Processing and Analysis of Russian Strategic Planning Programs

In this paper, we present a project on the analysis of an extensive corpus of strategic planning documents, devoted to various aspects of the development of Russian regions. The main purposes of the project are: (1) to extract different aspects of goal setting and planning, (2) to form an ontology of goals and criteria of achieving these goals, (3) to measure the similarity between goals declared by federal and municipal subjects.

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