• 제목/요약/키워드: Closed Frequent Itemsets

검색결과 4건 처리시간 0.02초

트랜잭션 연결 구조를 이용한 빈발 Closed 항목집합 마이닝 알고리즘 (An Efficient Algorithm for Mining Frequent Closed Itemsets Using Transaction Link Structure)

  • 한경록;김재련
    • 대한산업공학회지
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    • 제32권3호
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    • pp.242-252
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    • 2006
  • Data mining is the exploration and analysis of huge amounts of data to discover meaningful patterns. One of the most important data mining problems is association rule mining. Recent studies of mining association rules have proposed a closure mechanism. It is no longer necessary to mine the set of all of the frequent itemsets and their association rules. Rather, it is sufficient to mine the frequent closed itemsets and their corresponding rules. In the past, a number of algorithms for mining frequent closed itemsets have been based on items. In this paper, we use the transaction itself for mining frequent closed itemsets. An efficient algorithm is proposed that is based on a link structure between transactions. Our experimental results show that our algorithm is faster than previously proposed methods. Furthermore, our approach is significantly more efficient for dense databases.

데이터 스트림에서 가중치 지지도 기반 빈발 패턴 추출 방법 (An Efficient Method for Mining Frequent Patterns based on Weighted Support over Data Streams)

  • 김영희;김원영;김응모
    • 한국산학기술학회논문지
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    • 제10권8호
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    • pp.1998-2004
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    • 2009
  • 다양한 저장 장치의 발달과 네트워크의 발전은 대용량의 데이터를 연속적으로 빠르게 생성한다. 데이터 스트림에서의 데이터 마이닝은 처리 시간 및 메모리 사용에 제한적이다. 또한 생성된 데이터를 한 번의 스캔으로 유용한 패턴을 발견할 수 있어야 하고 정보 변화 가능성이 큰 데이터 속성을 갖는 경우 최근의 정보를 반영한 빠른 분석이 가능해야 한다. 기존의 지지도 기반 마이닝 방법들은 일정 기간 동안 미리 정의된 지지도 이상의 빈발 항목에 대하여만 고려하므로 중요도가 높은 항목들을 간과하는 문제점을 가지고 있다. 본 논문에서는 시간의 변화에 따른 가변성을 고려하여 가중치 지지도를 갖는 데이터 항목들에 대하여 보다 의미 있는 정보를 제공하기 위한 효율적인 빈발패턴 추출 방법을 제안하고자 한다. 제안된 WSFI-Mine(Weighted Support Frequent Itemsets Mine) 방법은 DCT(Data Stream Closed Pattern Tree) 데이터 구조를 이용하여 패쇄 빈발 항목을 탐사한다. 제안된 알고리즘은 DSM-FI와 THUI-Mine 알고리즘과 지지도 변화에 따른 성능을 비교하였고 그 결과 비교 알고리즘 보다 수행 시간이 우수함을 보였고, 빈발 항목을 생성하는 후보 항목의 수를 줄이므로 메모리 사용량을 효율적으로 사용할 수 있음을 보였다.

Multi-Sized cumulative Summary Structure Driven Light Weight in Frequent Closed Itemset Mining to Increase High Utility

  • Siva S;Shilpa Chaudhari
    • Journal of information and communication convergence engineering
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    • 제21권2호
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    • pp.117-129
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    • 2023
  • High-utility itemset mining (HIUM) has emerged as a key data-mining paradigm for object-of-interest identification and recommendation systems that serve as frequent itemset identification tools, product or service recommendation systems, etc. Recently, it has gained widespread attention owing to its increasing role in business intelligence, top-N recommendation, and other enterprise solutions. Despite the increasing significance and the inability to provide swift and more accurate predictions, most at-hand solutions, including frequent itemset mining, HUIM, and high average- and fast high-utility itemset mining, are limited to coping with real-time enterprise demands. Moreover, complex computations and high memory exhaustion limit their scalability as enterprise solutions. To address these limitations, this study proposes a model to extract high-utility frequent closed itemsets based on an improved cumulative summary list structure (CSLFC-HUIM) to reduce an optimal set of candidate items in the search space. Moreover, it employs the lift score as the minimum threshold, called the cumulative utility threshold, to prune the search space optimal set of itemsets in a nested-list structure that improves computational time, costs, and memory exhaustion. Simulations over different datasets revealed that the proposed CSLFC-HUIM model outperforms other existing methods, such as closed- and frequent closed-HUIM variants, in terms of execution time and memory consumption, making it suitable for different mined items and allied intelligence of business goals.

목표 속성을 고려한 연관규칙과 분류 기법 (Directed Association Rules Mining and Classification)

  • 한경록;김재련
    • 산업경영시스템학회지
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    • 제24권63호
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    • pp.23-31
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    • 2001
  • Data mining can be either directed or undirected. One way of thinking about it is that we use undirected data mining to recognize relationship in the data and directed data mining to explain those relationships once they have been found. Several data mining techniques have received considerable research attention. In this paper, we propose an algorithm for discovering association rules as directed data mining and applying them to classification. In the first phase, we find frequent closed itemsets and association rules. After this phase, we construct the decision trees using discovered association rules. The algorithm can be applicable to customer relationship management.

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