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KNOWLEDGE RECONSTRUCTION AND JUSTIFICATION FOR REGIONAL VITALIZATION

KNOWLEDGE RECONSTRUCTION AND JUSTIFICATION FOR REGIONAL VITALIZATION
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摘要 This paper considers the regional vitalization problem and discusses the methodology to create regional vitalization plans, which include activating the local economy, enriching people's lives, and activating the feelings of people, by new initiatives. Activily underlying the methodology is the experience of implementing several actual projects with the local residents, and theory underlying the methodology is the knowledge construction and justification theory based on knowledge management and systems thinking. Introducing an actual vitalization project as an illustrative example, the paper proposes a knowledge reconstruction and justification procedure for regional vitalization. This paper considers the regional vitalization problem and discusses the methodology to create regional vitalization plans, which include activating the local economy, enriching people's lives, and activating the feelings of people, by new initiatives. Activily underlying the methodology is the experience of implementing several actual projects with the local residents, and theory underlying the methodology is the knowledge construction and justification theory based on knowledge management and systems thinking. Introducing an actual vitalization project as an illustrative example, the paper proposes a knowledge reconstruction and justification procedure for regional vitalization.
出处 《Journal of Systems Science and Systems Engineering》 SCIE EI CSCD 2013年第4期457-468,共12页 系统科学与系统工程学报(英文版)
基金 supported by JSPS KAKENHI Grant Number 25240049
关键词 Knowledge reconstruction knowledge justification systems thinking regional vitalization Knowledge reconstruction, knowledge justification, systems thinking, regional vitalization
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