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Research Article

Vol. 1 No. 2 (2025): International Journal of Multidisciplinary Research

Analysis of Spatial Leverage in Industrial Tourism

  • Natalia Viktorovna Maltsevich
  • Guo Zhaoxing
  • Osnovin Viktor Nikolaevich
DOI
https://doi.org/10.65231/ijmr.v1i2.56
Submitted
December 6, 2025
Published
2025-11-30

Abstract

This article analyzes the spatial leverage of industrial tourism, assesses its development potential, and proposes a model for interaction between industry participants. The methodological framework utilizes methods of analysis and synthesis, generalization and classification, and modeling. The information base includes regulatory documents of the Republic of Belarus (RB), scientific articles, periodicals in the field of industrial tourism, industrial tourism development methodologies, and statistical digests on the topic under study. The study allowed us to assess the spatial organization of industrial tourism, the interactions between industrial tourism participants, and develop a comprehensive approach to its development, creating a system for exchanging experience across various industries. This study also identified the expected outcomes of industrial tourism development for its participants in the republic

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