A Supervised Requirement-oriented Patent Classification Scheme Based on the Combination of Metadata and Citation Information

Patent classification systems are applied extensively in innovative analysis. Existing patent classification schemes are either technology-dependent or TRIZ-based. The former ones, such as the IPC and UPC, are normally developed by different patent offices in the world mainly for the purpose of pate...

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Main Authors: Fujin Zhu, Xuefeng Wang, Donghua Zhu, Yuqin Liu
Format: Article
Language:English
Published: Atlantis Press 2015-06-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/25868611.pdf
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spelling doaj-2f256f93a3f94154af020f0094093c072020-11-25T00:16:06ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832015-06-018310.1080/18756891.2015.1023588A Supervised Requirement-oriented Patent Classification Scheme Based on the Combination of Metadata and Citation InformationFujin ZhuXuefeng WangDonghua ZhuYuqin LiuPatent classification systems are applied extensively in innovative analysis. Existing patent classification schemes are either technology-dependent or TRIZ-based. The former ones, such as the IPC and UPC, are normally developed by different patent offices in the world mainly for the purpose of patentability examination and patent retrieval, while the latter is for TRIZ users and analysts with no more than 40 categories. These static classifications are too complex and general to meet the in-depth patent classification requirements of a specific technology area or organization. To tackle these drawbacks, in this paper, we propose an automatic requirement-oriented patent classification scheme as a complementary method using supervised machine learning techniques to classify patent dataset into a user-defined taxonomy. The requirement-oriented patent taxonomy can be technology-dependent, application-dependent or a mixture of both tailored to specific business objectives. It is more comprehensible and adaptable to various patent management requirements. Through a set of experiments on a collection of 14,414 patents in a case study in the technology area of system on a chip (SoC), we recommend using the combination of the metadata and citation information as the document representation for the new method since it can obtain relatively high classification accuracy with a dramatically simplified document preprocessing process.https://www.atlantis-press.com/article/25868611.pdfPatent classificationRequirement-oriented taxonomyDocument representationMachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Fujin Zhu
Xuefeng Wang
Donghua Zhu
Yuqin Liu
spellingShingle Fujin Zhu
Xuefeng Wang
Donghua Zhu
Yuqin Liu
A Supervised Requirement-oriented Patent Classification Scheme Based on the Combination of Metadata and Citation Information
International Journal of Computational Intelligence Systems
Patent classification
Requirement-oriented taxonomy
Document representation
Machine learning
author_facet Fujin Zhu
Xuefeng Wang
Donghua Zhu
Yuqin Liu
author_sort Fujin Zhu
title A Supervised Requirement-oriented Patent Classification Scheme Based on the Combination of Metadata and Citation Information
title_short A Supervised Requirement-oriented Patent Classification Scheme Based on the Combination of Metadata and Citation Information
title_full A Supervised Requirement-oriented Patent Classification Scheme Based on the Combination of Metadata and Citation Information
title_fullStr A Supervised Requirement-oriented Patent Classification Scheme Based on the Combination of Metadata and Citation Information
title_full_unstemmed A Supervised Requirement-oriented Patent Classification Scheme Based on the Combination of Metadata and Citation Information
title_sort supervised requirement-oriented patent classification scheme based on the combination of metadata and citation information
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2015-06-01
description Patent classification systems are applied extensively in innovative analysis. Existing patent classification schemes are either technology-dependent or TRIZ-based. The former ones, such as the IPC and UPC, are normally developed by different patent offices in the world mainly for the purpose of patentability examination and patent retrieval, while the latter is for TRIZ users and analysts with no more than 40 categories. These static classifications are too complex and general to meet the in-depth patent classification requirements of a specific technology area or organization. To tackle these drawbacks, in this paper, we propose an automatic requirement-oriented patent classification scheme as a complementary method using supervised machine learning techniques to classify patent dataset into a user-defined taxonomy. The requirement-oriented patent taxonomy can be technology-dependent, application-dependent or a mixture of both tailored to specific business objectives. It is more comprehensible and adaptable to various patent management requirements. Through a set of experiments on a collection of 14,414 patents in a case study in the technology area of system on a chip (SoC), we recommend using the combination of the metadata and citation information as the document representation for the new method since it can obtain relatively high classification accuracy with a dramatically simplified document preprocessing process.
topic Patent classification
Requirement-oriented taxonomy
Document representation
Machine learning
url https://www.atlantis-press.com/article/25868611.pdf
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