• 제목/요약/키워드: Boosting methods

검색결과 205건 처리시간 0.031초

감성 화질 향상을 위한 이미지 적응형 LCD 백라이트 부스팅 및 디밍 (Image Adaptive LCD Backlight Boosting and Dimming For Perceptual Image Quality Enhancement)

  • 이철희;유재희
    • 한국멀티미디어학회논문지
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    • 제22권8호
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    • pp.860-873
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    • 2019
  • LCD backlight boosting and the integration of boosting and dimming are proposed based on image analysis to maximize perceptual image qualities and to reduce display system power. Based on the histogram of the image data, methods for selecting an image suitable for boosting and for adjusting the optimum backlight brightness are proposed. A comprehensive combined optimization method of LCD backlight boosting, dimming and bypass based on image characteristics is also described. Perceptual image quality enhancement and power consumption are evaluated based on well known image databases. Average subjective image quality is improved by 24.8%, RMS contrast is improved more than 20%, and average power consumption is reduced by 15.94% compared to conventional uniform boosting.

연속형 반응변수를 위한 데이터마이닝 방법 성능 향상 연구 (A study for improving data mining methods for continuous response variables)

  • 최진수;이석형;조형준
    • Journal of the Korean Data and Information Science Society
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    • 제21권5호
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    • pp.917-926
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    • 2010
  • 배깅과 부스팅의 기법은 예측력을 향상 시킨다고 알려져 있다. 이는 비교 실험을 통하여 성능이 검증 되었는데, 목표변수가 범주형인 경우에 특정 의사결정나무 알고리즘인 회귀분류나무만 주로 고려되었다. 본 논문에서는 의사결정나무 외에도 다른 데이터마이닝 방법도 고려하여 목표변수가 연속형인 경우에 배깅과 부스팅 기법의 성능 검증을 위한 비교 실험을 실시하였다. 구체적으로, 데이터마이닝 알고리즘 기법인 선형회귀, 의사결정나무, 신경망에 배깅 및 부스팅 앙상블 기법을 결합하여 8개의 데이터를 비교 분석하였다. 실험 결과로 연속형 자료에 대한 여러 데이터마이닝 알고리즘에도 배깅과 부스팅의 기법이 성능 향상에 도움이 되는 것으로 확인되었다.

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.

서베일런스에서 Adaptive Boosting을 이용한 실시간 헤드 트래킹 (Real-Time Head Tracking using Adaptive Boosting in Surveillance)

  • 강성관;이정현
    • 디지털융복합연구
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    • 제11권2호
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    • pp.243-248
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    • 2013
  • 본 논문에서는 복잡한 배경에서의 사람의 머리 추적에 있어서 효과적인 Adaptive Boosting에 의한 방법을 제안한다. 하나의 특징 추출 방법은 사람의 머리를 모델링하기에는 부족하다. 따라서 본 연구에서는 여러 가지 특징 추출 방법을 병행하여 정확한 머리 검출을 시도하였다. 머리 영상의 특징 추출은 sub-region과 Haar 웨이블릿 변환(Haar wavelet transform)을 이용하였다. Sub-region은 머리의 지역적인 특징을 나타내고, Haar 웨이블릿 변환은 얼굴의 주파수 특성을 나타내기 때문에 이들을 이용하여 특징을 추출하면 효과적인 모델링이 가능해 진다. 실시간으로 입력되는 영상에서 사람의 머리를 추적하기 위하여 제안하는 방법에서는 3가지 형태의 Harr-wavelet 특징을 AdaBoosting 알고리즘으로 학습한 후 결과를 이용하였다. 원래 AdaBoosting 알고리즘은 학습시간이 매우 길며 학습데이터가 변하면 다시 학습을 수행해야 하는 단점이 존재한다. 이 단점을 극복하기 위하여 제안하는 방법에서는 캐스케이드를 이용한 AdaBoosting의 효율적인 학습방법을 제안한다. 이 방법은 머리 영상에 대한 학습시간은 감소시키며, 학습데이터의 변화에도 효율적으로 대처할 수 있다. 이 방법은 학습과정을 레벨별로 분리한 후 중요도가 높은 학습데이터를 다음 단계에 반복적으로 적용시킨다. 제안하는 방법이 적은 학습 시간과 학습 데이터를 사용해서 우수한 성능을 가지는 분류기를 생성하였다. 또한, 이 방법은 다양한 머리데이터를 가진 실시간 영상데이터에 적용한 결과 다양한 머리를 정확하게 검출 및 추적하였다.

Comparison of three boosting methods in parent-offspring trios for genotype imputation using simulation study

  • Mikhchi, Abbas;Honarvar, Mahmood;Kashan, Nasser Emam Jomeh;Zerehdaran, Saeed;Aminafshar, Mehdi
    • Journal of Animal Science and Technology
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    • 제58권1호
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    • pp.1.1-1.6
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    • 2016
  • Background: Genotype imputation is an important process of predicting unknown genotypes, which uses reference population with dense genotypes to predict missing genotypes for both human and animal genetic variations at a low cost. Machine learning methods specially boosting methods have been used in genetic studies to explore the underlying genetic profile of disease and build models capable of predicting missing values of a marker. Methods: In this study strategies and factors affecting the imputation accuracy of parent-offspring trios compared from lower-density SNP panels (5 K) to high density (10 K) SNP panel using three different Boosting methods namely TotalBoost (TB), LogitBoost (LB) and AdaBoost (AB). The methods employed using simulated data to impute the un-typed SNPs in parent-offspring trios. Four different datasets of G1 (100 trios with 5 k SNPs), G2 (100 trios with 10 k SNPs), G3 (500 trios with 5 k SNPs), and G4 (500 trio with 10 k SNPs) were simulated. In four datasets all parents were genotyped completely, and offspring genotyped with a lower density panel. Results: Comparison of the three methods for imputation showed that the LB outperformed AB and TB for imputation accuracy. The time of computation were different between methods. The AB was the fastest algorithm. The higher SNP densities resulted the increase of the accuracy of imputation. Larger trios (i.e. 500) was better for performance of LB and TB. Conclusions: The conclusion is that the three methods do well in terms of imputation accuracy also the dense chip is recommended for imputation of parent-offspring trios.

Investigating the performance of different decomposition methods in rainfall prediction from LightGBM algorithm

  • Narimani, Roya;Jun, Changhyun;Nezhad, Somayeh Moghimi;Parisouj, Peiman
    • 한국수자원학회:학술대회논문집
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    • 한국수자원학회 2022년도 학술발표회
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    • pp.150-150
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    • 2022
  • This study investigates the roles of decomposition methods on high accuracy in daily rainfall prediction from light gradient boosting machine (LightGBM) algorithm. Here, empirical mode decomposition (EMD) and singular spectrum analysis (SSA) methods were considered to decompose and reconstruct input time series into trend terms, fluctuating terms, and noise components. The decomposed time series from EMD and SSA methods were used as input data for LightGBM algorithm in two hybrid models, including empirical mode-based light gradient boosting machine (EMDGBM) and singular spectrum analysis-based light gradient boosting machine (SSAGBM), respectively. A total of four parameters (i.e., temperature, humidity, wind speed, and rainfall) at a daily scale from 2003 to 2017 is used as input data for daily rainfall prediction. As results from statistical performance indicators, it indicates that the SSAGBM model shows a better performance than the EMDGBM model and the original LightGBM algorithm with no decomposition methods. It represents that the accuracy of LightGBM algorithm in rainfall prediction was improved with the SSA method when using multivariate dataset.

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XGB 및 LGBM을 활용한 Ti-6Al-4V 적층재의 변형 거동 예측 (Predicting Deformation Behavior of Additively Manufactured Ti-6Al-4V Based on XGB and LGBM)

  • 천세호;유진영;김정기;오정석;남태현;이태경
    • 소성∙가공
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    • 제31권4호
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    • pp.173-178
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    • 2022
  • The present study employed two different machine-learning approaches, the extreme gradient boosting (XGB) and light gradient boosting machine (LGBM), to predict a compressive deformation behavior of additively manufactured Ti-6Al-4V. Such approaches have rarely been verified in the field of metallurgy in contrast to artificial neural network and its variants. XGB and LGBM provided a good prediction for elongation to failure under an extrapolated condition of processing parameters. The predicting accuracy of these methods was better than that of response surface method. Furthermore, XGB and LGBM with optimum hyperparameters well predicted a deformation behavior of Ti-6Al-4V additively manufactured under the extrapolated condition. Although the predicting capability of two methods was comparable, LGBM was superior to XGB in light of six-fold higher rate of machine learning. It is also noted this work has verified the LGBM approach in solving the metallurgical problem for the first time.

부스팅 인공신경망을 활용한 부실예측모형의 성과개선 (Boosting neural networks with an application to bankruptcy prediction)

  • 김명종;강대기
    • 한국정보통신학회:학술대회논문집
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    • 한국해양정보통신학회 2009년도 춘계학술대회
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    • pp.872-875
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    • 2009
  • In a bankruptcy prediction model, the accuracy is one of crucial performance measures due to its significant economic impacts. Ensemble is one of widely used methods for improving the performance of classification and prediction models. Two popular ensemble methods, Bagging and Boosting, have been applied with great success to various machine learning problems using mostly decision trees as base classifiers. In this paper, we analyze the performance of boosted neural networks for improving the performance of traditional neural networks on bankruptcy prediction tasks. Experimental results on Korean firms indicated that the boosted neural networks showed the improved performance over traditional neural networks.

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계급불균형자료의 분류: 훈련표본 구성방법에 따른 효과 (Classification of Class-Imbalanced Data: Effect of Over-sampling and Under-sampling of Training Data)

  • 김지현;정종빈
    • 응용통계연구
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    • 제17권3호
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    • pp.445-457
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    • 2004
  • 두 계급의 분류문제에서 두 계급의 관측 개체수가 심하게 불균형을 이룬 자료를 분석할 때, 흔히 인위적으로 두 계급의 크기를 비슷하게 해준 다음 분석한다. 본 연구에서는 이런 훈련표본 구성방법의 타당성에 대해 알아보았다. 또한 훈련표본의 구성방법이 부스팅에 미치는 효과에 대해서도 알아보았다. 12개의 실제 자료에 대한 실험 결과 나무모형으로 부스팅 기법을 적용할 때는 훈련표본을 그대로 둔 채 분석하는 것이 좋다는 결론을 얻었다.

A robust approach in prediction of RCFST columns using machine learning algorithm

  • Van-Thanh Pham;Seung-Eock Kim
    • Steel and Composite Structures
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    • 제46권2호
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    • pp.153-173
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    • 2023
  • Rectangular concrete-filled steel tubular (RCFST) column, a type of concrete-filled steel tubular (CFST), is widely used in compression members of structures because of its advantages. This paper proposes a robust machine learning-based framework for predicting the ultimate compressive strength of RCFST columns under both concentric and eccentric loading. The gradient boosting neural network (GBNN), an efficient and up-to-date ML algorithm, is utilized for developing a predictive model in the proposed framework. A total of 890 experimental data of RCFST columns, which is categorized into two datasets of concentric and eccentric compression, is carefully collected to serve as training and testing purposes. The accuracy of the proposed model is demonstrated by comparing its performance with seven state-of-the-art machine learning methods including decision tree (DT), random forest (RF), support vector machines (SVM), deep learning (DL), adaptive boosting (AdaBoost), extreme gradient boosting (XGBoost), and categorical gradient boosting (CatBoost). Four available design codes, including the European (EC4), American concrete institute (ACI), American institute of steel construction (AISC), and Australian/New Zealand (AS/NZS) are refereed in another comparison. The results demonstrate that the proposed GBNN method is a robust and powerful approach to obtain the ultimate strength of RCFST columns.