The Impact of Information Technology on Investment Decision-Making: Problems and Prospects

Gulnur MUSSAGULOVA, Nurlan KULMURZAYEV, Bayanali DOSZHANOV, Sarsenkul TILEUBAY, Gulshat BAKALBAYEVA

Journal of Systems Science and Information ›› 2025, Vol. 13 ›› Issue (3) : 345-362.

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Journal of Systems Science and Information ›› 2025, Vol. 13 ›› Issue (3) : 345-362. DOI: 10.12012/JSSI-2024-0008

The Impact of Information Technology on Investment Decision-Making: Problems and Prospects

  • Gulnur MUSSAGULOVA1,*(Email), Nurlan KULMURZAYEV2(Email), Bayanali DOSZHANOV2(Email), Sarsenkul TILEUBAY2(Email), Gulshat BAKALBAYEVA3(Email)
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Abstract

The purpose of the study is to develop an approach to optimising the investment decision-making process using the dynamic programming method and its further integration into the enterprise information system using new technologies. The following methods were used in the study: System-structural analysis, dynamic programming method, graphical, and tabular methods. As a result of the conducted study, the role of information in the investment process was determined. An approach to the formation of the structure of an enterprise information system designed to optimise the investment decision-making process was proposed. The components of the structural elements of this system are considered — information collection, processing, and interpretation. A roadmap for information support for the development and implementation of an investment project is proposed, the blocks of which correspond to a certain direction of information processing, depending on the stage of implementation of the investment project — preparation, implementation, and final stage. The existing solutions are considered, and ready-made software products designed to optimise the investment process are characterised, primarily from the standpoint of risk assessment. An approach to optimising the investment decision-making process based on the dynamic programming method is proposed. An example of using this method to select one of the proposed alternatives according to the profit maximisation criterion is given. The results of the analysis can be used by the management board of enterprises to optimise the investment decision-making process.

Key words

digitalisation / innovation / dynamic programming method / management process / investments / efficiency

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Gulnur MUSSAGULOVA, Nurlan KULMURZAYEV, Bayanali DOSZHANOV, Sarsenkul TILEUBAY, Gulshat BAKALBAYEVA. The Impact of Information Technology on Investment Decision-Making: Problems and Prospects. Journal of Systems Science and Information, 2025, 13(3): 345-362 https://doi.org/10.12012/JSSI-2024-0008

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