Measuring knowledge exploration distance at the patent level: Application of network embedding and citation analysis

Authors
Choi, JaewoongYoon, Janghyeok
Issue Date
2022-05
Publisher
Elsevier BV
Citation
Journal of Informetrics, v.16, no.2
Abstract
Although the incidence of knowledge exploration is observed in most patents, the concept of knowledge exploration distance has been analyzed with limited patents at the macro level of a company, organization or region. This study quantifies the knowledge exploration distance of individual patents using network embedding methods and citation analysis. First, a technology ecology network is constructed to identify technological association relationships between technical elements. Second, network embedding method is employed to represent technical elements as fixed dimensional vector, preserving the structural information. Next, the individual patents are vectorized based on the technology classification code information and pre-trained embedding values. Finally, by comparing the position between a citing patent and cited patents in the vector space, the knowledge exploration distance of the patent is obtained. This knowledge exploration distance indicates the novel degree of technological association between technical elements of a citing patent and those of cited patents. The case study covering artificial intelligence technology-related patents is conducted to illustrate the process of calculating knowledge exploration distance. Besides, this study showed that the proposed measure has significant relationships with patent-based indicators related to protection coverage, prior knowledge, and patent value.
Keywords
TECHNOLOGY; INNOVATION; IDENTIFICATION; EXPLOITATION; FIRMS; Knowledge exploration distance; Patent citation; Network embedding; Patent classification code
ISSN
1751-1577
URI
https://pubs.kist.re.kr/handle/201004/115179
DOI
10.1016/j.joi.2022.101286
Appears in Collections:
KIST Article > 2022
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