INFORMATION MODEL OF SYSTEM OF SUPPORT OF DECISION MAKING DURING MANAGEMENT OF IT COMPANIES
Yehor TATARCHENKO
gosahi@gmail.comVolodymyr Dahl East Ukrainian University, Faculty of Information Technology and Electronics, Department of Programming and Mathematics, Tsentralnyi Ave., 59A, Severodonetsk, Luhansk Oblast (Ukraine)
Volodymyr LYFAR
Volodymyr Dahl East Ukrainian University, Faculty of Information Technology and Electronics, Department of Programming and Mathematics, Tsentralnyi Ave., 59A, Severodonetsk, Luhansk Oblast (Ukraine)
Halyna TATARCHENKO
Volodymyr Dahl East Ukrainian University, Faculty of Information Technology and Electronics, Department of Programming and Mathematics, Tsentralnyi Ave., 59A, Severodonetsk, Luhansk Oblast (Ukraine)
Abstract
An information model has been carried out, with the help of which it is possible to implement methods that ensure the growth of competitiveness of IT companies. Growth conditions for companies provide mergers and acquisitions (M&A). The analysis of the data obtained as a result of the P&L financial report is mainly based on current indicators and can be partially used to prolong economic indicators for a certain (most often limited) period. The authors propose using methods for assessing stochastic indicators of IT development processes based on the solution of a number of problems: (1) Development of models to assess the impact of indicators in the analysis of the financial condition of companies; (2) Creation of an information model and methods for processing current stochastic data and assessing the probability of the implementation of negative and positive outcomes.
Keywords:
IT company, risk, decision making, mergers and acquisitions, FTA, ETAReferences
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Authors
Yehor TATARCHENKOgosahi@gmail.com
Volodymyr Dahl East Ukrainian University, Faculty of Information Technology and Electronics, Department of Programming and Mathematics, Tsentralnyi Ave., 59A, Severodonetsk, Luhansk Oblast Ukraine
Authors
Volodymyr LYFARVolodymyr Dahl East Ukrainian University, Faculty of Information Technology and Electronics, Department of Programming and Mathematics, Tsentralnyi Ave., 59A, Severodonetsk, Luhansk Oblast Ukraine
Authors
Halyna TATARCHENKOVolodymyr Dahl East Ukrainian University, Faculty of Information Technology and Electronics, Department of Programming and Mathematics, Tsentralnyi Ave., 59A, Severodonetsk, Luhansk Oblast Ukraine
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