MODIFIED BALD EAGLE SEARCH ALGORITHM WITH DEEP LEARNING-DRIVEN SLEEP QUALITY PREDICTION FOR HEALTHCARE MONITORING SYSTEMS

Modified Bald Eagle Search Algorithm With Deep Learning-Driven Sleep Quality Prediction for Healthcare Monitoring Systems

Modified Bald Eagle Search Algorithm With Deep Learning-Driven Sleep Quality Prediction for Healthcare Monitoring Systems

Blog Article

Sleep habits are strongly related to health behaviors, with sleep quality serving as a major health indicator.Current approaches for evaluating sleep quality, namely polysomnography and questionnaires, are often time-consuming, costly, or invasive.Thus, there is a pressing need for a more convenient, nonintrusive, and cost-effective method.

The applications of deep learning (DL) in sleep quality prediction represent a groundbreaking technique for addressing sleep-related disorders.In this aspect, the article offers the design of a Modified Bald Eagle Search Algorithm with Deep Learning-Driven Sleep Quality Prediction (MBES-DLSQP) for Healthcare Monitoring Systems.The MBES-DLSQP technique combines the sten jacket m strengths of a DL model with a hyperparameter tuning strategy to provide precise sleep quality predictions.

At the primary stage, the MBES-DLSQP technique undergoes data pre-processing.Besides, the MBES-DLSQP technique uses a stacked sparse autoencoder (SSAE)-based prediction model, which can extract and encode high-dimensional sleep data.The MBES-DLSQP incorporates MBESA-based hyperparameter tuning which assures its optimal configurations to further 5326058hx boost the efficiency of the SSAE model.

The experimental outcome of the MBES-DLSQP algorithm is tested on the sleep dataset from the Kaggle repository.The experimental value infers that the MBES-DLSQP technique shows promising performance in sleep quality prediction with a maximum accuracy of 98.33%.

Report this page