• Title/Summary/Keyword: data mining(CART)

Search Result 68, Processing Time 0.02 seconds

Major gene identification for FASN gene in Korean cattles by data mining (데이터마이닝을 이용한 한우의 우수 지방산합성효소 유전자 조합 선별)

  • Kim, Byung-Doo;Kim, Hyun-Ji;Lee, Seong-Won;Lee, Jea-Young
    • Journal of the Korean Data and Information Science Society
    • /
    • v.25 no.6
    • /
    • pp.1385-1395
    • /
    • 2014
  • Economic traits of livestock are affected by environmental factors and genetic factors. In addition, it is not affected by one gene, but is affected by interaction of genes. We used a linear regression model in order to adjust environmental factors. And, in order to identify gene-gene interaction effect, we applied data mining techniques such as neural network, logistic regression, CART and C5.0 using five-SNPs (single nucleotide polymorphism) of FASN (fatty acid synthase). We divided total data into training (60%) and testing (40%) data, and applied the model which was designed by training data to testing data. By the comparison of prediction accuracy, C5.0 was identified as the best model. It were selected superior genotype using the decision tree.

The effect investigation of the delirium by Bayesian network and radial graph (베이지안 네트워크와 방사형 그래프를 이용한 섬망의 효과 규명)

  • Lee, Jea-Young;Bae, Jae-Young
    • Journal of the Korean Data and Information Science Society
    • /
    • v.22 no.5
    • /
    • pp.911-919
    • /
    • 2011
  • In recent medical analysis, it becomes more important to looking for risk factors related to mental illness. If we find and identify their relevant characteristics of the risk factors, the disease can be prevented in advance. Moreover, the study can be helpful to medical development. These kinds of studies of risk factors for mental illness have mainly been discussed by using the logistic regression model. However in this paper, data mining techniques such as CART, C5.0, logistic, neural networks and Bayesian network were used to search for the risk factors. The Bayesian network of the above data mining methods was selected as most optimal model by applying delirium data. Then, Bayesian network analysis was used to find risk factors and the relationship between the risk factors are identified through a radial graph.

Prediction of Auditor Selection Using a Combination of PSO Algorithm and CART in Iran

  • Salehi, Mahdi;Kamalahmadi, Sharifeh;Bahrami, Mostafa
    • Journal of Distribution Science
    • /
    • v.12 no.3
    • /
    • pp.33-41
    • /
    • 2014
  • Purpose - The purpose of this study was to predict the selection of independent auditors in the companies listed on the Tehran Stock Exchange (TSE) using a combination of PSO algorithm and CART. This study involves applied research. Design, approach and methodology - The population consisted of all the companies listed on TSE during the period 2005-2010, and the sample included 576 data specimens from 95 companies during six consecutive years. The independent variables in the study were the financial ratios of the sample companies, which were analyzed using two data mining techniques, namely, PSO algorithm and CART. Results - The results of this study showed that among the analyzed variables, total assets, current assets, audit fee, working capital, current ratio, debt ratio, solvency ratio, turnover, and capital were predictors of independent auditor selection. Conclusion - The current study is practically the first to focus on this topic in the specific context of Iran. In this regard, the study may be valuable for application in developing countries.

Factor Analysis on Injured People Using Data Mining Technique (데이터 마이닝 기법을 활용한 산업재해자들에 대한 요인분석)

  • Leem Young-Moon;Hwang Young-Seob;Choi Yo-Han
    • Journal of the Korea Safety Management & Science
    • /
    • v.7 no.4
    • /
    • pp.61-71
    • /
    • 2005
  • Many researches have been focused on the analysis of industry disasters in order to reduce them. As a similar endeavor, this paper provides a propensity analysis of injured people from various industries using classification and regression tree(CART), a data mining algorithm. The sample for this work was chosen from 25,157data related to various industries during one year ( $2003.2\sim2004.1$ ) at Kangwon-Do in Korea. For the purpose of this paper, eight independent variables (injured date, injured time, injured month, type of Injured person, continuous service period, sex, company size, age)are taken from injured person group. According to the analysis result, it is found that five out of the eight factors that are predicted as significant have salient effects. Factors of season, time/hour, day of the week, or month which disasters happened do not show any significant effect. This paper provides common features of injured people. The provided analysis result will be helpful as a starting point for root cause analysis and reduction of industry disasters and also for development of a guideline of safety management.

A Comparison Study of Classification Algorithms in Data Mining

  • Lee, Seung-Joo;Jun, Sung-Rae
    • International Journal of Fuzzy Logic and Intelligent Systems
    • /
    • v.8 no.1
    • /
    • pp.1-5
    • /
    • 2008
  • Generally the analytical tools of data mining have two learning types which are supervised and unsupervised learning algorithms. Classification and prediction are main analysis tools for supervised learning. In this paper, we perform a comparison study of classification algorithms in data mining. We make comparative studies between popular classification algorithms which are LDA, QDA, kernel method, K-nearest neighbor, naive Bayesian, SVM, and CART. Also, we use almost all classification data sets of UCI machine learning repository for our experiments. According to our results, we are able to select proper algorithms for given classification data sets.

Development of an Expert System for Prevention of Industrial Accidents in Manufacturing Industries (제조업에서의 산업재해 예방을 위한 전문가 시스템 개발)

  • Leem Young-Moon;Choi Yo-Han
    • Journal of the Korea Safety Management & Science
    • /
    • v.8 no.1
    • /
    • pp.53-64
    • /
    • 2006
  • Many researches and analyses have been focused on industrial accidents in order to predict and reduce them. As a similar endeavor, this paper is to develop an expert system for prevention of industrial accidents. Although various previous studies have been performed to prevent industrial accidents, these studies only provide managerial and educational policies using frequency analysis and comparative analysis based on data from past industrial accidents. As an initial step for the purpose of this study, this paper provides a comparative analysis of 4 kinds of algorithms including CHAID, CART, C4.5, and QUEST. Decision tree algorithm is utilized to predict results using objective and quantified data as a typical technique of data mining. Enterprise Miner of SAS and Answer Tree of SPSS will be used to evaluate the validity of the results of the four algorithms. The sample for this work was chosen from 10,536 data related to manufacturing industries during three years$(2002\sim2004)$ in korea. The initial sample includes a range of different businesses including the construction and manufacturing industries, which are typically vulnerable to industrial accidents.

Forecasting the Daily Container Volumes Using Data Mining with CART Approach (Datamining 기법을 활용한 단기 항만 물동량 예측)

  • Ha, Jun-Su;Lim, Chae Hwan;Cho, Kwang-Hee;Ha, Hun-Koo
    • Journal of Korea Port Economic Association
    • /
    • v.37 no.3
    • /
    • pp.1-17
    • /
    • 2021
  • Forecasting the daily volume of container is important in many aspects of port operation. In this article, we utilized a machine-learning algorithm based on decision tree to predict future container throughput of Busan port. Accurate volume forecasting improves operational efficiency and service levels by reducing costs and shipowner latency. We showed that our method is capable of accurately and reliably predicting container throughput in short-term(days). Forecasting accuracy was improved by more than 22% over time series methods(ARIMA). We also demonstrated that the current method is assumption-free and not prone to human bias. We expect that such method could be useful in a broad range of fields.

Waste Database Analysis Joined with Local Information Using Decision Tree Techniques

  • Park, Hee-Chang;Cho, Kwang-Hyun
    • 한국데이터정보과학회:학술대회논문집
    • /
    • 2005.04a
    • /
    • pp.164-173
    • /
    • 2005
  • Data mining is the method to find useful information for large amounts of data in database. It is used to find hidden knowledge by massive data, unexpectedly pattern, relation to new rule. The methods of data mining are decision tree, association rules, clustering, neural network and so on. The decision tree approach is most useful in classification problems and to divide the search space into rectangular regions. Decision tree algorithms are used extensively for data mining in many domains such as retail target marketing, fraud detection, data reduction and variable screening, category merging, etc. We analyze waste database united with local information using decision tree techniques for environmental information. We can use these decision tree outputs for environmental preservation and improvement.

  • PDF

Network Identification of Major Risk Factor Associated with Delirium by Bayesian Network (베이지안 네트워크를 활용한 정신장애 질병 섬망(delirium)의 주요 요인 네트워크 규명)

  • Lee, Jea-Young;Choi, Young-Jin
    • The Korean Journal of Applied Statistics
    • /
    • v.24 no.2
    • /
    • pp.323-333
    • /
    • 2011
  • We analyzed using logistic to find factors with a mental disorder because logistic is the most efficient way assess risk factors. In this paper, we applied data mining techniques that are logistic, neural network, c5.0, cart and Bayesian network to delirium data. The Bayesian network method was chosen as the best model. When delirium data were applied to the Bayesian network, we determined the risk factors associated with delirium as well as identified the network between the risk factors.

Evaluation on Performance for Classification of Students Leaving Their Majors Using Data Mining Technique (데이터마이닝 기법을 이용한 전공이탈자 분류를 위한 성능평가)

  • Leem, Young-Moon;Ryu, Chang-Hyun
    • Proceedings of the Safety Management and Science Conference
    • /
    • 2006.11a
    • /
    • pp.293-297
    • /
    • 2006
  • Recently most universities are suffering from students leaving their majors. In order to make a countermeasure for reducing major separation rate, many universities are trying to find a proper solution. As a similar endeavor, this paper uses decision tree algorithm which is one of the data mining techniques which conduct grouping or prediction into several sub-groups from interested groups. This technique can analyze a feature of type on students leaving their majors. The dataset consists of 5,115 features through data selection from total data of 13,346 collected from a university in Kangwon-Do during seven years(2000.3.1 $\sim$ 2006.6.30). The main objective of this study is to evaluate performance of algorithms including CHAID, CART and C4.5 for classification of students leaving their majors with ROC Chart, Lift Chart and Gains Chart. Also, this study provides values about accuracy, sensitivity, specificity using classification table. According to the analysis result, CART showed the best performance for classification of students leaving their majors.

  • PDF