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A Study on Intelligent Technology Valuation System: Introduction of KIBO Patent Appraisal System II

Authors :
Tae-Eung Sung
Chan-Ho Lee
Yong-Ju Jang
Min-Seung Kim
Ji-Hye Choi
Jeong Hee Lee
Jaesik Lee
Source :
Sustainability, Vol 13, Iss 12666, p 12666 (2021), Sustainability, Volume 13, Issue 22
Publication Year :
2021
Publisher :
MDPI AG, 2021.

Abstract

Technology finance, which has attracted worldwide attention for the successful business development of small-and-medium enterprises (SMEs) or start-ups, has advanced an innovation or stagnation way-out resolution strategy for companies in line with the low-growth economic trends. Although the development of new technologies and the establishment of active R&amp<br />D and commercialization strategies are essential factors in a company’s management sustainability, the activation of the technology market in practice is still in progress for its golden age. In this study, to promote a technology transfer-based company’s growth and to run technology-based various financial support activities, we develop and propose a new intelligent, deep learning-based technology valuation system that enables technology holders to estimate the economic values of their innovative technologies and further to establish a firm’s commercialization strategy. For the last years, the KIBO Patent Appraisal System (KPAS-II) herein proposed has been advanced by KIBO as a web-based, artificial intelligence (AI) and evaluation data applications valuation system that automatically calculates and estimates a technology’s feasible economic value by utilizing both the intrinsic and extrinsic index information of a patent and the commercialization entity’s business capabilities, and by applying to the discounted cash flow (DCF) method in valuation theory, and finally integrating with deep learning results based on the in-advance previously established patent DB and the financial DB. The KPAS-II proposed in this study can be said to have dramatically overcome the long-term preparation period and high levels of R&amp<br />D and commercialization costs in terms of the limitations that the existing technology valuation method possesses by enhancing the reliability of approximate economic values from the deep learning results based on financial data and completed valuation data. In addition, it is expected that technology marketing coordinators, researchers, and non-specialty business agents, not limited to valuation experts, can easily estimate the economic values of their patents or technologies, and they can be actively utilized in a technology-based company’s decision-making and technologically dependent financial activities.

Details

Language :
English
ISSN :
20711050
Volume :
13
Issue :
12666
Database :
OpenAIRE
Journal :
Sustainability
Accession number :
edsair.doi.dedup.....678bafe1acb5452115542346451e5589