• Title/Summary/Keyword: 다중 주성분 분석

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A Study on the Principal Component Transformation of the Multispectral Image Data (다중분광 영상데이터의 주성분변환에 관한 연구)

  • 서용수
    • Proceedings of the IEEK Conference
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    • 2003.11a
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    • pp.389-392
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    • 2003
  • 원격감지(remote sensing) 기술의 비약적인 발전과 함께 다중분광 영상데이터의 분광대역수가 급속히 증가하고 있다. 대역수의 증가로 영상데이터의 양이 급격히 증가하게 되고, 이에 따라 이들 데이터를 처리하기 위해서는 처리속도가 빠른 영상 처리 기술이 필요하게 되었다. 분광 대역수를 줄여 빠르게 처리하는 한가지 방법으로 널리 사용되고 있는 것이 주성분변환이다. 본 논문에서는 주성분변환에 대한 처리방법에 대해 논한 후, 다중분광 영상데이터를 주성분 변환한 주성분 영상데이터를 분석하였다. 또한 주성분 영상데이터를 최대유사법으로 분류하고 그 결과를 분석하였다.

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Procedure for the Selection of Principal Components in Principal Components Regression (주성분회귀분석에서 주성분선정을 위한 새로운 방법)

  • Kim, Bu-Yong;Shin, Myung-Hee
    • The Korean Journal of Applied Statistics
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    • v.23 no.5
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    • pp.967-975
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    • 2010
  • Since the least squares estimation is not appropriate when multicollinearity exists among the regressors of the linear regression model, the principal components regression is used to deal with the multicollinearity problem. This article suggests a new procedure for the selection of suitable principal components. The procedure is based on the condition index instead of the eigenvalue. The principal components corresponding to the indices are removed from the model if any condition indices are larger than the upper limit of the cutoff value. On the other hand, the corresponding principal components are included if any condition indices are smaller than the lower limit. The forward inclusion method is employed to select proper principal components if any condition indices are between the upper limit and the lower limit. The limits are obtained from the linear model which is constructed on the basis of the conjoint analysis. The procedure is evaluated by Monte Carlo simulation in terms of the mean square error of estimator. The simulation results indicate that the proposed procedure is superior to the existing methods.

특허분석을 활용한 항해 시스템 기술예측

  • Park, Eun-Ju;Jeong, Jung-Sik
    • Proceedings of the Korean Institute of Navigation and Port Research Conference
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    • 2015.07a
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    • pp.50-52
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    • 2015
  • 특허는 기술에 대한 광범위한 정보를 포함하고 있다. 기존의 기술예측은 정량적분석으로 시도되었지만 특허분석을 활용하여 정성적분석을 실시하였다. 특허분석을 시행하기 위하여 R 프로그램을 이용하여 주성분분석과 다중선형회귀분석을 실행하였다. 주성분분석과 다중선형회귀분석을 통하여 키워드를 추출하고 추출된 키워드를 통해 기술예측을 실시한다.

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A study on the properties of sensitivity analysis in principal component regression and latent root regression (주성분회귀와 고유값회귀에 대한 감도분석의 성질에 대한 연구)

  • Shin, Jae-Kyoung;Chang, Duk-Joon
    • Journal of the Korean Data and Information Science Society
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    • v.20 no.2
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    • pp.321-328
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    • 2009
  • In regression analysis, the ordinary least squares estimates of regression coefficients become poor, when the correlations among predictor variables are high. This phenomenon, which is called multicollinearity, causes serious problems in actual data analysis. To overcome this multicollinearity, many methods have been proposed. Ridge regression, shrinkage estimators and methods based on principal component analysis (PCA) such as principal component regression (PCR) and latent root regression (LRR). In the last decade, many statisticians discussed sensitivity analysis (SA) in ordinary multiple regression and same topic in PCR, LRR and logistic principal component regression (LPCR). In those methods PCA plays important role. Many statisticians discussed SA in PCA and related multivariate methods. We introduce the method of PCR and LRR. We also introduce the methods of SA in PCR and LRR, and discuss the properties of SA in PCR and LRR.

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Estimation of S&T Knowledge Production Function Using Principal Component Regression Model (주성분 회귀모형을 이용한 과학기술 지식생산함수 추정)

  • Park, Su-Dong;Sung, Oong-Hyun
    • Journal of Korea Technology Innovation Society
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    • v.13 no.2
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    • pp.231-251
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    • 2010
  • The numbers of SCI paper or patent in science and technology are expected to be related with the number of researcher and knowledge stock (R&D stock, paper stock, patent stock). The results of the regression model showed that severe multicollinearity existed and errors were made in the estimation and testing of regression coefficients. To solve the problem of multicollinearity and estimate the effect of the independent variable properly, principal component regression model were applied for three cases with S&T knowledge production. The estimated principal component regression function was transformed into original independent variables to interpret properly its effect. The analysis indicated that the principal component regression model was useful to estimate the effect of the highly correlate production factors and showed that the number of researcher, R&D stock, paper or patent stock had all positive effect on the production of paper or patent.

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Multi-temporal Remote Sensing Data Analysis using Principal Component Analysis (주성분분석을 이용한 다중시기 원격탐사 자료분석)

  • Jeong, Jong-Chul
    • Journal of the Korean Association of Geographic Information Studies
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    • v.2 no.3
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    • pp.71-80
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    • 1999
  • The aim of the present study is to define and tentatively to interpret the distribution of polluted water released from Lake Sihwa into the Yellow Sea using Landsat TM. Since the region is an extreme Case 2 water, empirical algorithms for detecting concentration of chlorophyll-a and suspended sediments have limitations. This work focuses on the use of multi-temporal Landsat TM data. We applied PCA to detect evolution of spatial feature of polluted water after release from the lake Sihwa. The PCA results were compared with in situ data, such as chlorophyll-a, suspended sediments, Secchi disk depth(SDD), surface temperature, remote sensing reflectance at six channel of SeaWiFS. Also, the in situ remote sensing reflectance obtained by PRR-600(Profiling Reflectance Radiometer) was compared with PCA results of Landsat TM data sets to find good correlation between first Principal Component and Secchi disk depth($R^2$=0.7631), although other variables did not result in such a good correlation. Therefore, Problems in applying PCA techniques to multi-spectral remotely sensed data were also discussed in this paper.

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Land-cover classification using multi-temporal Radarsat-1 and ENVISAT data (다중 시기 Radarsat-1 자료와 ENVISAT 자료를 이용한 토지 피복 분류)

  • Park No-Wook;Chi Kwang-Hoon
    • Proceedings of the KSRS Conference
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    • 2006.03a
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    • pp.303-306
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    • 2006
  • 이 연구에서는 C 밴드 SAR 자료이면서 서로 다른 편광 상태의 자료를 제공할 수 있는 다중 시기 Radarsat-1 자료와 ENVISAT ASAR 자료를 이용한 토지 피복 분류를 수행하였다. 다중 시기/편광 자료로부터 평균 후방산란계수, 시간적 변이도, 긴밀도 등의 특징을 기본적으로 추출하였고, 이외에 상호 비교를 위해 주성분 분석을 이용한 특징 추출을 시도하였다. 특징들을 이용한 분류기법으로는 Random Forests를 적용하였다. 충남 예당평야 일대를 대상으로 사례연구를 수행한 결과, 주성분 분석을 통한 특징과 다편광 자료를 이용하였을 때 분류 정확도가 향상되는 것으로 나타났다.

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A Multi-Resolution Distance Measure Using Grey Block Distance Algorithms for Principal Component Analysis (주성분분석에서의 제안된 GBD 알고리즘을 이용한 다중해상도 거리 측정)

  • Hong, Jun-Sik
    • Proceedings of the KIEE Conference
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    • 2002.07d
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    • pp.2671-2673
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    • 2002
  • 본 논문에서는 주성분분석(principal component analysis; 이하 PCA)기법을 이용, 이차원 영상을 분류하여 다중해상도에서 기존의 그레이 블록 거리(grey block distance; GBD, 이하 GBD)알고리즘과 비교하여 이차원 영상간의 상대적 식별을 더 용이하게 하기 위한 새로운 GBD 알고리즘 방법을 제안한다. 이 제시된 방법은 다중해상도에서 기존의 GBD 알고리즘과 비교해서 영상이 급격히 변화하는 부분의 정보를 잃지 않게 개선할 수 있었다. 모의 실험 결과로부터 기존의 GBD 알고리즘에 비하여 상대적 식별이 더 용이함을 확인하였다.

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A Multi-Resolution Distance Measure for Two Dimensional Images Using Principal Component Analysis and Independent Component Analysis (주성분분석 및 독립성분분석을 이용한 이차원 영상에서의 다중해상도 거리 측정)

  • 홍준식
    • Proceedings of the Korean Information Science Society Conference
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    • 2002.04a
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    • pp.247-249
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    • 2002
  • 본 논문에서는 주성분 분석(principal component analysis; 이하 PCA) 및 독립성분분석(independent component analysis; 이하 ICA)을 이용, 이차원 영상을 분류하여 다중해상도에서 영상간의 거리를 측정하여 PCA 와 ICA 중에서 어느 것이 영상간의 상대적 식별을 용이하게 하는지 모의 실험을 통하여 확인하고자 한다. 모의 실험 결과로부터, ICA가 PCA에 비하여 영상간의 상대적 식별이 용이하여 빨리 수렴이 되는 것을 모의 실험을 통하여 확인하였다.

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Principal Components Regression in Logistic Model (로지스틱모형에서의 주성분회귀)

  • Kim, Bu-Yong;Kahng, Myung-Wook
    • The Korean Journal of Applied Statistics
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    • v.21 no.4
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    • pp.571-580
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    • 2008
  • The logistic regression analysis is widely used in the area of customer relationship management and credit risk management. It is well known that the maximum likelihood estimation is not appropriate when multicollinearity exists among the regressors. Thus we propose the logistic principal components regression to deal with the multicollinearity problem. In particular, new method is suggested to select proper principal components. The selection method is based on the condition index instead of the eigenvalue. When a condition index is larger than the upper limit of cutoff value, principal component corresponding to the index is removed from the estimation. And hypothesis test is sequentially employed to eliminate the principal component when a condition index is between the upper limit and the lower limit. The limits are obtained by a linear model which is constructed on the basis of the conjoint analysis. The proposed method is evaluated by means of the variance of the estimates and the correct classification rate. The results indicate that the proposed method is superior to the existing method in terms of efficiency and goodness of fit.