• 제목/요약/키워드: Fuzzy Reasoning Networks

검색결과 53건 처리시간 0.018초

하이브리드 데이터마이닝 메커니즘에 기반한 전문가 지식 추출 (Extraction of Expert Knowledge Based on Hybrid Data Mining Mechanism)

  • 김진성
    • 한국지능시스템학회논문지
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    • 제14권6호
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    • pp.764-770
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    • 2004
  • This paper presents a hybrid data mining mechanism to extract expert knowledge from historical data and extend expert systems' reasoning capabilities by using fuzzy neural network (FNN)-based learning & rule extraction algorithm. Our hybrid data mining mechanism is based on association rule extraction mechanism, FNN learning and fuzzy rule extraction algorithm. Most of traditional data mining mechanisms are depended ()n association rule extraction algorithm. However, the basic association rule-based data mining systems has not the learning ability. Therefore, there is a problem to extend the knowledge base adaptively. In addition, sequential patterns of association rules can`t represent the complicate fuzzy logic in real-world. To resolve these problems, we suggest the hybrid data mining mechanism based on association rule-based data mining, FNN learning and fuzzy rule extraction algorithm. Our hybrid data mining mechanism is consisted of four phases. First, we use general association rule mining mechanism to develop an initial rule base. Then, in the second phase, we adopt the FNN learning algorithm to extract the hidden relationships or patterns embedded in the historical data. Third, after the learning of FNN, the fuzzy rule extraction algorithm will be used to extract the implicit knowledge from the FNN. Fourth, we will combine the association rules (initial rule base) and fuzzy rules. Implementation results show that the hybrid data mining mechanism can reflect both association rule-based knowledge extraction and FNN-based knowledge extension.

ANFIS 접근방식에 의한 미래 트랜드 충격 분석 (Future Trend Impact Analysis Based on Adaptive Neuro-Fuzzy Inference System)

  • 김용길;문경일;최세일
    • 한국전자통신학회논문지
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    • 제10권4호
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    • pp.499-505
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    • 2015
  • TIA(: Trend Impact Analysis)는 발생될 가능성이 있는 미래의 예기치 못한 사건들을 식별하고 분석하기 위한 고급 예측 도구에 속한다. 적응적인 뉴로-퍼지 추론 시스템은 인공신경망의 일종으로 신경망과 퍼지 로직 원리를 모두 통합하고 보편적 추정되는 것으로 간주한다. 본 논문에서는 적응적인 뉴로-퍼지 추론 시스템을 사용하여 예기치 못한 사건에 관한 심각성의 정도를 추론하고 이를 시간의 함수로서 도입하여 예기치 못한 사건들의 출현 확률에 관해 보다 타당한 추정치를 얻는데 있다. 이러한 접근방식에 대한 배후 개념은 예기치 못한 사건이 갑자기 출현되는 것이 아니라 관련 사건이 가지고 있는 속성 값에 대한 건드림 혹은 변화가 기존 속성 값의 한계를 벗어나 마치 새로운 사건인 것처럼 등장할 수 있음을 전제로 하고 있다. ANFIS 접근 방식은 이러한 사건을 식별해서 예기치 못한 사건의 심각성의 정도를 추론하는데 매우 적절한 방식이라 할 수 있다. 속성들의 변화 값들은 확률적인 동적 모델 및 Monte-Carlo 방법을 사용하여 얻을 수 있다. 제안된 모델에 관한 타당성은 강 유역의 예상치 못한 가뭄에 따른 충격 추세 곡선을 기존 연구 결과와의 비교를 통해 나타낸다.

A Comparative Study of Estimation by Analogy using Data Mining Techniques

  • Nagpal, Geeta;Uddin, Moin;Kaur, Arvinder
    • Journal of Information Processing Systems
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    • 제8권4호
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    • pp.621-652
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    • 2012
  • Software Estimations provide an inclusive set of directives for software project developers, project managers, and the management in order to produce more realistic estimates based on deficient, uncertain, and noisy data. A range of estimation models are being explored in the industry, as well as in academia, for research purposes but choosing the best model is quite intricate. Estimation by Analogy (EbA) is a form of case based reasoning, which uses fuzzy logic, grey system theory or machine-learning techniques, etc. for optimization. This research compares the estimation accuracy of some conventional data mining models with a hybrid model. Different data mining models are under consideration, including linear regression models like the ordinary least square and ridge regression, and nonlinear models like neural networks, support vector machines, and multivariate adaptive regression splines, etc. A precise and comprehensible predictive model based on the integration of GRA and regression has been introduced and compared. Empirical results have shown that regression when used with GRA gives outstanding results; indicating that the methodology has great potential and can be used as a candidate approach for software effort estimation.