Title: 多變量分析
Multivariate Analysis
Authors: 黃冠華
Open Education Office
開放教育推動中心
Issue Date: 2015
Abstract: 課程首頁

The aims of this course are:

(1) To illustrate extensions of univariate statistical methodology to multivariate data.
(2) To introduce students to some of the distinctive statistical methodologies which arise only in multivariate data.
(3) To introduce students to some of the computational techniques required for multivariate analysis available in standard statistical packages.

Topics include: multivariate techniques and analyses, multivariate analysis of variance, principal component analysis and factor analysis, cluster analysis, discrimination and classification.
課程概述與目標

The aims of this course are:

(1) To illustrate extensions of univariate statistical methodology to multivariate data.
(2) To introduce students to some of the distinctive statistical methodologies which arise only in multivariate data.
(3) To introduce students to some of the computational techniques required for multivariate analysis available in standard statistical packages.

Topics include: multivariate techniques and analyses, multivariate analysis of variance, principal component analysis and factor analysis, cluster analysis, discrimination and classification.

 

課程大綱




單元主題

內容綱要

課本範圍(頁數)



Aspects of multivariate analysis 

(1) introduction
(2) review of linear algebra and matrices

1-30, 49-110



Matrix algebra and random vectors


(1) random vectors
(2) distance
(3) sample geometry
(4) random sampling of sample mean vector and covariance matrix
(5) generalized variance
(6) matrix operations of sample values


30-37, 60-78,
111-148



Multivariate normal distribution

(1) density and properties
(2) sampling from multivariate normal and MLE
(3) sampling distribution and large sample behavior of X and S
(4) assessing the assumption of normality
(5) transformation to near normality

149-209



Inferences about a mean vector

(1) inference for a normal population mean
(2) Hotelling's T2 and likelihood ratio test
(3) confidence regions and simultaneous comparisons of component means
(4) large sample inferences about a population mean vector

210-238



Comparisons of several multivariate
means

(1) paired comparisons and repeated measures design
(2) comparing mean vectors from two populations
(3) comparing several multivariate population means (one-way MANOVA)

273-312



Principal components

(1) introduction
(2) population principal components
(3) summarizing sample variation by principal components
(4) large sample inferences

430-459



Factor analysis

(1) introduction
(2) orthogonal factor model
(3) methods of estimation
(4) factor rotation
(5) factor scores

481-526



Clustering

(1) introduction
(2) similarity measures
(3) hierarchical clustering methods
(4) k-means clustering methods
(5) multidimensional scaling

671-715



Discrimination and classification

(1) introduction
(2) separation and classification for two populations
(3) classification with two multivariate normal populations
(4) evaluating classification functions
(5) fisher discriminant function
(6) classification with several population

575-644




 

參考用書

Johnson, R.A. and Wichern, D.W., 2007. Applied Multivariate Statistical Analysis (6th Edition). Prentice Hall, Upper Saddle River, NJ.

 

評分標準




項目

百分比



4 homework assignments

50%



Midterm exam

20%



Final exam

30%




 

 
授課對象:碩士生
預備知識:線性代數、機率、數學統計與線性迴歸
URI: http://ocw.nctu.edu.tw/course_detail.php?bgid=1&nid=543
http://hdl.handle.net/11536/132461
Appears in Collections:Open Course Ware