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Sleep Disorder Prediction Using Machine Learning | Python Final Year Project 2024 |IEEE Project 2024 [Video]

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Sleep Disorder Prediction Using Machine Learning | Python Final Year Project 2024 |IEEE Project 2024

Sleep Disorder Prediction Using Machine Learning | Python Final Year Project 2024 | IEEE Project 2024 – 2025.
To buy this project in ONLINE, Contact:
🔗Email: jpinfotechprojects@gmail.com,
🌐Website: https://www.jpinfotech.org

📌Our Proposed Project Title: Sleep Disorder Prediction Using Machine Learning.
💡Implementation: Python.
🔬Algorithm / Model Used: Gradient Boosting Classifier and Quadratic Discriminant Analysis.
🌐Web Framework: Flask.
🖥️Frontend: HTML, CSS, JavaScript.
💰Cost (In Indian Rupees): Rs.5000/

📌IEEE Base Paper Title: Applying Machine Learning Algorithms for the Classification of Sleep Disorders.

📌IEEE Base paper Abstract: Sleep disorder classification is crucial in improving human quality of life. Sleep disorders and apnoea can have a significant influence on human health. Sleep-stage classification by experts in the field is an arduous task and is prone to human error. The development of accurate machine learning algorithms (MLAs) for sleep disorder classification requires analysing, monitoring and diagnosing sleep disorders. This paper compares deep learning algorithms and conventional MLAs to classify sleep disorders. This study proposes an optimised method for the Classification of Sleep Disorders and uses the Sleep Health and Lifestyle Dataset publicly available online to evaluate the proposed model. The optimisations were conducted using a genetic algorithm to tune the parameters of different machine learning algorithms. An evaluation and comparison of the proposed algorithm against state-of-the-art machine learning algorithms to classify sleep disorders. The dataset includes 400 rows and 13 columns with various features representing sleep and daily activities. The k-nearest neighbours, support vector machine, decision tree, random forest and artificial neural network (ANN) deep learning algorithms were assessed. The experimental results reveal significant performance differences between the evaluated algorithms. The proposed algorithms obtained a classification accuracy of 83.19%, 92.04%, 88.50%, 91.15% and 92.92%, respectively. The ANN achieved the highest classification accuracy of 92.92%, and its precision, recall and F1-score values on the testing data were 92.01%, 93.80% and 91.93%, respectively. The ANN algorithm that achieved high accuracy than other tested algorithms.

📌REFERENCE:
Talal Sarheed Alshammari, “Applying Machine Learning Algorithms for the Classification of Sleep Disorders”, IEEE Access, Volume: 12, 2024.

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