Please use this identifier to cite or link to this item: https://er.nau.edu.ua/handle/NAU/62256
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dc.contributor.authorSineglazov, Victor-
dc.contributor.authorСинєглазов, Віктор Михайлович-
dc.contributor.authorNovikov, Mikhaylo-
dc.contributor.authorНовіков, Mихайло Сергійович-
dc.date.accessioned2024-02-15T09:55:20Z-
dc.date.available2024-02-15T09:55:20Z-
dc.date.issued2023-12-27-
dc.identifier.citationSineglazov V. M. Determination of Marketing Parameters for Building a Demand Forecasting Model using Neural Networks / V. M. Sineglazov, M. S. Novikov // Electronics and Control Systems, N 4(78) – Kyiv: ТОВ «Альянт», 2023. – pp. 44–51uk_UA
dc.identifier.issn1990-5548-
dc.identifier.urihttps://er.nau.edu.ua/handle/NAU/62256-
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dc.description.abstractThis article is devoted to finding marketing parameters for building a demand forecasting model using neural networks using real data. The work deals with the problem of modeling product demand on the market in marketing using artificial intelligence and machine learning methods. The main features of existing approaches to building models of products on the market, their advantages and disadvantages are shown. The need for their improvement has been identified. A new methodology for solving the problem is presented. The model's demonstrated ability to predict consumer demand based on a variety of marketing parameters helps businesses plan inventory, production, and personnel more effectively and can lead to significant cost savings and improved efficiency.uk_UA
dc.description.abstractCтаттю присвячено знаходженню маркетингових параметрів для побудови моделі прогнозування попиту за допомогою нейронних мереж з використанням реальних даних. У роботі розглянуто проблему в області моделювання попиту товару на ринку в маркетингу за допомогою методів штучного інтелекту та машинного навчання. Показано основні особливості існуючих підходів до побудови моделей товарів на ринку, їх переваги та недоліки. Виявлено потребу у їх вдосконаленні. Представлено нову методологію для розв’язання задачі. Продемонстровано здатність моделі успішно прогнозувати споживчий попит на основі різноманітних маркетингових параметрів, що допомагає підприємствам ефективніше планувати запаси, виробництво та персонал і може призвести до значної економії коштів та підвищенню ефективності.uk_UA
dc.language.isoukuk_UA
dc.publisherNational Aviation Universityuk_UA
dc.relation.ispartofseriesElectronics and Control Systems;№4(78)-
dc.relation.ispartofseriesЕлектроніка та системи управління;№4(78)-
dc.subjectdetermination of marketing parametersuk_UA
dc.subjectforecastinguk_UA
dc.subjectneural networksuk_UA
dc.subjectregression modelsuk_UA
dc.subjectmultilayer perceptronuk_UA
dc.subjectвизначення маркетингових параметрівuk_UA
dc.subjectпрогнозуванняuk_UA
dc.subjectнейронні мережіuk_UA
dc.subjectрегресійні моделіuk_UA
dc.subjectбагатошаровий персептронuk_UA
dc.titleDetermination of Marketing Parameters for Building a Demand Forecasting Model using Neural Networksuk_UA
dc.title.alternativeВизначення маркетингових параметрів для побудови моделі прогнозування попиту за допомогою нейронних мережuk_UA
dc.typeArticleuk_UA
dc.subject.udc004.855.5(045)uk_UA
dc.identifier.doi10.18372/1990-5548.78.18263-
Appears in Collections:Наукові публікації та матеріали кафедри авіаційних комп'ютерно-інтегрованих комплексів (НОВА)

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