Artificial intelligence in intellectual property valuation
Abstract
The relevance of the topic under consideration lies in the difficulty of determining the value of intellectual property due to the many changing factors affecting its valuation. The purpose of the study is the preliminary development of a tool that allows to automate the analysis of influencing factors and valuate intellectual property using artificial intelligence. The author analyzed the existing approaches to valuation and the experience of using artificial intelligence in valuation activity. As a result of the conducted research, the author identified the possible functions of the software product in accordance with the needs of market participants (potential consumers). The development has an applied orientation and is intended for use by a wide audience.
About the Author
V. A. KlementevRussian Federation
Viktor A. Klementev, Partner; Head of Financial and Technical Consulting
Moscow, Kolokolnikov lane, 10, room 1 (h)
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Review
For citations:
Klementev V.A. Artificial intelligence in intellectual property valuation. Bulletin of Federal institute of industrial property. 2024;3(3):308-312. (In Russ.)
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