Information-extreme machine learning of wrist prosthesis control system based on the sparse training matrix

dc.contributor.authorСупруненко, Микита Костянтинович
dc.contributor.authorСупруненко, Никита Константинович
dc.contributor.authorSuprunenko, Mykyta Kostiantynovych
dc.contributor.authorЗборщик, Олександр Петрович
dc.contributor.authorЗборщик, Александр Петрович
dc.contributor.authorZborshchyk, Oleksandr Petrovych
dc.contributor.authorSokolov, O.
dc.date.accessioned2022-12-29T15:43:08Z
dc.date.available2022-12-29T15:43:08Z
dc.date.issued2022
dc.description.abstractThe article considers the problem of machine learning of a wrist prosthesis control system with a noninvasive biosignal reading system. The task is solved within the framework of information-extreme intelligent data analysis technology, which is based on maximizing the system’s information productivity in machine learning. The idea of information-extreme machine learning of the control system for recognition of electromyographic biosignals, as in artificial neural networks, consists in adapting the input information description to the maximum total probability of making correct classification decisions. However, unlike neuro-like structures, the proposed method was developed within a functional approach to modeling the cognitive processes of the natural intelligence of forming and making classification decisions. As a result, the proposed method acquires the properties of adaptability to the intersection of classes in the space of recognition features and flexibility when retraining the system due to the recognition class alphabet expansion. In addition, the decision rules constructed within the framework of the geometric approach are practically invariant to the multidimensionality of the space of recognition features. The difference between the developed method and the well-known methods of information-extreme machine learning is the use of a sparse training matrix, which allows for reducing the degree of intersection of recognition classes significantly. The optimization parameter of the input information description, the training dataset, is the quantization level of electromyographic biosignals. As an optimization criterion is considered the modified Kullback information measure. The proposed machine learning algorithm results are shown in the example of recognition of six finger movements and wrist.en_US
dc.identifier.citationSuprunenko M. K., Zborshchyk O. P., Sokolov O.(2022).Information-extreme machine learning of wrist prosthesis control system based on the sparse training matrix. Journal of Engineering Sciences, Vol. 9(2), pp. E28-E35, doi: 10.21272/jes.2022.9(2).e4en_US
dc.identifier.urihttps://essuir.sumdu.edu.ua/handle/123456789/90440
dc.language.isoenen_US
dc.publisherSumy State Universityen_US
dc.rights.uriccby4en_US
dc.subjectinformation-extreme intelligent technologyen_US
dc.subjectmachine learningen_US
dc.subjectprocess innovationen_US
dc.subjectsparse training matrixen_US
dc.subjectprosthesis control systemen_US
dc.subjectinformation criterionen_US
dc.subjectelectromyographic sensoren_US
dc.subjectbiosignalen_US
dc.titleInformation-extreme machine learning of wrist prosthesis control system based on the sparse training matrixen_US
dc.typeArticleen_US

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