Problems of Definitions and Setting Goals for Data Leaks Protection

Georgy Garbuzov

Abstract


This article considers problematic methodological issues arising in the process of scientific organization of protection of restricted information from leakage and disclosure. In particular, it notes the lack of elaboration of terminology in the domestic legislation and its inconsistency in the sectoral legislation, which offers different, sometimes contradictory definitions. Problem statement: to determine the balance of approaches to the protection of restricted access information in the organization, to determine the criteria for the leakage of restricted access information as a specific type of threats to information security. Results: the authors conducted research to select the target approach to the definition of information leakage and its relationship with the disclosure of restricted information, in addition, the article defines approaches to the definition of objects of protection - restricted information - value and regulatory, as well as identified key aspects that should be taken into account in the future when developing a comprehensive system of protection of restricted information from leaks. Practical significance: the proposed approaches can be used by information security specialists of commercial and non-commercial organizations when building threat models of restricted access information and building systems of protection of restricted access information. Discussion: one of the directions of defining approaches to information leakage protection is presented, it is important to continue the synchronization of the conceptual apparatus in the domestic information security system.

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References


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