Title
Technology Forecasting Using Matrix Map And Patent Clustering
Abstract
Purpose - The purpose of this paper is to propose an objective method for technology forecasting (TF). For the construction of the proposed model, the paper aims to consider new approaches to patent mapping and clustering. In addition, the paper aims to introduce a matrix map and K-medoids clustering based on support vector clustering (KM-SVC) for vacant TF.Design/methodology/approach - TF is an important research and development (R&D) policy issue for both companies and government. Vacant TF is one of the key technological planning methods for improving the competitive power of firms and governments. In general, a forecasting process is facilitated subjectively based on the researcher's knowledge, resulting in unstable TF performance. In this paper, the authors forecast the vacant technology areas in a given technology field by analyzing patent documents and employing the proposed matrix map and KM-SVC to forecast vacant technology areas in the management of technology (MOT).Findings - The paper examines the vacant technology areas for MOT patent documents from the USA, Europe, and China by comparing these countries in terms of technology trends in MOT and identifying the vacant technology areas by country. The matrix map provides broad vacant technology areas, whereas KM-SVC provides more specific vacant technology areas. Thus, the paper identifies the vacant technology areas of a given technology field by using the results for both the matrix map and KM-SVC.Practical implications - The authors use patent documents as objective data to develop a model for vacant TF. The paper attempts to objectively forecast the vacant technology areas in a given technology field. To verify the performance of the matrix map and KM-SVC, the authors conduct an experiment using patent documents related to MOT (the given technology field in this paper). The results suggest that the proposed forecasting model can be applied to diverse technology fields, including R&D management, technology marketing, and intellectual property management.Originality/value - Most TF models are based on qualitative and subjective methods such as Delphi. That is, there are few objective models. In this regard, this paper proposes a quantitative and objective IF model that employs patent documents as objective data and a matrix map and KM-SVC as quantitative methods.
Year
DOI
Venue
2012
10.1108/02635571211232352
INDUSTRIAL MANAGEMENT & DATA SYSTEMS
Keywords
Field
DocType
Vacant technology forecasting, Matrix map, Patent clustering, K-medoids clustering, Support vector clustering, Statistical forecasting, Research and development, United States of America, Europe, China
Technology forecasting,Data mining,Matrix (mathematics),Engineering,Objective method,Cluster analysis,Patent visualisation,Support vector clustering,Marketing,Technology management,Government
Journal
Volume
Issue
ISSN
112
5-6
0263-5577
Citations 
PageRank 
References 
16
0.93
7
Authors
3
Name
Order
Citations
PageRank
Sung-Hae Jun19511.79
Sang-Sung Park2807.25
Dong-Sik Jang319613.81