A hybrid feature selection algorithm using simplified swarm optimization for body fat prediction
Initialization
Feature (linguistics)
Pruning
DOI:
10.1016/j.cmpb.2022.107183
Publication Date:
2022-10-20T16:07:08Z
AUTHORS (4)
ABSTRACT
Obesity is one of the chronic diseases that seriously threaten people's health outcomes globally. Since the prevalence of obesity is increasing among people of all ages, measuring the body fat percentages is vital before treatment. However, the body fat percentage cannot be accurately measured by weighing. While many devices are commonly used to measure the body fat percentage, these devices are expensive and depend on complex instruments. Therefore, more practical and cost-effective solutions are desired to measure body fat accurately. This study presents a hybrid feature selection method based on a VIKOR-based multi-filter ensemble technique (VMFET) and an improved simplified swarm optimization (iSSO) to predict the body fat percentage with low prediction error.The study followed a two-phase process. First, VMFET was used to aggregate the statistical outcomesof individual filters to filter the most informative features from the original dataset. Then, the selected features are applied to the next phase. Second, iSSO was tailored with a biased random initialization scheme, effect-based feature pruning scheme, and multiple linear regression as a wrapper method to improve the prediction performance and select the optimal feature subset.Extensive experiments were performed using nine datasets to verify the performance of the proposed method empirically, and the corresponding results were compared with up-to-date studies.The statistical results demonstrated that the proposed method offers a promising and effective tool for predicting body fat.The hybrid feature selection model can enhance prediction accuracy and lower prediction error.
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