• 제목/요약/키워드: kernel method

검색결과 992건 처리시간 0.024초

재생커널입자법을 이용한 체적성형공정의 해석 (Analysis of Bulk Metal Forming Process by Reproducing Kernel Particle Method)

  • 한규택
    • 한국기계가공학회지
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    • 제8권3호
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    • pp.21-26
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    • 2009
  • The finite element analysis of metal forming processes often fails because of severe mesh distortion at large deformation. As the concept of meshless methods, only nodal point data are used for modeling and solving. As the main feature of these methods, the domain of the problem is represented by a set of nodes, and a finite element mesh is unnecessary. This computational methods reduces time-consuming model generation and refinement effort. It provides a higher rate of convergence than the conventional finite element methods. The displacement shape functions are constructed by the reproducing kernel approximation that satisfies consistency conditions. In this research, A meshless method approach based on the reproducing kernel particle method (RKPM) is applied with metal forming analysis. Numerical examples are analyzed to verify the performance of meshless method for metal forming analysis.

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Adaptive kernel method for evaluating structural system reliability

  • Wang, G.S.;Ang, A.H.S.;Lee, J.C.
    • Structural Engineering and Mechanics
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    • 제5권2호
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    • pp.115-126
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    • 1997
  • Importance sampling methods have been developed with the aim of reducing the computational costs inherent in Monte Carlo methods. This study proposes a new algorithm called the adaptive kernel method which combines and modifies some of the concepts from adaptive sampling and the simple kernel method to evaluate the structural reliability of time variant problems. The essence of the resulting algorithm is to select an appropriate starting point from which the importance sampling density can be generated efficiently. Numerical results show that the method is unbiased and substantially increases the efficiency over other methods.

리눅스 운영체제에서 커널 스택의 복구를 통한 커널 하드닝 (Kernel Hardening by Recovering Kernel Stack Frame in Linux Operating System)

  • 장승주
    • 정보처리학회논문지A
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    • 제13A권3호
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    • pp.199-204
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    • 2006
  • 리눅스 운영체제에서 커널 개발자의 오류로 인하여 발생되는 시스템 정지 현상을 줄이기 위해서 커널 하드닝이 필요하다. 그러나 기존의 커널 하드닝 방식은 고장 감내 기능을 통하여 제공되고 있기 때문에 구현이 어려울 뿐만 아니라 많은 비용이 소요된다. 본 논문에서 제안하는 커널 하드닝 방식은 패닉이 발생한 커널 주소에 대한 커널 스택 내의 값들을 정상적인 값으로 복구하기 위해서 커널 내의 panic() 함수 등 커널의 일부분을 수정하므로, 적은 비용으로 시스템 가용성을 높일 수 있다. 제안한 방식의 실험을 위하여 네트워크 모듈에 강제적인 패닉 현상 유발시키고, 잘못된 스택 값을 정상적인 값으로 복구하는 동작을 확인하였다.

On Predicting with Kernel Ridge Regression

  • Hwang, Chang-Ha
    • Journal of the Korean Data and Information Science Society
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    • 제14권1호
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    • pp.103-111
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    • 2003
  • Kernel machines are used widely in real-world regression tasks. Kernel ridge regressions(KRR) and support vector machines(SVM) are typical kernel machines. Here, we focus on two types of KRR. One is inductive KRR. The other is transductive KRR. In this paper, we study how differently they work in the interpolation and extrapolation areas. Furthermore, we study prediction interval estimation method for KRR. This turns out to be a reliable and practical measure of prediction interval and is essential in real-world tasks.

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Arrow Diagrams for Kernel Principal Component Analysis

  • Huh, Myung-Hoe
    • Communications for Statistical Applications and Methods
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    • 제20권3호
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    • pp.175-184
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    • 2013
  • Kernel principal component analysis(PCA) maps observations in nonlinear feature space to a reduced dimensional plane of principal components. We do not need to specify the feature space explicitly because the procedure uses the kernel trick. In this paper, we propose a graphical scheme to represent variables in the kernel principal component analysis. In addition, we propose an index for individual variables to measure the importance in the principal component plane.

Variable selection in the kernel Cox regression

  • Shim, Joo-Yong
    • Journal of the Korean Data and Information Science Society
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    • 제22권4호
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    • pp.795-801
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    • 2011
  • In machine learning and statistics it is often the case that some variables are not important, while some variables are more important than others. We propose a novel algorithm for selecting such relevant variables in the kernel Cox regression. We employ the weighted version of ANOVA decomposition kernels to choose optimal subset of relevant variables in the kernel Cox regression. Experimental results are then presented which indicate the performance of the proposed method.

Mahalanobis 거리측정 방법 기반의 GMM-Supervector SVM 커널을 이용한 화자인증 방법 (Speaker Verification Using SVM Kernel with GMM-Supervector Based on the Mahalanobis Distance)

  • 김형국;신동
    • 한국음향학회지
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    • 제29권3호
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    • pp.216-221
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    • 2010
  • 본 논문에서는 Gaussian Mixture Model (GMM)-supervector의 Mahalanobis 거리측정 방법 기반의 Support Vector Machine (SVM) 커널을 이용한 새로운 화자인증 방법을 제안한다. 제안된 GMM-supervector SVM 커널방식은 GMM 방식과 SVM 방식을 결합한 방식으로서, GMM 파라미터에 의해 형성된 화자 및 비 화자 GMM-supervectors의 화자인증 임계값을 Mahalanobis 거리측정 방법기반의 SVM 커널에 적용함으로써 화자인증 정확도를 높인다. 제안한 방식의 성능 측정을 위해 20명의 화자를 대상으로 문장독립형 화자인증 실험을 수행하여 기존에 사용되고 있는 GMM, SVM, Kullback-Leibler (KL) divergence 거리측정 방법 기반의 GMM-supervector SVM 커널, Bhattacharyya 거리측정 방법기반의 GMM-supervector SVM 커널 방식을 통한 화자인증 결과들과 비교하였다.

Ensemble approach for improving prediction in kernel regression and classification

  • Han, Sunwoo;Hwang, Seongyun;Lee, Seokho
    • Communications for Statistical Applications and Methods
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    • 제23권4호
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    • pp.355-362
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    • 2016
  • Ensemble methods often help increase prediction ability in various predictive models by combining multiple weak learners and reducing the variability of the final predictive model. In this work, we demonstrate that ensemble methods also enhance the accuracy of prediction under kernel ridge regression and kernel logistic regression classification. Here we apply bagging and random forests to two kernel-based predictive models; and present the procedure of how bagging and random forests can be embedded in kernel-based predictive models. Our proposals are tested under numerous synthetic and real datasets; subsequently, they are compared with plain kernel-based predictive models and their subsampling approach. Numerical studies demonstrate that ensemble approach outperforms plain kernel-based predictive models.

An Overview of Unsupervised and Semi-Supervised Fuzzy Kernel Clustering

  • Frigui, Hichem;Bchir, Ouiem;Baili, Naouel
    • International Journal of Fuzzy Logic and Intelligent Systems
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    • 제13권4호
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    • pp.254-268
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    • 2013
  • For real-world clustering tasks, the input data is typically not easily separable due to the highly complex data structure or when clusters vary in size, density and shape. Kernel-based clustering has proven to be an effective approach to partition such data. In this paper, we provide an overview of several fuzzy kernel clustering algorithms. We focus on methods that optimize an fuzzy C-mean-type objective function. We highlight the advantages and disadvantages of each method. In addition to the completely unsupervised algorithms, we also provide an overview of some semi-supervised fuzzy kernel clustering algorithms. These algorithms use partial supervision information to guide the optimization process and avoid local minima. We also provide an overview of the different approaches that have been used to extend kernel clustering to handle very large data sets.

TIME DISCRETIZATION WITH SPATIAL COLLOCATION METHOD FOR A PARABOLIC INTEGRO-DIFFERENTIAL EQUATION WITH A WEAKLY SINGULAR KERNEL

  • Kim Chang-Ho
    • 한국수학교육학회지시리즈B:순수및응용수학
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    • 제13권1호
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    • pp.19-38
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    • 2006
  • We analyze the spectral collocation approximation for a parabolic partial integrodifferential equations(PIDE) with a weakly singular kernel. The space discretization is based on the spectral collocation method and the time discretization is based on Crank-Nicolson scheme with a graded mesh. We obtain the stability and second order convergence result for fully discrete scheme.

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