TY - GEN
T1 - Insomnia Detection using Machine Learning
AU - Bhartia, Diksha
AU - Prabhu, Lavanya G.
AU - Nakshatri, Darshan
AU - Kaliraj, S.
AU - Reddy, G. Pradeep
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - Insomnia is a widespread sleep disorder that affects millions of people globally, posing significant risks to both mental and physical health. Early and accurate detection of insomnia is crucial to prevent its progression into more severe health concerns such as depression, cardiovascular diseases, and impaired cognitive function. However, traditional diagnostic approaches, relying heavily on clinical evaluations and subjective sleep diaries, are often time-consuming, costly, and susceptible to human errors. Recent improvements in machine learning (ML) have opened new ways for automating and enhancing insomnia detection, yet challenges such as model selection, and generalization across diverse populations persist. Although several ML models have been explored individually, systematic evaluation and comparison of classical and ensemble ML techniques for insomnia detection have not been emphasized. In this view, this paper proposes a comprehensive evaluation of a wide range of ML models, including Logistic Regression, Ridge Classifier, Random Forest, SVM, KNN, Naive Bayes, Gradient Boosting (GB), XGBoost (XGB), Neural Networks (NN), and ensemble combinations such as RF+NN, SVM+NN, GB+XGB, and KNN+NN. Extensive simulations were performed to validate the effectiveness of each model. The evaluation of performance was conducted across multiple metrics. Among all the models tested, Random Forest has shown superior performance.
AB - Insomnia is a widespread sleep disorder that affects millions of people globally, posing significant risks to both mental and physical health. Early and accurate detection of insomnia is crucial to prevent its progression into more severe health concerns such as depression, cardiovascular diseases, and impaired cognitive function. However, traditional diagnostic approaches, relying heavily on clinical evaluations and subjective sleep diaries, are often time-consuming, costly, and susceptible to human errors. Recent improvements in machine learning (ML) have opened new ways for automating and enhancing insomnia detection, yet challenges such as model selection, and generalization across diverse populations persist. Although several ML models have been explored individually, systematic evaluation and comparison of classical and ensemble ML techniques for insomnia detection have not been emphasized. In this view, this paper proposes a comprehensive evaluation of a wide range of ML models, including Logistic Regression, Ridge Classifier, Random Forest, SVM, KNN, Naive Bayes, Gradient Boosting (GB), XGBoost (XGB), Neural Networks (NN), and ensemble combinations such as RF+NN, SVM+NN, GB+XGB, and KNN+NN. Extensive simulations were performed to validate the effectiveness of each model. The evaluation of performance was conducted across multiple metrics. Among all the models tested, Random Forest has shown superior performance.
UR - https://www.scopus.com/pages/publications/105013072441
UR - https://www.scopus.com/pages/publications/105013072441#tab=citedBy
U2 - 10.1109/ICICV64824.2025.11085974
DO - 10.1109/ICICV64824.2025.11085974
M3 - Conference contribution
AN - SCOPUS:105013072441
T3 - Proceedings of 6th International Conference on Intelligent Communication Technologies and Virtual Mobile Networks, ICICV 2025
SP - 915
EP - 919
BT - Proceedings of 6th International Conference on Intelligent Communication Technologies and Virtual Mobile Networks, ICICV 2025
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 6th International Conference on Intelligent Communication Technologies and Virtual Mobile Networks, ICICV 2025
Y2 - 17 June 2025 through 19 June 2025
ER -