Decision support systems for predicting innovation activity at the macro level are not yet widely used, and the authors have not been able to find direct analogues of such a system. The relevance of creating the system is due to the need to take into account heterogeneous structured and unstructured information, including in natural language, when predicting innovation activity. The article describes the process of designing a decision support system for predicting innovation activity, based on the system for integrating macroeconomic and statistical data (described by the authors in previous articles) by adding a module of decision-making methods. The UML diagram of use cases and the UML diagram of the components of this module, the general architecture of the prototype of the decision support system, are presented. It also describes an algorithm for predicting innovation activity and its impact on the potential for economic growth using DSS.
Язык оригиналаанглийский
Название основной публикацииICEIS 2020 - Proceedings of the 22nd International Conference on Enterprise Information Systems
РедакторыJoaquim Filipe, Michal Smialek, Alexander Brodsky, Slimane Hammoudi
Место публикацииPortugal
ИздательSciTePress
Страницы619-625
Том1
ISBN (электронное издание)9789897584237
ISBN (печатное издание)9789897584237
СостояниеОпубликовано - 2020
Событие22nd International Conference on Enterprise Information Systems - Prague, Чехия
Продолжительность: 5 мая 20207 мая 2020

конференция

конференция22nd International Conference on Enterprise Information Systems
Сокращенное названиеICEIS 2020
Страна/TерриторияЧехия
ГородPrague
Период5/05/207/05/20

    Предметные области Scopus

  • Информационные системы и управление
  • Информационные системы

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