• 제목/요약/키워드: Utility-Based Data Mining

검색결과 28건 처리시간 0.028초

PubMine: An Ontology-Based Text Mining System for Deducing Relationships among Biological Entities

  • Kim, Tae-Kyung;Oh, Jeong-Su;Ko, Gun-Hwan;Cho, Wan-Sup;Hou, Bo-Kyeng;Lee, Sang-Hyuk
    • Interdisciplinary Bio Central
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    • 제3권2호
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    • pp.7.1-7.6
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    • 2011
  • Background: Published manuscripts are the main source of biological knowledge. Since the manual examination is almost impossible due to the huge volume of literature data (approximately 19 million abstracts in PubMed), intelligent text mining systems are of great utility for knowledge discovery. However, most of current text mining tools have limited applicability because of i) providing abstract-based search rather than sentence-based search, ii) improper use or lack of ontology terms, iii) the design to be used for specific subjects, or iv) slow response time that hampers web services and real time applications. Results: We introduce an advanced text mining system called PubMine that supports intelligent knowledge discovery based on diverse bio-ontologies. PubMine improves query accuracy and flexibility with advanced search capabilities of fuzzy search, wildcard search, proximity search, range search, and the Boolean combinations. Furthermore, PubMine allows users to extract multi-dimensional relationships between genes, diseases, and chemical compounds by using OLAP (On-Line Analytical Processing) techniques. The HUGO gene symbols and the MeSH ontology for diseases, chemical compounds, and anatomy have been included in the current version of PubMine, which is freely available at http://pubmine.kobic.re.kr. Conclusions: PubMine is a unique bio-text mining system that provides flexible searches and analysis of biological entity relationships. We believe that PubMine would serve as a key bioinformatics utility due to its rapid response to enable web services for community and to the flexibility to accommodate general ontology.

Evaluation of Micro EV's Spreading to Local Community by Multinomial Logit Model

  • Seki, Yoichi;Manrique, Luis C.;Amagai, Kenji;Takarada, Takayuki
    • Industrial Engineering and Management Systems
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    • 제11권2호
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    • pp.148-154
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    • 2012
  • Micro Electric Vehicles are considered as a solution for reducing $CO_2$ emissions, however, it is difficult to evaluate its impact in a local community when it has been introduced. In this study, we evaluated how to spread the Micro EV within the community, using the utility derived from a multinomial logit model, and analyze the effect on $CO_2$ emissions. The householder's utility model is based on an investigation about Kiryu citizen's activities of shopping, transportation methods, etc. Using the geographic information system, we get the distances of each householder and the stores, and estimate a multinomial logit model about the combination choices of shopping stores and transportation method.

다수 분류기를 이용한 메타레벨 데이터마이닝 (Metalevel Data Mining through Multiple Classifier Fusion)

  • 김형관;신성우
    • 한국정보과학회:학술대회논문집
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    • 한국정보과학회 1999년도 가을 학술발표논문집 Vol.26 No.2 (2)
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    • pp.551-553
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    • 1999
  • This paper explores the utility of a new classifier fusion approach to discrimination. Multiple classifier fusion, a popular approach in the field of pattern recognition, uses estimates of each individual classifier's local accuracy on training data sets. In this paper we investigate the effectiveness of fusion methods compared to individual algorithms, including the artificial neural network and k-nearest neighbor techniques. Moreover, we propose an efficient meta-classifier architecture based on an approximation of the posterior Bayes probabilities for learning the oracle.

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웹 클릭 스트림에서 고유용 과거 정보 탐색 (Finding high utility old itemsets in web-click streams)

  • 장중혁
    • 한국산학기술학회논문지
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    • 제17권4호
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    • pp.521-528
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    • 2016
  • 개인용 컴퓨터 및 각종 모바일 기기의 이용 증가로 인해 많은 분야에서 다양한 형태의 웹기반 서비스들이 널리 활용되고 있다. 이에 따라 해당 분야에서 개인 맞춤형 서비스를 지원하기 위한 사용자 이용 로그 분석 등에 대한 연구가 활발히 진행되고 있으며, 특히 사용자 로그 데이터를 구성하는 구성요소의 중요성 차별화에 기반한 분석 기법들이 활발히 연구되었다. 본 논문에서는 웹 클릭 스트림에서 유용하게 적용될 수 있는 고유용 과거 정보 탐색 기법을 제시한다. 해당 기법을 통해 기존의 웹 클릭 스트림 분석 기법에서는 쉽게 탐색하지 못했던 정보인 타겟 마케팅 등에 유용하게 활용될 수 있는 중요 정보를 쉽게 탐색할 수 있다. 본 논문의 연구 결과는 IoT 환경 및 생물정보 분석 등과 같이 데이터 스트림 형태로 정보를 발생시키는 다양한 컴퓨터 응용 분야에도 활용될 수 있을 것이다.

Load-Balancing Rendezvous Approach for Mobility-Enabled Adaptive Energy-Efficient Data Collection in WSNs

  • Zhang, Jian;Tang, Jian;Wang, Zhonghui;Wang, Feng;Yu, Gang
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제14권3호
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    • pp.1204-1227
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    • 2020
  • The tradeoff between energy conservation and traffic balancing is a dilemma problem in Wireless Sensor Networks (WSNs). By analyzing the intrinsic relationship between cluster properties and long distance transmission energy consumption, we characterize three node sets of the cluster as a theoretical foundation to enhance high performance of WSNs, and propose optimal solutions by introducing rendezvous and Mobile Elements (MEs) to optimize energy consumption for prolonging the lifetime of WSNs. First, we exploit an approximate method based on the transmission distance from the different node to an ME to select suboptimal Rendezvous Point (RP) on the trajectory for ME to collect data. Then, we define data transmission routing sequence and model rendezvous planning for the cluster. In order to achieve optimization of energy consumption, we specifically apply the economic theory called Diminishing Marginal Utility Rule (DMUR) and create the utility function with regard to energy to develop an adaptive energy consumption optimization framework to achieve energy efficiency for data collection. At last, Rendezvous Transmission Algorithm (RTA) is proposed to better tradeoff between energy conservation and traffic balancing. Furthermore, via collaborations among multiple MEs, we design Two-Orbit Back-Propagation Algorithm (TOBPA) which concurrently handles load imbalance phenomenon to improve the efficiency of data collection. The simulation results show that our solutions can improve energy efficiency of the whole network and reduce the energy consumption of sensor nodes, which in turn prolong the lifetime of WSNs.

Factors Clustering Approach to Parametric Cost Estimates And OLAP Driver

  • JaeHo, Cho;BoSik, Son;JaeYoul, Chun
    • 국제학술발표논문집
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    • The 3th International Conference on Construction Engineering and Project Management
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    • pp.707-716
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    • 2009
  • The role of cost modeller is to facilitate the design process by systematic application of cost factors so as to maintain a sensible and economic relationship between cost, quantity, utility and appearance which thus helps in achieving the client's requirements within an agreed budget. There are a number of research on cost estimates in the early design stage based on the improvement of accuracy or impact factors. It is common knowledge that cost estimates are undertaken progressively throughout the design stage and make use of the information that is available at each phase, through the related research up to now. In addition, Cost estimates in the early design stage shall analyze the information under the various kinds of precondition before reaching the more developed design because a design can be modified and changed in all process depending on clients' requirements. Parametric cost estimating models have been adopted to support decision making in a changeable environment, in the early design stage. These models are using a similar instance or a pattern of historical case to be constituted in project information, geographic design features, relevant data to quantity or cost, etc. OLAP technique analyzes a subject data by multi-dimensional points of view; it supports query, analysis, comparison of required information by diverse queries. OLAP's data structure matches well with multiview-analysis framework. Accordingly, this study implements multi-dimensional information system for case based quantity data related to design information that is utilizing OLAP's technology, and then analyzes impact factors of quantity by the design criteria or parameter of the same meaning. On the basis of given factors examined above, this study will generate the rules on quantity measure and produce resemblance class using clustering of data mining. These sorts of knowledge-base consist of a set of classified data as group patterns, of which will be appropriate stand on the parametric cost estimating method.

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DATA MININING APPROACH TO PARAMETRIC COST ESTIMATE IN EARLY DESIGN STAGE AND ANALYTICAL CHARACTERIZATION ON OLAP (ON-LINE ANALYTICAL PROCESSING)

  • JaeHo Cho;HyunKyun Jung;JaeYoul Chun
    • 국제학술발표논문집
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    • The 4th International Conference on Construction Engineering and Project Management Organized by the University of New South Wales
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    • pp.176-181
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    • 2011
  • A role of cost modeler is that of facilitating design process by the systematic application of cost factors so as to maintain sensible and economic relationships between cost, quantity, utility and appearance. These relationships help to achieve the client's requirements within an agreed budget. The purpose of this study is to develop a parametric cost estimating model for the early design stage by using the multi-dimensional system of OLAP (On-line Analytical Processing) based on the case of quantity data related to architectural design features. The parametric cost estimating models have been adopted to support decision making in the early design stage. These models typically use a similar instance or a pattern of historical case. In order to effectively use this type of data model, it is required to set data classification and prediction methods. One of the methods is to find the similar class in line with attribute selection measure in the multi-dimensional data model. Therefore, this research is to analyze the relevance attribute influenced by architectural design features with the subject of case-based quantity data used for the parametric cost estimating model. The relevance attributes can be analyzed by Analytical Characterization. It helps determine what attributes to be included in the OLAP multi-dimension.

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복잡한 예측문제에 대한 이차학습방법 : Video-On-Demand에 대한 사례연구 (Second-Order Learning for Complex Forecasting Tasks: Case Study of Video-On-Demand)

  • 김형관;주종형
    • 지능정보연구
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    • 제3권1호
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    • pp.31-45
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    • 1997
  • To date, research on data mining has focused primarily on individual techniques to su, pp.rt knowledge discovery. However, the integration of elementary learning techniques offers a promising strategy for challenging a, pp.ications such as forecasting nonlinear processes. This paper explores the utility of an integrated a, pp.oach which utilizes a second-order learning process. The a, pp.oach is compared against individual techniques relating to a neural network, case based reasoning, and induction. In the interest of concreteness, the concepts are presented through a case study involving the prediction of network traffic for video-on-demand.

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An Efficient Machine Learning-based Text Summarization in the Malayalam Language

  • P Haroon, Rosna;Gafur M, Abdul;Nisha U, Barakkath
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제16권6호
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    • pp.1778-1799
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    • 2022
  • Automatic text summarization is a procedure that packs enormous content into a more limited book that incorporates significant data. Malayalam is one of the toughest languages utilized in certain areas of India, most normally in Kerala and in Lakshadweep. Natural language processing in the Malayalam language is relatively low due to the complexity of the language as well as the scarcity of available resources. In this paper, a way is proposed to deal with the text summarization process in Malayalam documents by training a model based on the Support Vector Machine classification algorithm. Different features of the text are taken into account for training the machine so that the system can output the most important data from the input text. The classifier can classify the most important, important, average, and least significant sentences into separate classes and based on this, the machine will be able to create a summary of the input document. The user can select a compression ratio so that the system will output that much fraction of the summary. The model performance is measured by using different genres of Malayalam documents as well as documents from the same domain. The model is evaluated by considering content evaluation measures precision, recall, F score, and relative utility. Obtained precision and recall value shows that the model is trustable and found to be more relevant compared to the other summarizers.

트랜잭션 가중치 기반의 빈발 아이템셋 마이닝 기법의 성능분석 (Performance analysis of Frequent Itemset Mining Technique based on Transaction Weight Constraints)

  • 윤은일;편광범
    • 인터넷정보학회논문지
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    • 제16권1호
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    • pp.67-74
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    • 2015
  • 최근, 아이템들의 가치를 고려한 빈발 아이템셋 마이닝 방법은 데이터 마이닝 분야에서 가장 중요한 이슈 중 하나로 활발히 연구되어왔다. 아이템들의 가치를 고려한 마이닝 기법들은 적용 방법에 따라 크게 가중화 빈발 아이템셋 마이닝, 트랜잭션 가중치 기반의 빈발 아이템셋 마이닝, 유틸리티 아이템셋 마이닝으로 구분된다. 본 논문에서는 트랜잭션 가중치 기반의 빈발 아이템셋 마이닝들에 대해 실증적인 분석을 수행한다. 일반적으로 트랜잭션 가중치 기반의 빈발 아이템셋 마이닝 기법들은 데이터베이스 내 아이템들의 가치를 고려함으로써 트랜잭션 가중치를 계산한다. 또한, 그 기법들은 계산된 각 트랜잭션의 가중치를 바탕으로 가중화 빈발 아이템셋들을 마이닝 한다. 트랜잭션 가중치는 트랜잭션 내에 높은 가치의 아이템이 많이 포함 될수록 높은 값으로 나타나기 때문에 우리는 각 트랜잭션의 가중치의 분석을 통해 그 가치를 파악할 수 있다. 우리는 트랜잭션 가중치 기반의 빈발 아이템셋 마이닝 기법 중에서 가장 유명한 알고리즘인 WIS와 WIT-FWIs, IT-FWIs-MODIFY, WIT-FWIs-DIFF의 장 단점을 분석하고 각각의 성능을 비교한다. WIS는 트랜잭션 가중치 기반의 빈발 아이템셋 마이닝의 개념과 그 기법이 처음 제안된 알고리즘이며, 전통적인 빈발 아이템셋 마이닝 기법인 Apriori를 기반으로 하고 있다. 또 다른 트랜잭션 가중치 기반의 빈발 아이템셋 마이닝 방법인 WIT-FWIs와 WIT-FWIs-MODIFY, WIT-FWIs-DIFF는 가중화된 빈발 아이템셋 마이닝을 더 효율적으로 수행하기 위해 격자구조(Lattice) 형태의 특별한 저장구조인 WIT-tree를 이용한다. WIT-tree의 각 노드에는 아이템셋 정보와 아이템셋이 포함된 트랜잭션의 ID들이 저장되며, 이 구조를 사용함으로써 아이템셋 마이닝 과정에서 발생되는 다수의 데이터베이스 스캔 과정이 감소된다. 특히, 전통적인 알고리즘들이 수많은 데이터베이스 스캔을 수행하는 반면에, 이 알고리즘들은 WIT-tree를 이용해 데이터베이스를 오직 한번만 읽음으로써 마이닝과정에서 발생 가능한 오버헤드 문제를 해결한다. 또한, 공통적으로 길이 N의 두 아이템셋을 이용해 길이 N+1의 새로운 아이템셋을 생성한다. 먼저, WIT-FWIs는 각 아이템셋이 동시에 발생되는 트랜잭션들의 정보를 활용하는 것이 특징이다. WIT-FWIs-MODIFY는 조합되는 아이템셋의 정보를 이용해 빈도수 계산에 필요한 연산을 줄인 알고리즘이다. WIT-FWIs-DIFF는 두 아이템셋 중 하나만 발생한 트랜잭션의 정보를 이용한다. 우리는 다양한 실험환경에서 각 알고리즘의 성능을 비교분석하기 위해 각 트랜잭션의 형태가 유사한 dense 데이터와 각 트랜잭션의 구성이 서로 다른 sparse 데이터를 이용해 마이닝 시간과 최대 메모리 사용량을 평가한다. 또한, 각 알고리즘의 안정성을 평가하기 위한 확장성 테스트를 수행한다. 결과적으로, dense 데이터에서는 WIT-FWIs와 WIT-FWIs-MODIFY가 다른 알고리즘들보다 좋은 성능을 보이고 sparse 데이터에서는 WIT-FWI-DIFF가 가장 좋은 효율성을 갖는다. WIS는 더 많은 연산을 수행하는 알고리즘을 기반으로 했기 때문에 평균적으로 가장 낮은 성능을 보인다.