This paper suggests the disambiguation and standardization of patent applicants (DaSPA) model. The proposed method leverages patent applicant features for simple and effe...
Abstract:
Innovation in artificial intelligence and data science has sparked evolutions across numerous industries. Some companies are focusing on developing novel technologies to ...Show MoreMetadata
Abstract:
Innovation in artificial intelligence and data science has sparked evolutions across numerous industries. Some companies are focusing on developing novel technologies to seize a rapidly evolving market, while others are exploring new business models to keep pace. The former and latter are typically referred to as first movers and fast followers in the technology market and identifying them can offer insights into technology market trends. Patent analysis is a good approach to exploring first movers and fast followers. However, patent applicants are classified into different patterns based on the structure or type of a company, making it challenging to disambiguate and standardize patent applicants. Therefore, this study proposes a method to disambiguate and standardize patent applicants. We present a simple and effective data augmentation approach that can help understand patent applicant patterns. The proposed approach trains on the augmented data via the attention mechanism. Our experiments provide empirical evidence for the performance of the proposed method, which accurately classifies 96.6% of the augmented data. Moreover, statistical hypothesis testing validates that the output of the proposed method is consistent with the ground truth.
This paper suggests the disambiguation and standardization of patent applicants (DaSPA) model. The proposed method leverages patent applicant features for simple and effe...
Published in: IEEE Access ( Volume: 11)
Funding Agency:

Institute of Engineering Research, Korea University, Seoul, Republic of Korea
Juhyun Lee received the Ph.D. degree in industrial and management engineering from Korea University, Republic of Korea. He is currently a Research Professor with the Institute of Engineering Research, Korea University. His research interests include developing machine learning algorithms for unstructured data, such as text, signal, and image, and applying them to solve problems, such as predictive modeling, document class...Show More
Juhyun Lee received the Ph.D. degree in industrial and management engineering from Korea University, Republic of Korea. He is currently a Research Professor with the Institute of Engineering Research, Korea University. His research interests include developing machine learning algorithms for unstructured data, such as text, signal, and image, and applying them to solve problems, such as predictive modeling, document class...View more

Department of Data Science, Cheongju University, Cheongju-si, Republic of Korea
Sangsung Park received the Ph.D. degree in industrial engineering from Korea University. He is currently an Assistant Professor with the Department of Data Science, Cheongju University, Republic of Korea. His research interests include patent big data analysis, data mining and machine learning, technology management, and evaluation that combines various industrial engineering theories.
Sangsung Park received the Ph.D. degree in industrial engineering from Korea University. He is currently an Assistant Professor with the Department of Data Science, Cheongju University, Republic of Korea. His research interests include patent big data analysis, data mining and machine learning, technology management, and evaluation that combines various industrial engineering theories.View more

College of AI Convergence Engineering, Kangnam University, Youngin-si, Republic of Korea
Junseok Lee received the Ph.D. degree in industrial and management engineering from Korea University. He is currently an Assistant Professor with the College of AI Convergence Engineering, Kangnam University, Republic of Kora. His research interests include developing a machine learning algorithm for detecting abnormal manufacturing, such as fault classification, and applying the machine learning algorithm for technology ...Show More
Junseok Lee received the Ph.D. degree in industrial and management engineering from Korea University. He is currently an Assistant Professor with the College of AI Convergence Engineering, Kangnam University, Republic of Kora. His research interests include developing a machine learning algorithm for detecting abnormal manufacturing, such as fault classification, and applying the machine learning algorithm for technology ...View more

Institute of Engineering Research, Korea University, Seoul, Republic of Korea
Juhyun Lee received the Ph.D. degree in industrial and management engineering from Korea University, Republic of Korea. He is currently a Research Professor with the Institute of Engineering Research, Korea University. His research interests include developing machine learning algorithms for unstructured data, such as text, signal, and image, and applying them to solve problems, such as predictive modeling, document classification, and sentiment analysis.
Juhyun Lee received the Ph.D. degree in industrial and management engineering from Korea University, Republic of Korea. He is currently a Research Professor with the Institute of Engineering Research, Korea University. His research interests include developing machine learning algorithms for unstructured data, such as text, signal, and image, and applying them to solve problems, such as predictive modeling, document classification, and sentiment analysis.View more

Department of Data Science, Cheongju University, Cheongju-si, Republic of Korea
Sangsung Park received the Ph.D. degree in industrial engineering from Korea University. He is currently an Assistant Professor with the Department of Data Science, Cheongju University, Republic of Korea. His research interests include patent big data analysis, data mining and machine learning, technology management, and evaluation that combines various industrial engineering theories.
Sangsung Park received the Ph.D. degree in industrial engineering from Korea University. He is currently an Assistant Professor with the Department of Data Science, Cheongju University, Republic of Korea. His research interests include patent big data analysis, data mining and machine learning, technology management, and evaluation that combines various industrial engineering theories.View more

College of AI Convergence Engineering, Kangnam University, Youngin-si, Republic of Korea
Junseok Lee received the Ph.D. degree in industrial and management engineering from Korea University. He is currently an Assistant Professor with the College of AI Convergence Engineering, Kangnam University, Republic of Kora. His research interests include developing a machine learning algorithm for detecting abnormal manufacturing, such as fault classification, and applying the machine learning algorithm for technology management.
Junseok Lee received the Ph.D. degree in industrial and management engineering from Korea University. He is currently an Assistant Professor with the College of AI Convergence Engineering, Kangnam University, Republic of Kora. His research interests include developing a machine learning algorithm for detecting abnormal manufacturing, such as fault classification, and applying the machine learning algorithm for technology management.View more