• 제목/요약/키워드: Decision-tree model

검색결과 728건 처리시간 0.032초

투자와 수출 및 환율의 고용에 대한 의사결정 나무, 랜덤 포레스트와 그래디언트 부스팅 머신러닝 모형 예측 (Investment, Export, and Exchange Rate on Prediction of Employment with Decision Tree, Random Forest, and Gradient Boosting Machine Learning Models)

  • 이재득
    • 무역학회지
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    • 제46권2호
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    • pp.281-299
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    • 2021
  • This paper analyzes the feasibility of using machine learning methods to forecast the employment. The machine learning methods, such as decision tree, artificial neural network, and ensemble models such as random forest and gradient boosting regression tree were used to forecast the employment in Busan regional economy. The following were the main findings of the comparison of their predictive abilities. First, the forecasting power of machine learning methods can predict the employment well. Second, the forecasting values for the employment by decision tree models appeared somewhat differently according to the depth of decision trees. Third, the predictive power of artificial neural network model, however, does not show the high predictive power. Fourth, the ensemble models such as random forest and gradient boosting regression tree model show the higher predictive power. Thus, since the machine learning method can accurately predict the employment, we need to improve the accuracy of forecasting employment with the use of machine learning methods.

Evaluation Method of College English Education Effect Based on Improved Decision Tree Algorithm

  • Dou, Fang
    • Journal of Information Processing Systems
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    • 제18권4호
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    • pp.500-509
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    • 2022
  • With the rapid development of educational informatization, teaching methods become diversified characteristics, but a large number of information data restrict the evaluation on teaching subject and object in terms of the effect of English education. Therefore, this study adopts the concept of incremental learning and eigenvalue interval algorithm to improve the weighted decision tree, and builds an English education effect evaluation model based on association rules. According to the results, the average accuracy of information classification of the improved decision tree algorithm is 96.18%, the classification error rate can be as low as 0.02%, and the anti-fitting performance is good. The classification error rate between the improved decision tree algorithm and the original decision tree does not exceed 1%. The proposed educational evaluation method can effectively provide early warning of academic situation analysis, and improve the teachers' professional skills in an accelerated manner and perfect the education system.

이미지 보간을 위한 의사결정나무 분류 기법의 적용 및 구현 (Adopting and Implementation of Decision Tree Classification Method for Image Interpolation)

  • 김동형
    • 디지털산업정보학회논문지
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    • 제16권1호
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    • pp.55-65
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    • 2020
  • With the development of display hardware, image interpolation techniques have been used in various fields such as image zooming and medical imaging. Traditional image interpolation methods, such as bi-linear interpolation, bi-cubic interpolation and edge direction-based interpolation, perform interpolation in the spatial domain. Recently, interpolation techniques in the discrete cosine transform or wavelet domain are also proposed. Using these various existing interpolation methods and machine learning, we propose decision tree classification-based image interpolation methods. In other words, this paper is about the method of adaptively applying various existing interpolation methods, not the interpolation method itself. To obtain the decision model, we used Weka's J48 library with the C4.5 decision tree algorithm. The proposed method first constructs attribute set and select classes that means interpolation methods for classification model. And after training, interpolation is performed using different interpolation methods according to attributes characteristics. Simulation results show that the proposed method yields reasonable performance.

조종사 비행훈련 성패예측모형 구축을 위한 중요변수 선정 (Selection of Important Variables in the Classification Model for Successful Flight Training)

  • 이상헌;이선두
    • 산업공학
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    • 제20권1호
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    • pp.41-48
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    • 2007
  • The main purpose of this paper is cost reduction in absurd pilot positive expense and human accident prevention which is caused by in the pilot selection process. We use classification models such as logistic regression, decision tree, and neural network based on aptitude test results of 505 ROK Air Force applicants in 2001~2004. First, we determine the reliability and propriety against the aptitude test system which has been improved. Based on this conference flight simulator test item was compared to the new aptitude test item in order to make additional yes or no decision from different models in terms of classification accuracy, ROC and Response Threshold side. Decision tree was selected as the most efficient for each sequential flight training result and the last flight training results predict excellent. Therefore, we propose that the standard of pilot selection be adopted by the decision tree and it presents in the aptitude test item which is new a conference flight simulator test.

다중 분포 학습 모델을 위한 Haar-like Feature와 Decision Tree를 이용한 학습 알고리즘 (Learning Algorithm for Multiple Distribution Data using Haar-like Feature and Decision Tree)

  • 곽주현;원일용;이창훈
    • 정보처리학회논문지:소프트웨어 및 데이터공학
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    • 제2권1호
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    • pp.43-48
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    • 2013
  • Adaboost 알고리즘은 얼굴인식을 위한 Haar-like feature들을 이용하기 위해 가장 널리 쓰이고 있는 알고리즘이다. 매우 빠르며 효율적인 성능을 보이고 있으며 하나의 모델이미지가 존재하는 단일분포 데이터에 대해 매우 효율적이다. 그러나 정면 얼굴과 측면 얼굴을 혼합한 인식 등 둘 이상의 모델이미지를 가진 다중 분포모델에 대해서는 그 성능이 저하된다. 이는 단일 학습 알고리즘의 선형결합에 의존하기 때문에 생기는 현상이며 그 응용범위의 한계를 지니게 된다. 본 연구에서는 이를 해결하기 위한 제안으로서 Decision Tree를 Harr-like Feature와 결합하는 기법을 제안한다. Decision Tree를 사용 함으로서 보다 넓은 분야의 문제를 해결하기 위해 기존의 Decision Tree를 Harr-like Feature에 적합하도록 개선한 HDCT라고 하는 Harr-like Feature를 활용한 Decision Tree를 제안하였으며 이것의 성능을 Adaboost와 비교 평가하였다.

인체측정조사에서 측정곤란부위 예측을 위한 의사결정나무 추천 모형 탐지에 관한 연구 (A Study on Exploration of the Recommended Model of Decision Tree to Predict a Hard-to-Measure Mesurement in Anthropometric Survey)

  • 최종후;김선경
    • 응용통계연구
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    • 제22권5호
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    • pp.923-935
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    • 2009
  • 본 연구는 의사결정나무의 추천 모형 선택을 위한 비교실험에 초점을 두고 있다. 의사결정나무 모형은 구축된 모형에 기반을 두고 미래 관측치에 대한 예측 기능을 수행하게 될 것이므로 구축된 모형이 아무리 정치(精緻)하다고 하더라도 일반화의 성질을 충족시키지 못하면 실제성이 없게 된다. 따라서 본 연구는 교차타당성 검토를 통해 일반화의 성질을 충족시키면서 우수한 예측력을 갖는 추천 모형을 탐지하는 절차를 연구하는 데에 초점을 맞추고 있다. 사례 연구로 인체측정자료를 사용하여 측정곤란부위 예측을 위한 의사결정나무 추천 모형을 탐지한다. 그 결과 CART 모형 이 추천 모형으로 탐지되었다.

의사결정나무를 활용한 신경망 모형의 입력특성 선택: 주택가격 추정 사례 (Decision Tree-Based Feature-Selective Neural Network Model: Case of House Price Estimation)

  • 윤한성
    • 디지털산업정보학회논문지
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    • 제19권1호
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    • pp.109-118
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    • 2023
  • Data-based analysis methods have become used more for estimating or predicting housing prices, and neural network models and decision trees in the field of big data are also widely used more and more. Neural network models are often evaluated to be superior to existing statistical models in terms of estimation or prediction accuracy. However, there is ambiguity in determining the input feature of the input layer of the neural network model, that is, the type and number of input features, and decision trees are sometimes used to overcome these disadvantages. In this paper, we evaluate the existing methods of using decision trees and propose the method of using decision trees to prioritize input feature selection in neural network models. This can be a complementary or combined analysis method of the neural network model and decision tree, and the validity was confirmed by applying the proposed method to house price estimation. Through several comparisons, it has been summarized that the selection of appropriate input characteristics according to priority can increase the estimation power of the model.

결정목을 이용한 유도전동기 결함진단 (Fault Diagnosis of Induction Motors using Decision Trees)

  • Tran Van Tung;Yang Bo-Suk;Oh Myung-Suck
    • 한국소음진동공학회:학술대회논문집
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    • 한국소음진동공학회 2006년도 추계학술대회논문집
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    • pp.407-410
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    • 2006
  • Decision tree is one of the most effective and widely used methods for building classification model. Researchers from various disciplines such as statistics, machine teaming, pattern recognition, and data mining have considered the decision tree method as an effective solution to their field problems. In this paper, an application of decision tree method to classify the faults of induction motors is proposed. The original data from experiment is dealt with feature calculation to get the useful information as attributes. These data are then assigned the classes which are based on our experience before becoming data inputs for decision tree. The total 9 classes are defined. An implementation of decision tree written in Matlab is used for four data sets with good performance results

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머신러닝 기법을 활용한 대졸 구직자 취업 예측모델에 관한 연구 (Study on the Prediction Model for Employment of University Graduates Using Machine Learning Classification)

  • 이동훈;김태형
    • 한국정보시스템학회지:정보시스템연구
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    • 제29권2호
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    • pp.287-306
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    • 2020
  • Purpose Youth unemployment is a social problem that continues to emerge in Korea. In this study, we create a model that predicts the employment of college graduates using decision tree, random forest and artificial neural network among machine learning techniques and compare the performance between each model through prediction results. Design/methodology/approach In this study, the data processing was performed, including the acquisition of the college graduates' vocational path survey data first, then the selection of independent variables and setting up dependent variables. We use R to create decision tree, random forest, and artificial neural network models and predicted whether college graduates were employed through each model. And at the end, the performance of each model was compared and evaluated. Findings The results showed that the random forest model had the highest performance, and the artificial neural network model had a narrow difference in performance than the decision tree model. In the decision-making tree model, key nodes were selected as to whether they receive economic support from their families, major affiliates, the route of obtaining information for jobs at universities, the importance of working income when choosing jobs and the location of graduation universities. Identifying the importance of variables in the random forest model, whether they receive economic support from their families as important variables, majors, the route to obtaining job information, the degree of irritating feelings for a month, and the location of the graduating university were selected.

A Comparative Study of Predictive Factors for Passing the National Physical Therapy Examination using Logistic Regression Analysis and Decision Tree Analysis

  • Kim, So Hyun;Cho, Sung Hyoun
    • Physical Therapy Rehabilitation Science
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    • 제11권3호
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    • pp.285-295
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    • 2022
  • Objective: The purpose of this study is to use logistic regression and decision tree analysis to identify the factors that affect the success or failurein the national physical therapy examination; and to build and compare predictive models. Design: Secondary data analysis study Methods: We analyzed 76,727 subjects from the physical therapy national examination data provided by the Korea Health Personnel Licensing Examination Institute. The target variable was pass or fail, and the input variables were gender, age, graduation status, and examination area. Frequency analysis, chi-square test, binary logistic regression, and decision tree analysis were performed on the data. Results: In the logistic regression analysis, subjects in their 20s (Odds ratio, OR=1, reference), expected to graduate (OR=13.616, p<0.001) and from the examination area of Jeju-do (OR=3.135, p<0.001), had a high probability of passing. In the decision tree, the predictive factors for passing result had the greatest influence in the order of graduation status (x2=12366.843, p<0.001) and examination area (x2=312.446, p<0.001). Logistic regression analysis showed a specificity of 39.6% and sensitivity of 95.5%; while decision tree analysis showed a specificity of 45.8% and sensitivity of 94.7%. In classification accuracy, logistic regression and decision tree analysis showed 87.6% and 88.0% prediction, respectively. Conclusions: Both logistic regression and decision tree analysis were adequate to explain the predictive model. Additionally, whether actual test takers passed the national physical therapy examination could be determined, by applying the constructed prediction model and prediction rate.