Socio-Economic Decision Support Module by Unstructured Data

The article is devoted to the problem of assessing the socio-economic status of the region and the approach to structuring the initial data. A similar problem arises in solving many problems of regional management. The features and complexity of solving the problem are highlighted. It is shown that the assessment of the socio-economic status of the region is a comprehensive indicator that takes into account many factors. To reduce the level of uncertainty, it is proposed to use a system approach, which allowed us to formalize the description of the decision-making process by grouping heterogeneous factors and assess the situation in the region by separate groups of indicators. A module for assessing the socio-economic status of the region at decision-making on allocation of the budgetary credit is considered. Examples of evaluating individual factors, an algorithm for solving the problem, and features of its implementation are given.

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