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    다국어 초록 (Multilingual Abstract) kakao i 다국어 번역

    Knowledge map is widely used to represent knowledge in many domains. This paper presents a method of integrating the national R&D data and assists of users to navigate the integrated data via using a knowledge map service. The knowledge map service is built by using a lightweight ontology and a topic modeling method. The national R&D data is integrated with the research project as its center, i.e., the other R&D data such as research papers, patents, and reports are connected with the research project as its outputs. The lightweight ontology is used to represent the simple relationships between the integrated data such as project-outputs relationships, document-author relationships, and document-topic relationships. Knowledge map enables us to infer further relationships such as co-author and co-topic relationships. To extract the relationships between the integrated data, a Relational Data-to-Triples transformer is implemented. Also, a topic modeling approach is introduced to extract the document-topic relationships. A triple store is used to manage and process the ontology data while preserving the network characteristics of knowledge map service.
    Knowledge map can be divided into two types: one is a knowledge map used in the area of knowledge management to store, manage and process the organizations’ data as knowledge, the other is a knowledge map for analyzing and representing knowledge extracted from the science & technology documents. This research focuses on the latter one. In this research, a knowledge map service is introduced for integrating the national R&D data obtained from National Digital Science Library (NDSL) and National Science & Technology Information Service (NTIS), which are two major repository and service of national R&D data servicing in Korea. A lightweight ontology is used to design and build a knowledge map. Using the lightweight ontology enables us to represent and process knowledge as a simple network and it fits in with the knowledge navigation and visualization characteristics of the knowledge map. The lightweight ontology is used to represent the entities and their relationships in the knowledge maps, and an ontology repository is created to store and process the ontology. In the ontologies, researchers are implicitly connected by the national R&D data as the author relationships and the performer relationships. A knowledge map for displaying researchers’ network is created, and the researchers’ network is created by the co-authoring relationships of the national R&D documents and the co-participation relationships of the national R&D projects.
    To sum up, a knowledge map-service system based on topic modeling and ontology is introduced for processing knowledge about the national R&D data such as research projects, papers, patent, project reports, and Global Trends Briefing (GTB) data. The system has goals 1) to integrate the national R&D data obtained from NDSL and NTIS, 2) to provide a semantic & topic based information search on the integrated data, and 3) to provide a knowledge map services based on the semantic analysis and knowledge processing. The S&T information such as research papers, research reports, patents and GTB are daily updated from NDSL, and the R&D projects information including their participants and output information are updated from the NTIS. The S&T information and the national R&D information are obtained and integrated to the integrated database. Knowledge base is constructed by transforming the relational data into triples referencing R&D ontology. In addition, a topic modeling method is employed to extract the relationships between the S&T documents and topic keyword/s representing the documents. The topic modeling approach enables us to extract the relationships and topic keyword/s based on the semantics, not based on the simple keyword/s. Lastly, we show an experiment on the const
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    Knowledge map is widely used to represent knowledge in many domains. This paper presents a method of integrating the national R&D data and assists of users to navigate the integrated data via using a knowledge map service. The knowledge map service is...

    Knowledge map is widely used to represent knowledge in many domains. This paper presents a method of integrating the national R&D data and assists of users to navigate the integrated data via using a knowledge map service. The knowledge map service is built by using a lightweight ontology and a topic modeling method. The national R&D data is integrated with the research project as its center, i.e., the other R&D data such as research papers, patents, and reports are connected with the research project as its outputs. The lightweight ontology is used to represent the simple relationships between the integrated data such as project-outputs relationships, document-author relationships, and document-topic relationships. Knowledge map enables us to infer further relationships such as co-author and co-topic relationships. To extract the relationships between the integrated data, a Relational Data-to-Triples transformer is implemented. Also, a topic modeling approach is introduced to extract the document-topic relationships. A triple store is used to manage and process the ontology data while preserving the network characteristics of knowledge map service.
    Knowledge map can be divided into two types: one is a knowledge map used in the area of knowledge management to store, manage and process the organizations’ data as knowledge, the other is a knowledge map for analyzing and representing knowledge extracted from the science & technology documents. This research focuses on the latter one. In this research, a knowledge map service is introduced for integrating the national R&D data obtained from National Digital Science Library (NDSL) and National Science & Technology Information Service (NTIS), which are two major repository and service of national R&D data servicing in Korea. A lightweight ontology is used to design and build a knowledge map. Using the lightweight ontology enables us to represent and process knowledge as a simple network and it fits in with the knowledge navigation and visualization characteristics of the knowledge map. The lightweight ontology is used to represent the entities and their relationships in the knowledge maps, and an ontology repository is created to store and process the ontology. In the ontologies, researchers are implicitly connected by the national R&D data as the author relationships and the performer relationships. A knowledge map for displaying researchers’ network is created, and the researchers’ network is created by the co-authoring relationships of the national R&D documents and the co-participation relationships of the national R&D projects.
    To sum up, a knowledge map-service system based on topic modeling and ontology is introduced for processing knowledge about the national R&D data such as research projects, papers, patent, project reports, and Global Trends Briefing (GTB) data. The system has goals 1) to integrate the national R&D data obtained from NDSL and NTIS, 2) to provide a semantic & topic based information search on the integrated data, and 3) to provide a knowledge map services based on the semantic analysis and knowledge processing. The S&T information such as research papers, research reports, patents and GTB are daily updated from NDSL, and the R&D projects information including their participants and output information are updated from the NTIS. The S&T information and the national R&D information are obtained and integrated to the integrated database. Knowledge base is constructed by transforming the relational data into triples referencing R&D ontology. In addition, a topic modeling method is employed to extract the relationships between the S&T documents and topic keyword/s representing the documents. The topic modeling approach enables us to extract the relationships and topic keyword/s based on the semantics, not based on the simple keyword/s. Lastly, we show an experiment on the const

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    참고문헌 (Reference)

    1 Klavans, R., "Toward a consensus map of science" 60 (60): 455-476, 2009

    2 Prud'hommeaux, E., "SPARQL Query Language for RDF"

    3 W3C RDF Working Group, "Resource Description Framework (RDF) 1.1"

    4 Brickley, D., "RDF Schema 1.1"

    5 Blei, D. M, "Probabilistic topic models" 55 (55): 77-84, 2012

    6 Hofmann, T., "Probabilistic latent semantic indexing" 50-57, 1999

    7 Morbach, J., "OntoCAPE—A (re) usable ontology for computer-aided process engineering" 33 (33): 1546-1556, 2009

    8 Ahmad, M. N., "Managing ontologies: a comparative study of ontology servers" 63 : 13-22, 2007

    9 Eppler, M. J., "Making knowledge visible through intranet knowledge maps: concepts, elements, cases" 9-18, 2001

    10 Blei, D. M, "Latent dirichlet allocation" 3 : 993-1022, 2003

    1 Klavans, R., "Toward a consensus map of science" 60 (60): 455-476, 2009

    2 Prud'hommeaux, E., "SPARQL Query Language for RDF"

    3 W3C RDF Working Group, "Resource Description Framework (RDF) 1.1"

    4 Brickley, D., "RDF Schema 1.1"

    5 Blei, D. M, "Probabilistic topic models" 55 (55): 77-84, 2012

    6 Hofmann, T., "Probabilistic latent semantic indexing" 50-57, 1999

    7 Morbach, J., "OntoCAPE—A (re) usable ontology for computer-aided process engineering" 33 (33): 1546-1556, 2009

    8 Ahmad, M. N., "Managing ontologies: a comparative study of ontology servers" 63 : 13-22, 2007

    9 Eppler, M. J., "Making knowledge visible through intranet knowledge maps: concepts, elements, cases" 9-18, 2001

    10 Blei, D. M, "Latent dirichlet allocation" 3 : 993-1022, 2003

    11 Howard, R. A, "Knowledge maps" 35 (35): 903-922, 1989

    12 Businska, L., "Information Systems Development" Springer 613-627, 2013

    13 Rao, L., "Building ontology based knowledge maps to assist business process re-engineering" 52 (52): 577-589, 2012

    14 Leydesdorff, L., "A global map of science based on the ISI subject categories" 60 (60): 348-362, 2009

    15 Kang, I., "A framework for designing a workflow-based knowledge map" 9 (9): 281-294, 2003

    16 McCagg, E. C, "A convergent paradigm for examining knowledge mapping as a learning strategy" 84 (84): 317-324, 1991

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    학술지 이력

    학술지 이력
    연월일 이력구분 이력상세 등재구분
    2027 평가 재인증평가 신청대상 (재인증)
    2021-01-01 등재 등재학술지 유지 (재인증) KCI등재
    2018-01-01 등재 등재학술지 유지 (등재유지) KCI등재
    2015-03-25 학회명변경 영문명 : 미등록 -> Korea Intelligent Information Systems Society KCI등재
    2015-03-17 학술지명변경 외국어명 : 미등록 -> Journal of Intelligence and Information Systems KCI등재
    2015-01-01 등재 등재학술지 유지 (등재유지) KCI등재
    2011-01-01 등재 등재학술지 유지 (등재유지) KCI등재
    2009-01-01 등재 등재학술지 유지 (등재유지) KCI등재
    2008-02-11 학술지명변경 한글명 : 한국지능정보시스템학회 논문지 -> 지능정보연구 KCI등재
    2007-01-01 등재 등재학술지 유지 (등재유지) KCI등재
    2004-01-01 등재 등재학술지 선정 (등재후보2차) KCI등재
    2003-01-01 등재 등재후보 1차 PASS (등재후보1차) KCI등재후보
    2001-07-01 등재 등재후보학술지 선정 (신규평가) KCI등재후보
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    학술지 인용정보

    학술지 인용정보
    기준연도 WOS-KCI 통합IF(2년) KCIF(2년) KCIF(3년)
    2016 1.51 1.51 1.99
    KCIF(4년) KCIF(5년) 중심성지수(3년) 즉시성지수
    1.78 1.54 2.674 0.38
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