• 제목/요약/키워드: Process-based knowledge map

검색결과 82건 처리시간 0.026초

데이터 마이닝과 퍼지인식도 기반의 인과관계 지식베이스 구축에 관한 연구 (A Study on the Development of Causal Knowledge Base Based on Data Mining and Fuzzy Cognitive Map)

  • Kim, Jin-Sung
    • 한국지능시스템학회:학술대회논문집
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    • 한국퍼지및지능시스템학회 2003년도 춘계 학술대회 학술발표 논문집
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    • pp.247-250
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    • 2003
  • Due to the increasing use of very large databases, mining useful information and implicit knowledge from databases is evolving. However, most conventional data mining algorithms identify the relationship among features using binary values (TRUE/FALSE or 0/1) and find simple If-THEN rules at a single concept level. Therefore, implicit knowledge and causal relationships among features are commonly seen in real-world database and applications. In this paper, we thus introduce the mechanism of mining fuzzy association rules and constructing causal knowledge base form database. Acausal knowledge base construction algorithm based on Fuzzy Cognitive Map(FCM) and Srikant and Agrawal's association rule extraction method were proposed for extracting implicit causal knowledge from database. Fuzzy association rules are well suited for the thinking of human subjects and will help to increase the flexibility for supporting users in making decisions or designing the fuzzy systems. It integrates fuzzy set concept and causal knowledge-based data mining technologies to achieve this purpose. The proposed mechanism consists of three phases: First, adaptation of the fuzzy membership function to the database. Second, extraction of the fuzzy association rules using fuzzy input values. Third, building the causal knowledge base. A credit example is presented to illustrate a detailed process for finding the fuzzy association rules from a specified database, demonstration the effectiveness of the proposed algorithm.

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Ontology-Based Multi-level Knowledge Framework for a Knowledge Management System for Discrete-Product Development

  • Lee, Jae-Hyun;Suh, Hyo-Won
    • International Journal of CAD/CAM
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    • 제5권1호
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    • pp.99-109
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    • 2005
  • This paper introduces an approach to an ontology-based multi-level knowledge framework for a knowledge management system for discrete-product development. Participants in a product life cycle want to share comprehensive product knowledge without any ambiguity and heterogeneity. However, previous knowledge management approaches are limited in providing those aspects: therefore, we suggest an ontology-based multi-level knowledge framework (OBMKF). The bottom level, the axiom, specifies the semantics of concepts and relations of knowledge so ambiguity can be alleviated. The middle level is a product development knowledge map; it defines the concepts and the relations of the product domain knowledge and guides the engineer to process their engineering decisions. The middle level is then classified further into more detailed levels, such as generic product level, specific product level, product version level, and manufactured item level, according to the various viewpoints. The top level is specialized knowledge for a specific domain that gives the solution of a specific task or problem. It is classified into three knowledge types: expert knowledge, engineering function knowledge, and data-analysis-based knowledge. This proposed framework is based on ontology to accommodate a comprehensive range of knowledge and is represented with first-order logic to maintain a uniform representation.

지식 간 내용적 연관성을 표현하는 키워드 기반 네트워크형 지식지도 개발 (Keyword-based networked knowledge map expressing content relevance between knowledge)

  • 유기동
    • 지능정보연구
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    • 제24권3호
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    • pp.119-134
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    • 2018
  • 저장 및 관리하는 지식의 분류체계로서의 의미를 갖는 지식지도는, 문제해결을 위하여 지식을 조회 및 선택하는 사용자의 활동을 지원하고 보완할 수 있는 구조를 갖추어야 한다. 계층형 구조를 갖는 기존의 지식지도는, 관리하는 지식을 체계적으로 정리하는 데에는 이점이 있으나, 지식 사용자가 갖는 인지 및 활용의 논리를 반영하지 못할 뿐만 아니라 지식을 조회 및 추출하는 사용자의 활동을 지원하지 못한다. 본 연구는, 내용적 관련성을 갖는 연관지식을 연쇄적으로 조회 및 추출하는 사용자의 지식활용 패턴을 반영하는, 키워드 기반 네트워크형 지식지도를 구축하는 방법론을 제시한다. 즉, 지식 간 내용적 연관성을 파악하기 위하여 키워드를 추출하고 공통된 키워드를 갖는 지식 간 링크를 해당 키워드를 이용하여 정의한다. 키워드는 해당 지식의 내용을 대변하므로, 키워드를 기반으로 정의된 링크는 내용적으로 관련성이 있는 지식 간에 형성되며, 이를 종합하면 내용적 연관성을 지식 간의 네트워크, 즉 네트워크형 지식지도가 완성된다. 제시된 방법론의 적용 타당성을 검토하기 위해 50개의 연구논문을 이용하여 이들 간의 내용적 연관성을 표현하는 네트워크형 지식지도를 구현하였으며, 검토 결과 만족할만한 수준의 정밀도와 재현율을 보였다.

향상된 세일리언시 맵과 슈퍼픽셀 기반의 효과적인 영상 분할 (Efficient Image Segmentation Algorithm Based on Improved Saliency Map and Superpixel)

  • 남재현;김병규
    • 한국멀티미디어학회논문지
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    • 제19권7호
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    • pp.1116-1126
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    • 2016
  • Image segmentation is widely used in the pre-processing stage of image analysis and, therefore, the accuracy of image segmentation is important for performance of an image-based analysis system. An efficient image segmentation method is proposed, including a filtering process for super-pixels, improved saliency map information, and a merge process. The proposed algorithm removes areas that are not equal or of small size based on comparison of the area of smoothed superpixels in order to maintain generation of a similar size super pixel area. In addition, application of a bilateral filter to an existing saliency map that represents human visual attention allows improvement of separation between objects and background. Finally, a segmented result is obtained based on the suggested merging process without any prior knowledge or information. Performance of the proposed algorithm is verified experimentally.

키워드 네트워크 분석을 통한 지식구조 변화 연구 : 비즈니스 모델 연구를 중심으로 (A Study on the Change of Knowledge Structure through Keyword Network Analysis : Focus on Business Model Research)

  • 류재홍;최진호
    • 한국IT서비스학회지
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    • 제17권2호
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    • pp.143-163
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    • 2018
  • The business models has a great impact on the successful management of enterprises. Business environment has been shifting from industrial economy to knowledge-based economy. Enterprises go through numerous trials for successful management in the changing environment. Along with trial tests, research areas have been growing simultaneously. Although many researches have been conducted with regard to business models, it is very insufficient to systematically analyze the knowledge flow of research. Accordingly, successive researchers who want to study the business model may find it difficult to establish the orientation of future application research based on understanding the process of changing the knowledge structure that have accumulated so far. This study is intended to determine the current state of the business model research and to understand the process of knowledge structure changes in keywords that appear in 2,667 business model articles in the SCOPUS database. Identifying the knowledge structure has been completed through social network analysis, a methodology based on the 'relationship', and the changes in the knowledge structure were identified by classifying them into four different periods. The analysis showed that, first, the number of business model co-author increases over time with the need for academic diversity. Second, the 'innovation' keyword has the biggest center in the network, and over time, the lower-rank keyword which was in the former period has emerged as the top-rank keyword. Third, the cohesiveness group decreased from 12 before 2000 to 5 in 2015 and also the modularity decreased as well. Finally, examining characteristics of study area through a cognitive map showed that the relationships between domains increased gradually over time. The study has provided a systematic basis for understanding the current state of the business model research and the process of changing knowledge structure. In addition, considering that no research has ever systematically analyzed the knowledge structure accumulated by individual researches, it is considered as a significant study.

Fuzzy Causal Knowledge-Based Expert System

  • Lee, Kun-Chang;Kim, Hyun-Soo;Song, Yong-Uk
    • 한국지능시스템학회:학술대회논문집
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    • 한국퍼지및지능시스템학회 1998년도 추계학술대회 학술발표 논문집
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    • pp.461-467
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    • 1998
  • Although many methods of knowledge acquisition has been developed in the expert systems field, such a need for causal knowledge acquisition has not been stressed relatively. In this respect, this paper is aimed at suggesting a causal knowledge acquisition process, and then investigate the causal knowledge-based inference process. A vehicle for causal knowledge acquisition is FCM (Fuzzy Cognitive Map), a fuzzy signed digraph with causal relationships between concept variables found in a specific application domain. Although FCM has a plenty of generic properties for causal knowledge acquisition, it needs some theoretical improvement for acquiring a more refined causal knowledge. In this sense, we refine fuzzy implications of FCM by proposing fuzzy implications of FCM by proposing fuzzy causal relationship and fuzzy partially causal relationship. To test the validity of our proposed approcach, we prototyped a causal knowledge-driven inference engine named CAKES and then experime ted with some illustrative examples.

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건설산업 지식경영의 전략적 성과측정 방법 연구 (Strategic Performance Measurement of Knowledge Management in Construction Industry)

  • 고성관;김재준;백종건;김대호
    • 한국건설관리학회논문집
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    • 제2권3호
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    • pp.45-57
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    • 2001
  • 지식경영은 IMF 이후 패러다임의 전환을 필요로 하는 건설업계에 새로운 경영전략으로 대두되면서 많은 업체들이 도입 빛 준비중에 있다. 그러나 현재 건설업계의 지식경영 추진방향은 지식의 획득/공유에 중점을 두고 있어, 지식경영의 실질 목적인 가치창출을 통한 이윤증대에는 기여를 못하고 있다. 이는 지식경영 도입 및 수행 시 명확한 전략 프로세스와 이를 구현하는 성과측정 방범의 미비에 따른 것이다. 본 연구는 국내 건설기업의 지식경영 사례 분석을 통하여 성과폭정 부재라는 문제점을 인식하고, 대안으로서 BSC 방법론을 선정했다. 사례적용을 통해 지식지도를 도출하여 건설산업의 핵심업무지식을 분류, 파악한 후 핵심 성과지표를 개발, 최종적으로 건설산업 특성을 반영한 지식 경영의 전략적 성과측정 모델 개발을 목표로 한다.

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Knowledge Extractions, Visualizations, and Inference from the big Data in Healthcare and Medical

  • Kim, Jin Sung
    • 한국지능시스템학회논문지
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    • 제23권5호
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    • pp.400-405
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    • 2013
  • The purpose of this study is to develop a composite platform for knowledge extractions, visualizations, and inference. Generally, the big data sets were frequently used in the healthcare and medical area. To help the knowledge managers/users working in the field, this study is focused on knowledge management (KM) based on Data Mining (DM), Knowledge Distribution Map (KDM), Decision Tree (DT), RDBMS, and SQL-inference. The proposed mechanism is composed of five key processes. Firstly, in Knowledge Parsing, it extracts logical rules from a big data set by using DM technology. Then it transforms the rules into RDB tables. Secondly, through Knowledge Maintenance, it refines and manages the knowledge to be ready for the computing of knowledge distributions. Thirdly, in Knowledge Distribution process, we can see the knowledge distributions by using the DT mechanism.Fourthly, in Knowledge Hierarchy, the platform shows the hierarchy of the knowledge. Finally, in Inference, it deduce the conclusions by using the given facts and data.This approach presents the advantages of diversity in knowledge representations and inference to improve the quality of computer-based medical diagnosis.

A Causal Knowledge-Driven Inference Engine for Expert System

  • 이건찬;김현수
    • 한국지능시스템학회논문지
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    • 제8권6호
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    • pp.70-77
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    • 1998
  • Although many methods of knowledge acquisition has been developed in the exper systems field, such a need form causal knowledge acquisition hs not been stressed relatively. In this respect, this paper is aimed at suggesting a causal knowledge acquisition process, and then investigate the causal knowledge-based inference process. A vehicle for causal knowledge acquisition is FCM (Fuzzy Cognitive Map), a fuzzy signed digraph with causal relationships between concept variables found in a specific application domain. Although FCM has a plenty of generic properties for causal knowledge acquisition, it needs some theoretical improvement for acquiring a more refined causal knowledge. In this sense, we refine fuzzy implications of FCM by proposing fuzzy causal relationship and fuzzy partially causal relationship. To test the validity of our proposed approach, we prototyped a causal knowledge-driven inference engine named CAKES and then experimented with some illustrative examples.

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PLM 지원을 위한 온톨로지 기반 지식 프레임워크 (Ontology-Based Knowledge Framework for Product Life cycle Management)

  • 이재현;서효원
    • 한국정밀공학회지
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    • 제23권3호
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    • pp.22-31
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    • 2006
  • This paper introduces an approach to an ontology-based knowledge framework for product life cycle management (PLM). Participants in a product life cycle want to share comprehensive product knowledge without any ambiguity and heterogeneity. However, previous knowledge management approaches are limited in providing those aspects. Therefore, we suggest an ontology-based knowledge framework including knowledge maps, axioms and specific knowledge far domain. The bottom level, the axiom, specifies the semantics of concepts and relations of knowledge so that ambiguity of the semantics can be alleviated. The middle level is a product development knowledge map; it defines the concepts and the relations of the product domain common knowledge and guides engineers to process their engineering decisions. The middle level is then classified further into more detailed levels, such as generic product level, specific product level, product version level, and product item level for PLM. The top level is specialized knowledge fer a specific domain that gives the solution of a specific task or problem. It is classified into three knowledge types: expert knowledge, engineering function knowledge, and data-analysis-based knowledge. This proposed framework is based on ontology to accommodate a comprehensive range of unambiguous knowledge for PLM and is represented with first-order logic to maintain a uniform representation.