Predictive Modelling Of Stress Levels: A Comparative Analysis Of Machine Learning Algorithms

Main Article Content

Asst. Prof. Sumit Sasane
Dr. Zameer Ahmed S Mulla

Abstract

This research paper investigates the efficacy of various machine learning algorithms in predicting stress levels. By employing a diverse set of algorithms, including [List of Algorithms], we aim to identify the most accurate and reliable model for stress prediction. The study utilizes [Dataset Information] to train and test the algorithms, evaluating their performance based on metrics such as accuracy, precision, recall, and F1 score. The findings will contribute to the development of more effective stress prediction models, with potential applications in healthcare, workplace wellness, and personal well-being.

Downloads

Download data is not yet available.

Article Details

How to Cite
Asst. Prof. Sumit Sasane, & Dr. Zameer Ahmed S Mulla. (2024). Predictive Modelling Of Stress Levels: A Comparative Analysis Of Machine Learning Algorithms. Journal of Advanced Zoology, 45(S4), 153–158. https://doi.org/10.53555/jaz.v45iS4.4172
Section
Articles
Author Biographies

Asst. Prof. Sumit Sasane

Indira College of Commerce and Science, Pune.

Dr. Zameer Ahmed S Mulla

D. Y. Patil College, Lohgaon.

References

Ahuja R, Banga A. 2019. Mental stress detection in university students using machine learning algorithms. Procedia Computer Science 152(9):349-353

Akmandor AO, Jha NK. 2017. Keep the stress away with soda: stress detection and alleviation system. IEEE Transactions on Multi-Scale Computing Systems 3(4):269-282

Alberdi A, Aztiria A, Basarab A, Cook DJ. 2018. Using smart offices to predict occupational stress. International Journal of Industrial Ergonomics 67(3):13-26

Bichindaritz I, Breen C, Cole E, Keshan N, Parimi P. 2017. Feature selection and machine learning based multilevel stress detection from ECG signals.

Crosswell AD, Lockwood KG. 2020. Best practices for stress measurement: how to measure psychological stress in health research. Health Psychology Open 7(2):2055102920933072

Di Martino F, Delmastro F. 2020. High-resolution physiological stress prediction models based on ensemble learning and recurrent neural networks.

Gupta A. 2020. Ml—extra tree classifier for feature selection. (accessed 15 May 2022)

Issa G. 2021. A new two-step ensemble learning model for improving stress prediction of automobile drivers. The International Arab Journal of Information Technology 18(16):819-829

Jung Y, Yoon YI. 2017. Multi-level assessment model for wellness service based on human mental stress level. Multimedia Tools and Applications 76(9):11305-11317

Kelly J. 2020. A consequence of COVID-19 could be a loss of civil liberties—resulting in career restrictions. (accessed 15 May 2022)

Kelly J. 2021. Global emotions survey shows record high levels of people ‘feeling stressed, sad, angry and worried’. (accessed 15 May 2022)

Khullar V, Tiwari RG, Agarwal AK, Dutta S. 2022. Physiological signals based anxiety detection using ensemble machine learning. In: Cyber Intelligence and Information Retrieval. Berlin: Springer. 597-608

Kim H-G, Cheon E-J, Bai D-S, Lee YH, Koo B-H. 2018. Stress and heart rate variability: a meta-analysis and review of the literature. Psychiatry Investigation 15(3):235-245

Koldijk S, Neerincx MA, Kraaij W. 2018. Detecting work stress in offices by combining unobtrusive sensors. IEEE Transactions on Affective Computing 9(2):227-239

Lee B-G, Chung W-Y. 2016. Wearable glove-type driver stress detection using a motion sensor. IEEE Transactions on Intelligent Transportation Systems 18(7):1835-1844

Lee E, Rustam F, Washington PB, El Barakaz F, Aljedaani W, Ashraf I. 2022. Racism detection by analyzing differential opinions through sentiment analysis of tweets using stacked ensemble GCR-NN model. IEEE Access 10:9717-9728

Lim WL, Liu Y, Harihara Subramaniam SC, Liew SHP, Krishnan G, Sourina O, Konovessis D, Ang HE, Wang L. 2018. EEG-based mental workload and stress monitoring of crew members in maritime virtual simulator. In: Transactions on Computational Science XXXII. Berlin: Springer. 15-28

Lin H, Jia J, Qiu J, Zhang Y, Shen G, Xie L, Tang J, Feng L, Chua T-S. 2017. Detecting stress based on social interactions in social networks. IEEE Transactions on Knowledge and Data Engineering 29(9):1820-1833

Mahajan R. 2018. Emotion recognition via EEG using neural network classifier. In: Soft Computing: Theories and Applications. Berlin: Springer. 429-438

Natekin A, Knoll A. 2013. Gradient boosting machines, a tutorial. Frontiers in Neurorobotics 7:21

Owusu E, Zhan Y, Mao QR. 2014. A neural-adaboost based facial expression recognition system. Expert Systems with Applications 41(7):3383-3390

Rachakonda L. 2022. Human stress detection. (accessed 15 August 2022)

Rachakonda L, Bapatla AK, Mohanty SP, Kougianos E. 2020. Sayopillow: blockchain-integrated privacy-assured IoMT framework for stress management considering sleeping habits. IEEE Transactions on Consumer Electronics 67(1):20-29

Rachakonda L, Mohanty SP, Kougianos E, Karunakaran K, Ganapathiraju M. 2018. Smart-pillow: an IoT based device for stress detection considering sleeping habits.

Reshi AA, Ashraf I, Rustam F, Shahzad HF, Mehmood A, Choi GS. 2021. Diagnosis of vertebral column pathologies using concatenated resampling with machine learning algorithms. PeerJ Computer Science 7(6):e547

Rizwan MF, Farhad R, Mashuk F, Islam F, Imam MH. 2019. Design of a biosignal based stress detection system using machine learning techniques.

Rupapara V, Rustam F, Aljedaani W, Shahzad HF, Lee E, Ashraf I. 2022. Blood cancer prediction using leukemia microarray gene data and hybrid logistic vector trees model. Scientific Reports 12(1):1-15

Rupapara V, Rustam F, Shahzad HF, Mehmood A, Ashraf I, Choi GS. 2021. Impact of smote on imbalanced text features for toxic comments classification using RVVC model. IEEE Access 9:78621-78634

Rustam F, Imtiaz Z, Mehmood A, Rupapara V, Choi GS, Din S, Ashraf I. 2022. Automated disease diagnosis and precaution recommender system using supervised machine learning. Multimedia Tools and Applications 81(22):1-24

Rustam F, Khalid M, Aslam W, Rupapara V, Mehmood A, Choi GS. 2021. A performance comparison of supervised machine learning models for COVID-19 tweets sentiment analysis. PLOS ONE 16(2):e0245909

Rustam F, Mehmood A, Ahmad M, Ullah S, Khan DM, Choi GS. 2020a. Classification of shopify app user reviews using novel multi text features. IEEE Access 8:30234-30244

Rustam F, Mehmood A, Ullah S, Ahmad M, Khan DM, Choi GS, On B-W. 2020b. Predicting pulsar stars using a random tree boosting voting classifier (RTB-VC) Astronomy and Computing 32(1–2):100404

Salari N, Hosseinian-Far A, Jalali R, Vaisi-Raygani A, Rasoulpoor S, Mohammadi M, Rasoulpoor S, Khaledi-Paveh B. 2020. Prevalence of stress, anxiety, depression among the general population during the COVID-19 pandemic: a systematic review and meta-analysis. Globalization and Health 16(1):1-11

Salazar-Ramirez A, Irigoyen E, Martinez R, Zalabarria U. 2018. An enhanced fuzzy algorithm based on advanced signal processing for identification of stress. Neurocomputing 271(2):48-57

Schmidt P, Reiss A, Duerichen R, Marberger C, Van Laerhoven K. 2018. Introducing WESAD, a multimodal dataset for wearable stress and affect detection.

Thelwall MA. 2017. Tensistrength: stress and relaxation magnitude detection for social media texts. Information Processing & Management 53(1):106-121