2021
DOI: 10.3390/medicina57111217
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Hybrid Feature Selection Framework for the Parkinson Imbalanced Dataset Prediction Problem

Abstract: Background and Objectives: Recently, many studies have focused on the early detection of Parkinson’s disease (PD). This disease belongs to a group of neurological problems that immediately affect brain cells and influence the movement, hearing, and various cognitive functions. Medical data sets are often not equally distributed in their classes and this gives a bias in the classification of patients. We performed a Hybrid feature selection framework that can deal with imbalanced datasets like PD. Use the SOMTE… Show more

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Cited by 23 publications
(13 citation statements)
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“…These studies are just examples of many other studies (Parziale et al 2021;Qasim et al 2021;Orozco-Arroyave et al 2016;Tsanas et al 2012;Kurt et al 2019;Solana-Lavalle et al 2020;Kurt et al 2018;Kuresan et al 2021). The application of IoT has also guaranteed better management and control Sun et al 2021;Bhardwaj et al 2021;Połap 2018).…”
Section: Resultsmentioning
confidence: 85%
“…These studies are just examples of many other studies (Parziale et al 2021;Qasim et al 2021;Orozco-Arroyave et al 2016;Tsanas et al 2012;Kurt et al 2019;Solana-Lavalle et al 2020;Kurt et al 2018;Kuresan et al 2021). The application of IoT has also guaranteed better management and control Sun et al 2021;Bhardwaj et al 2021;Połap 2018).…”
Section: Resultsmentioning
confidence: 85%
“…As shown in Table 2 , the metrics F1-score, accuracy, and recall of all models were >91.00%. Accuracy determines the closeness of sample parameters to the characteristics of a population [22] and is obtained as the number of correct classifications divided by the total number of correct cases. The total number of acceptable ratings is divided by the total number of instances to calculate the model output.…”
Section: Resultsmentioning
confidence: 99%
“…Generating a subset of candidates involves searching for a feature subset, which is then used as an input for the evaluation process. The feature selection algorithm begins by choosing an initial subset on the basis of three stages of subset formation: (1) The subset is initially empty, and during search, the algorithm adds individual features one by one to this subset (called forward search); (2) If the original subset is identical to the feature set of a particular dataset, inappropriate or redundant features will expire from the original section during the search (called reverse search); (3) the initial subset is randomly generated and functions are inserted or removed one by one as the search progresses [22] . A large number of features is another problem posed by this dataset.…”
Section: Methodsmentioning
confidence: 99%
“…The forward search includes the individual features one-by-one whereas the reverse identifies the inappropriate or redundant features from the original one. Finally, the insert/remove is performed using randomly generated functions to remove the weakest one [ 43 ]. Hence, this paper uses the RFS technique to choose inappropriate features or prune the duplication features which makes the features more predictable to improve generalization and interpretable outcomes.…”
Section: Proposed Intelligent Edge-iot Frameworkmentioning
confidence: 99%