Community evolution in patent networks: technological change and network dynamics

Abstract When studying patent data as a way to understand innovation and technological change, the conventional indicators might fall short, and categorizing technologies based on the existing classification systems used by patent authorities could cause inaccuracy and misclassification, as shown in...

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Main Authors: Yuan Gao, Zhen Zhu, Raja Kali, Massimo Riccaboni
Format: Article
Language:English
Published: SpringerOpen 2018-08-01
Series:Applied Network Science
Subjects:
Online Access:http://link.springer.com/article/10.1007/s41109-018-0090-3
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spelling doaj-8c95d3270c8d4d7d9bca28c9ea9ed0c62020-11-24T20:53:56ZengSpringerOpenApplied Network Science2364-82282018-08-013112310.1007/s41109-018-0090-3Community evolution in patent networks: technological change and network dynamicsYuan Gao0Zhen Zhu1Raja Kali2Massimo Riccaboni3IMT School for Advanced Studies LuccaDepartment of International Business & Economics, University of GreenwichDepartment of Economics, University of Arkansas, University of ArkansasIMT School for Advanced Studies LuccaAbstract When studying patent data as a way to understand innovation and technological change, the conventional indicators might fall short, and categorizing technologies based on the existing classification systems used by patent authorities could cause inaccuracy and misclassification, as shown in literature. Gao et al. (International Workshop on Complex Networks and their Applications, 2017) have established a method to analyze patent classes of similar technologies as network communities. In this paper, we adopt the stabilized Louvain method for network community detection to improve consistency and stability. Incorporating the overlapping community mapping algorithm, we also develop a new method to identify the central nodes based on the temporal evolution of the network structure and track the changes of communities over time. A case study of Germany’s patent data is used to demonstrate and verify the application of the method and the results. Compared to the non-network metrics and conventional network measures, we offer a heuristic approach with a dynamic view and more stable results.http://link.springer.com/article/10.1007/s41109-018-0090-3Technological changeTemporal networksPatent dataLouvain community detection methodOverlapping community mapping
collection DOAJ
language English
format Article
sources DOAJ
author Yuan Gao
Zhen Zhu
Raja Kali
Massimo Riccaboni
spellingShingle Yuan Gao
Zhen Zhu
Raja Kali
Massimo Riccaboni
Community evolution in patent networks: technological change and network dynamics
Applied Network Science
Technological change
Temporal networks
Patent data
Louvain community detection method
Overlapping community mapping
author_facet Yuan Gao
Zhen Zhu
Raja Kali
Massimo Riccaboni
author_sort Yuan Gao
title Community evolution in patent networks: technological change and network dynamics
title_short Community evolution in patent networks: technological change and network dynamics
title_full Community evolution in patent networks: technological change and network dynamics
title_fullStr Community evolution in patent networks: technological change and network dynamics
title_full_unstemmed Community evolution in patent networks: technological change and network dynamics
title_sort community evolution in patent networks: technological change and network dynamics
publisher SpringerOpen
series Applied Network Science
issn 2364-8228
publishDate 2018-08-01
description Abstract When studying patent data as a way to understand innovation and technological change, the conventional indicators might fall short, and categorizing technologies based on the existing classification systems used by patent authorities could cause inaccuracy and misclassification, as shown in literature. Gao et al. (International Workshop on Complex Networks and their Applications, 2017) have established a method to analyze patent classes of similar technologies as network communities. In this paper, we adopt the stabilized Louvain method for network community detection to improve consistency and stability. Incorporating the overlapping community mapping algorithm, we also develop a new method to identify the central nodes based on the temporal evolution of the network structure and track the changes of communities over time. A case study of Germany’s patent data is used to demonstrate and verify the application of the method and the results. Compared to the non-network metrics and conventional network measures, we offer a heuristic approach with a dynamic view and more stable results.
topic Technological change
Temporal networks
Patent data
Louvain community detection method
Overlapping community mapping
url http://link.springer.com/article/10.1007/s41109-018-0090-3
work_keys_str_mv AT yuangao communityevolutioninpatentnetworkstechnologicalchangeandnetworkdynamics
AT zhenzhu communityevolutioninpatentnetworkstechnologicalchangeandnetworkdynamics
AT rajakali communityevolutioninpatentnetworkstechnologicalchangeandnetworkdynamics
AT massimoriccaboni communityevolutioninpatentnetworkstechnologicalchangeandnetworkdynamics
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