DATA PROCESSING AND ANALYSIS
E. R. Orlova, А. V. Golomanchuk Certain Issues of Digitalization in the Process of Countering Corruption
INTELLIGENCE SYSTEMS AND TECHNOLOGIES
MATHEMATICAL MODELING
MANAGEMENT AND DECISION MAKING
SOFTWARE ENGINEERING
E. R. Orlova, А. V. Golomanchuk Certain Issues of Digitalization in the Process of Countering Corruption
Abstract. 

The article deals with the problems of individual problems of the introduction of digitalization within the framework of public administration to counteract or minimize corruption and corruption risks. The emergence of new ways of corruption and, accordingly, new ways of countering it depends on the ability of the state to respond promptly and fully to the possibilities of digitalization, which allows both to establish effective and complete control over the activities of civil servants, over their financial situation, over their income and expenses, and at the same time to develop techniques for avoiding corruption liability with using modern digital technologies. In this regard, there was a need to predict possible corruption-related abuses and counteract them, as well as to identify the most promising areas of public administration in order to digitalize them to minimize corruption risks.

Keywords: 

digitalization, public administration, anti-corruption.

PP. 21-32.

DOI 10.14357/20718632230303
 
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