Видавництво на благо суспільства та покращення життя  /  Publication to benefit society and improve lives
 
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 The publication provides criteria and indicators of the characteristics of a blockchain token, presents the methodology for determination and mathematical processing of data. The methodological manual has been developed in order to establish whether a blockchain token is a digital asset based on the results of its research, including the research of the legal characteristics of a blockchain token, and is intended for specialists in the fields of information and digital economy, lawyers, financial organizations and representatives of business communities. 

CONTENTS

INTRODUCTION  4
SECTION 1. THEORETICAL BASIS  OF A BLOCKCHAIN TOKEN AS A DIGITAL ASSET
1.1. Development of the Blockchain Technology: Cryptocurrencies, Tokens, Digital Assets
1.2. Complex of Definitions of the Basic Concepts Related to a Blockchain Token
1.3. Components in the Context of the Definition of the Term “Digital Asset”
1.4. Characteristics of the Criteria and Indicators of a Blockchain Token’s Correspondence to a Digital Asset
SECTION 2. ORGANIZING AND CONDUCTING  THE RESEARCH OF CHARACTERISTICS OF A BLOCKCHAIN TOKEN
2.1. Research of Characteristics of a Blockchain Token
2.2. Analysis of Research Results
2.3. Interpretation of Research Results
SECTION 3. MATHEMATICAL FORMALIZATION OF METHODOLOGY FOR DIAGNOSING WHETHER CHARACTERISTICS OF A BLOCKCHAIN TOKEN CORRESPOND TO THOSE OF A DIGITAL ASSET
3.1. Triple Classification Based on the Results of the Diagnostics on Whether a Blockchain Token Corresponds to a Digital Asset
3.2. Reliability of the Methodology for Diagnosing the Blockchain Token Based on the Number of Points Received
CONCLUSIONS
THESAURUS
REFERENCES

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DOI: https://doi.org/10.26697/publisher