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Predicting the economic efficiency of the business model of an industrial enterprise using machine learning methods

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dc.contributor.author Horal, Liliana
dc.contributor.author Khvostina, Inesa
dc.contributor.author Reznik, Nadiia
dc.contributor.author Shyiko, Vira
dc.contributor.author Yashcheritsyna, Natalia
dc.contributor.author Korol, Svitlana
dc.contributor.author Zaselskiy, Vladimir
dc.date.accessioned 2021-09-07T17:19:55Z
dc.date.available 2021-09-07T17:19:55Z
dc.date.issued 2020-10-26
dc.identifier.citation Horal L. Predicting the economic efficiency of the business model of an industrial enterprise using machine learning methods / Liliana Horal, Inesa Khvostina, Nadiia Reznik, Vira Shyiko, Natalia Yashcheritsyna, Svitlana Korol, Vladimir Zaselskiy // CEUR Workshop Proceedings. - Vol. 2713. - P. 334-351. uk
dc.identifier.issn 1613-0073
dc.identifier.uri http://ceur-ws.org/Vol-2713/paper37.pdf
dc.identifier.uri http://elibrary.kdpu.edu.ua/xmlui/handle/123456789/4476
dc.identifier.uri https://doi.org/10.31812/123456789/4476
dc.description.abstract The paper considers the problem of studying the impact of key determinants on the industrial enterprise business model economic efficiency and aims to build an optimal model for predicting the industrial enterprise business model effectiveness using neural boundaries. A system of key determinants key factors has been developed. Significant factors were later used to build neural networks that characterize the studied resultant trait development vector. The procedure for constructing neural networks was performed in the STATISTICA Neural Networks environment. As input parameters, according to the previous analysis, 6 key factor indicators were selected. The initial parameter is determined by economic efficiency. According to the results of the neural network analysis, 100 neural networks were tested and the top 5 were saved. The following types of neural network architectures, multilayer perceptron, generalized regression network and linear network were used. Based on the results of the neural network modeling, 5 multilayer perceptrons of neural network architectures were proposed. According to descriptive statistics, the best model was a multilayer perceptron, with the MLP 6-10-1 architecture, which identifies a model with 6 input variables, one output variable and one hidden layer containing 10 hidden neurons. According to the analysis of the sensitivity of the network to input variables, it was determined that the network is the most sensitive to the variable the share of electricity costs in total costs. According to the results of selected neural networks standard prediction, the hypothesis of the best neural network was confirmed as Absolute res., Squared res, Std. Res for the neural network MLP 6-10-1 reached the optimal value and indicate that the selected model really has small residues, which indicates a fairly high accuracy of the forecast when using it. uk
dc.language.iso en uk
dc.publisher CEUR Workshop Proceedings uk
dc.subject neural networks uk
dc.subject forecasting uk
dc.subject business model uk
dc.subject economic efficiency uk
dc.subject digitalization uk
dc.subject oil transportation company uk
dc.title Predicting the economic efficiency of the business model of an industrial enterprise using machine learning methods uk
dc.type Article uk


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