshika ;
Chakraborty, Pinaki ;
Bhatia, M. P. S. .
ARABIAN JOURNAL FOR SCIENCE AND ENGINEERING, 2020, 45 (12) :10793-10812
[2]   Toward Robust Stress Prediction in the Age of Wearables: Modeling Perceived Stress in a Longitudinal Study With Information Workers [J].
Booth, Brandon M. ;
Vrzakova, Hana ;
Mattingly, Stephen M. ;
Martinez, Gonzalo J. ;
Faust, Louis ;
D'Mello, Sidney K. .
IEEE TRANSACTIONS ON AFFECTIVE COMPUTING, 2022, 13 (04) :2201-2217
[3]   Estimating Sleep Duration from Temporal Factors, Daily Activities, and Smartphone Use [J].
Chen, Chih-You ;
Vhaduri, Sudip ;
Poellabauer, Christian .
2020 IEEE 44TH ANNUAL COMPUTERS, SOFTWARE, AND APPLICATIONS CONFERENCE (COMPSAC 2020), 2020, :545-554
[4]  
Dinh-Van Phan, 2020, ICMHI 2020: Proceedings of the 4th International Conference on Medical and Health Informatics, P51, DOI 10.1145/3418094.3418114
[5]  
Ekmekci Ekrem Yusuf, 2022, ACAD PERFORMANCE REL
[6]   A Review on Mental Stress Detection Using Wearable Sensors and Machine Learning Techniques [J].
Gedam, Shruti ;
Paul, Sanchita .
IEEE ACCESS, 2021, 9 :84045-84066
[7]  
Ha S, 2016, IEEE IJCNN, P381, DOI 10.1109/IJCNN.2016.7727224
[8]   Novel approaches to human activity recognition based on accelerometer data [J].
Jordao, Artur ;
Borges Torres, Leonardo Antonio ;
Schwartz, William Robson .
SIGNAL IMAGE AND VIDEO PROCESSING, 2018, 12 (07) :1387-1394
[9]  
Kilic Akif Can, 2022, Procedia Computer Science, P2648, DOI [10.1016/j.procs.2022.09.323, 10.1016/j.procs.2022.09.323]
[10]   Relationships between daily stress responses in everyday life and nightly sleep [J].
Marcusson-Clavertz, David ;
Sliwinski, Martin J. ;
Buxton, Orfeu M. ;
Kim, Jinhyuk ;
Almeida, David M. ;
Smyth, Joshua M. .
JOURNAL OF BEHAVIORAL MEDICINE, 2022, 45 (04) :518-532