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2.4 投影
线性相关、Cholesky分解(Cholesky factorization)、特征值分解(eigen decomposition)、SVD分解(singular value decomposition)、PCA分析(principal component analysis),以及上一节介绍的矩阵线性变换等概念之间关系千丝万缕。这一节通过投影(projection)一探究竟。
举一个例子,主成分分析实际上寻找数据在主元空间内投影。图2.20所示杯子,它是一个3D物体。如果想要在一张图展示这只杯子,而且尽可能多地展示杯子的细节,就需要从空间多个角度观察杯子并找到合适角度。这个过程实际上是将三维数据投影到二维平面过程。这也是一个降维过程,即从三维变成二维。图2.21展示的是杯子六个平面上投影的结果。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P74_3712252.jpg?sign=1739383018-NoiBj8NT8X5h9R2O8Kh5ARGpIOn0QU7j-0-6fa761fbbf324c134be4be0ea8c3d235)
图2.20 咖啡杯六个投影方向
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P75_3712253.jpg?sign=1739383018-Lrn0UKdBSmdOrJrjNe0ANCXoxQm8oBNP-0-e5c86c24803fe86fecdf0016e317fee0)
图2.21 咖啡杯在六个方向的投影图像
丛书第三册数学部分介绍过向量投影运算。投影运算一般分两种:标量投影(scalar projection)和矢量投影(vector projection)。首先用余弦解释标量投影,如图2.22(a)所示,b为向量a在v方向标量投影。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P75_3712254.jpg?sign=1739383018-pbHucGgczEiiggOayTi07HqHlWZaAPrL-0-a2eda7a535c6b972e5afe505ba2f4ffa)
下式同样用余弦解释矢量投影:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P75_3712255.jpg?sign=1739383018-XEnWqbBwZADarPx0IqEOlsWT7gK772QT-0-d2a0752f46cd559faad2c4ff391c4f83)
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P75_3712256.jpg?sign=1739383018-cOtgdu3gPMEjQUOp660BMvsXcPqbi6UW-0-db95ea248cd6a335e2a87e171412f6c7)
图2.22 向量投影和标量投影
图2.22(b)展示第二种计算投影方法。向量a向v投影得到向量投影â,而向量差a – â 垂直于v;据此构造如下等式:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P75_3712257.jpg?sign=1739383018-WkDIebJ0Egw7oVJ1bVtgzREkBNiAApi8-0-82b4db8c46328789889ed5fef8bb0e22)
上式中,v(vTv)-1vT常被称作帽子矩阵(hat matrix)。帽子矩阵和最小二乘回归有着紧密联系,本书回归部分会深入介绍。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P76_3712258.jpg?sign=1739383018-jQ1H5FAAJA38BRUDJ2pJZAwBUvToNqlR-0-a46da9e00de9ab0d25cf81737d01f763)
图2.23 向量向平面和超平面投影
如图2.23(a)所示,两个线性无关向量v1和v2构造一个平面H;图2.23(b)所示为,多个线性无关向量v1、v2、…、vq构造一个超平面F。向量a向H平面投影得到向量â。向量â由v1和v2构造。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P76_3712261.jpg?sign=1739383018-yibXrzDa3AjjezQSm47GLDM4BdEaaHEz-0-ac722a75e4ba15954c2f6c4b5f208431)
向量差a – â垂直于H平面,因此垂直于平面内任何向量。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P76_3712264.jpg?sign=1739383018-mYblyMcL6KQt0kdGJxaIlhhCZ2OPGZym-0-667051997186daa8816dfb9f32ce74da)
以上结论也适用于图2.23(b)展示超平面情况。
下面来看一看数据点投影。如图2.24所示,平面上一点Q(4, 6)和直线上不同位置点之间距离构成一系列线段,d表示这些线段长度。图2.24下两图展示d和d2(线段长度平方值)随位置变化。这些线段中最短那条,即d2最小,为Q和Q点在直线上投影点P之间距离,QP垂直于直线。寻找最短线段实际上就是优化过程。优化问题构建和求解将会在本书后文详细介绍。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P76_3712265.jpg?sign=1739383018-70pPccAJbYVzLLVwBg9jFLMfMRnUBs0M-0-430177e350a0361887636896faef04d6)
图2.24 平面上一点向直线投影
如图2.25所示,平面上多点投影到同一条直线上,获得一系列投影线段。当直线截距和斜率不断变化时,这些投影线段之和不断变化。可以想象,某个直线截距和斜率组合让投影线段和最小。以上思路即主成分分析和主成分回归核心。本书后面会展开讲解这两种重要分析方法。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P77_3712266.jpg?sign=1739383018-9OUDBLKxOBpHptCiVwef9QV4IUyybpBc-0-b36dfa7960da66c56ae6acefef966352)
图2.25 平面上多点向直线投影
以下代码可完成图2.24和图2.25计算和绘图,还绘制出空间多点向空间直线投影图像。
B4_Ch1_4.m clc; close all; clear all v = [1;1/2]; center = [0,1]; t = -2:0.25:10; x = v(1)*t + center(1); y = v(2)*t + center(2); X = [0, 0; 1, 5; 2, -2; 4, 6; 6, 0; 8, -1;]; X_c = X - center; b = X_c*v/(v'*v); X_h = b*v'; X_h = X_h + center; fig_i = 1; figure(fig_i) fig_i = fig_i + 1; plot(x,y); hold on plot(X(4,1),X(4,2),'xb') vectors = [x',y'] - [X(4,1),X(4,2)]; h = quiver(X(4,1)+0*vectors(:,1),X(4,2)+0*vectors(:,1)... ,vectors(:,1),vectors(:,2),'k'); h.ShowArrowHead = 'off'; h.AutoScale = 'off'; daspect([1,1,1]) box off; grid off figure(fig_i) fig_i = fig_i + 1; subplot(2,1,1) vector_length = vecnorm(vectors,2,2); plot(x,vector_length) ylim([0,9]); box off subplot(2,1,2) vector_length = vecnorm(vectors,2,2); plot(x,vector_length.^2) box off figure(fig_i) fig_i = fig_i + 1; plot(x,y); hold on plot(X(:,1),X(:,2),'xb') plot(X_h(:,1),X_h(:,2),'xr') plot([X(:,1),X_h(:,1)]',[X(:,2),X_h(:,2)]','k') daspect([1,1,1]) box off; grid off %% 3D, project points to a line in space v = [1;1/2;2]; center = [0,1,2]; t = -2:1:4; x = v(1)*t + center(1); y = v(2)*t + center(2); z = v(3)*t + center(3); X = [0, 0, 0; 1, 5, 2; 2, -2, 5; 4, 6, -1; 6, 0, 3; 8, -1, 1;]; X_c = X - center; b = X_c*v/(v'*v); X_h = b*v'; X_h = X_h + center; figure(fig_i) fig_i = fig_i + 1; plot3(x,y,z); hold on plot3(X(:,1),X(:,2),X(:,3),'xb') plot3(X_h(:,1),X_h(:,2),X_h(:,3),'xr') plot3([X(:,1),X_h(:,1)]',[X(:,2),X_h(:,2)]',[X(:,3),X_h(:,3)]','k') daspect([1,1,1]) box off; grid off
有了以上向量投影和点投影基础,下面讨论数据投影、特征值分解、SVD分解和Cholesky分解关系。图2.26展示原始数据X,X有2列[x1,x2],1000行,意味着X有两个维度x1和x2,1000个观察点。观察图2.26,发现x1和x2这两个维度概率分布几乎一致。经过处理,数据矩阵X已经列中心化。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P79_3712269.jpg?sign=1739383018-uhkb2AnZTIe97edVZS8wSmt9FVhrUKz6-0-0003a0f432be4a9f57d69c77e2e457f7)
图2.26 原始数据X统计学特点
回忆丛书第三册数学部分矩阵旋转内容。如图2.27所示,数据矩阵X通过下式绕中心(0, 0)旋转15°得到数据Y。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P79_3712270.jpg?sign=1739383018-iZndNT1jmzZj7K8Vw6tcqRLbhfBtXade-0-79d5711a612181993ac9e55198f84b4e)
从另外一个角度来看,Z相当于X向v1和v2这两个向量投影得到结果,即:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P80_3712271.jpg?sign=1739383018-eqG4F3w6rPfAhomJFgckTN7cBqsDa8Px-0-26a65a640af50befaa041e256b1399ed)
其中,
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P80_3712272.jpg?sign=1739383018-7mMthYUDcxYDpGwbJV1Uukna15nyFHBu-0-b2ea7360b8ef7eb110631946d1334f9c)
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P80_3712273.jpg?sign=1739383018-WnVS5NQc0smacnN9bMwmylVPSglu7mwO-0-b05e67eece96f9714b1386f73fba5f31)
图2.27 数据X顺时针旋转15°得到数据Z
通过下列简单计算,知道v1和v2这两个向量正交。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P80_3712275.jpg?sign=1739383018-wOqqMUZIyWT5X94MtVhbvXhNnZCY4FSE-0-356ff7e00a37cedc0c053676c50fa5a6)
且v1和v2这两个向量为单位向量:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P80_3712276.jpg?sign=1739383018-upgYDPy48EUGSHC0HhHqzRIPyEgcRpnA-0-0d24db7841ede97b1a6e0cc3e3e7933c)
观察V,发现如下等式成立:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P80_3712277.jpg?sign=1739383018-udVA16fpp60RDcOwm7lVvQovzfOiuLUD-0-6d5de1900842a04ac66d31ac5cd0f9e8)
X投影在任意正交坐标系中,该操作也常被称作基底转换(change of basis)。
图2.28展示从向量v1和v2角度观察数据分布情况。发现数据沿v2方向要更为密集,方差更小;沿v1方向更为松散,方差更大。由于数据已经中心化,矩阵Z第一列向量z1方差即投影距离平方和平均数。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P80_3712278.jpg?sign=1739383018-wAREh3sQkV82217glDXBqt9Z24hcO86D-0-481a9bc7a92004acb35abf97cf1df2a2)
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P81_3712280.jpg?sign=1739383018-UIQc51fynAN1byRZuispBzsbWkJfn9Sb-0-cded502f6edae98bc1162d93f820e4fa)
图2.28 数据Z (X顺时针旋转15°)沿两个维度统计学特点
图2.29展示数据X顺时针旋转30°得到数据Z。如图2.30所示,发现数据Z沿v2方向变得更为集中,方差进步一步减小;沿v1方向数据变得更为松散,方差进一步增大。如图2.31所示,当旋转角度增大到45°时,图2.32告诉我们Z沿v2方向方差达到最小值,Z沿v1方向方差达到最大值;并且,Z两列数据z1和z2,相关性几乎为0。这种思路即PCA分析核心。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P81_3712282.jpg?sign=1739383018-T9ahLHwrL62DB0E7QtJbWfBr4sk9A2o7-0-089473034ff7f518f588c6826e07116c)
图2.29 数据X顺时针旋转30°得到数据Z
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P81_3712283.jpg?sign=1739383018-z5sHtzohgpgntwhkWvarEshUCa1RoPXC-0-fbf5b83ec4e52e7b43752754c04d6f20)
图2.30 数据Z,X顺时针旋转30°,沿两个维度分布
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P82_3712284.jpg?sign=1739383018-PpYHdmFpiLQ2kyl795MNbjl2gK9rD33U-0-ded0a857e8278860accf80de857fd130)
图2.31 数据X顺时针旋转45°得到数据Z
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P82_3712285.jpg?sign=1739383018-Se70dBpN2i3qUgp0TFpVU5sK06GN7Rhr-0-aae8d6be3f619ddde86d906b9da6c6e7)
图2.32 数据Z,X顺时针旋转45°,沿两个维度分布
假设数据X已经中心化,因此X样本方差-协方差矩阵ΣX通过下式获得:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P82_3712287.jpg?sign=1739383018-C71kMr2iVeWzfW5ckx0QOEADxA1UPtFL-0-9e282f6509316eac958a5785a778ea52)
其中,n为X行数,即观察点数量;注意,总体方差-协方差矩阵,分母为n。对ΣX进行特征值分解得到:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P82_3712288.jpg?sign=1739383018-pUGN0N0PTlOGmjjeP2LaqEhGzfesONOo-0-6a072be2db5f92cf17116df5ada217ab)
其中,V列向量为特征向量,Λ主对角线元素为特征值。因为ΣX为对称矩阵。因此V列向量相互垂直。
同理,计算数据Z方差-协方差矩阵ΣZ,并得到ΣZ和ΣX关系:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P83_3712289.jpg?sign=1739383018-AeOF8YzfVqBKqzqq2L7ezUWKsAdX6hz9-0-fecba66bbdecc630194428c7f3bb7de2)
而对X进行SVD分解,得到:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P83_3712290.jpg?sign=1739383018-iP4oJ4rXdZub8z6htu8MAmvehDJEjdri-0-ebdb0e5e204470ceaa4e1e63304318df)
其中:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P83_3712292.jpg?sign=1739383018-OWshY9tVhTMvs4WlQec2bJyzmk3sXdFN-0-5d4d38041b4cfafadb34a7aaa90c1f21)
XTX通过下式获得:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P83_3712294.jpg?sign=1739383018-KiBDmEucTzIjjgC3jhAfpok2DTpcZpD5-0-1b490b5a5a7d9ece0aa529a413fbb0bd)
观察ΣX特征值分解和X的SVD分解结果,容易得到以下结论:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P83_3712295.jpg?sign=1739383018-hEY0nArLXDVq4QD6Njuqaz82dlpviAM5-0-64db7f0bc858fae6774c3e10542a5e29)
丛书第二册随机运动内容介绍过,通过Cholesky分解得到上三角矩阵,将相关性系数为0、服从正态分布多元随机数转化为服从一定相关性随机数数据。对ΣX进行Cholesky分解,获得如下等式关系:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P83_3712296.jpg?sign=1739383018-wCaLJQtJ1ZmrBfTRU0eYgACwmVCLkwm4-0-0d255e36e0cdbb0306d8a0060ef7a9ed)
L为下三角矩阵。回忆丛书第三册介绍的矩阵转化内容,发现V对应旋转操作,对应缩放操作。对ΣX进行Cholesky分解,获得下式:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P83_3712297.jpg?sign=1739383018-Exi6D48iwi8y65AjJDGvG7Me1x05XwWZ-0-81ea01656813725f9b7650cf499d4481)
其中,为R上三角矩阵。
若Y = [y1, y2] 为服从相关性系数为0标准正态分布(均值为0,方差为1)二元随机数矩阵。那么下式获得图2.26中数据矩阵X:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P83_3712300.jpg?sign=1739383018-e0orF6y7wWO0lzha59xSw54Vbnia9n9b-0-bb7cbc3a6ca50c37aba87c4afd1f882e)
下式验证X方差-协方差矩阵为ΣX:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P83_3712301.jpg?sign=1739383018-KtfCfIHjvNHlCLHHVaJ2zcqDRWL76xZ0-0-726d2af39bd1ac6c65862d2452c500fa)
数据Z通过R (先缩放,后旋转VT)获得数据X。数据Y 和数据X相互转换关系如图2.33所示。而SVD分解实际上也是矩阵转化,U和V矩阵都对应旋转,而S对应缩放。对矩阵转化不太熟悉读者,参考丛书第三册数学部分内容。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P84_3712304.jpg?sign=1739383018-ogaf33h1djxCFDVUt0EzQ3gIxellHJAR-0-08e840dc89ef4f85c158054177676046)
图2.33 数据Y 和数据X相互转换
顺着上述思路,我们可以把多元正态分布(multivariate normal distribution)收纳到以投影为核心知识网络中来。丛书第三册第2章介绍多元正态分布概率密度函数矩阵表达式,如下:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P84_3712305.jpg?sign=1739383018-bqK3kki43PTPq04ToYcRaimD7NUFAE2Q-0-1d5d8fc6b6cd80b29b4227eae5c55dba)
其中,X =(x1, x2, …, xq),代表服从多元正态分布随机数据矩阵,每一维度随机数为列向量(如图2.12所示);x为行向量,代表一个观察点;μX 同样为行向量,具体形式如下:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P84_3712306.jpg?sign=1739383018-tBgqp7ZHD0cXSQDovIJXdxJt2UGmSHsA-0-c759d2827b84afecf9a7558f9e95ed73)
观察多元正态分布矩阵表达式,发现如下看似熟悉的式子:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P84_3712307.jpg?sign=1739383018-yKS8MtR9BPUTNZmNpPG9s2vIixZc65HY-0-e1f15631482baaab7bb6603c3336b353)
将上式中ΣX替换为Cholesky分解式,得到下式:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P84_3712308.jpg?sign=1739383018-KQwgFfEuxGEY1fSgzYVR9Khilev1wOYF-0-fd361c7bcd68edb047f79a600ccc60dc)
发现上式在图2.33旋转(V)和缩放()操作之前加了一个中心平移操作(x−μX)。由此,得到x和y关系:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P85_3712312.jpg?sign=1739383018-qabTLEt5CB980yySO4dwRI9TXtDZ7b0o-0-3951fce87a8317e55ff4928364efe8ae)
以上操作正是丛书第三册第2章中讨论椭圆变形过程,如图2.34所示。
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P85_3712313.jpg?sign=1739383018-po4E4YeKi5ozk2m0KO5NFDm4ogCNlJc9-0-cc60c8a05b6d35a15eab73b8b0e5f704)
图2.34 椭圆变形过程 (来自丛书第三册第2章)
若不考虑缩放步骤,即仅仅用旋转和平移构造y:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P85_3712315.jpg?sign=1739383018-mI3Y7b4ALBWX9XckwzvULPogkxT6WOC6-0-2ae556580410666469e42d654461901c)
得到下式:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P85_3712316.jpg?sign=1739383018-NYbQBnvJYg3PLsaJKeXV6e939COsOogR-0-b7ae4762b8467ea4c4b405aa237d2a6a)
上式取任意正数定值代表着一个多维空间椭球体。如当q = 2时,得到平面内椭圆表达式:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P86_3712317.jpg?sign=1739383018-6BOlO2TWxCwMekfiVvYP850yA91KmAbx-0-c4db2f45a31647f2de5680ccaecb29c7)
其中,c为任何大于0常数。
本书后面将详细介绍更多有关椭圆和其他双曲线内容。此外,若多元正态分布随机数据矩阵采用X =(x1, x2, …, xq)T 形式,即每一维度随机数为行向量,观察点x为列向量。则多元正态分布概率密度函数矩阵表达式如下:
![](https://epubservercos.yuewen.com/745BB7/19549640201517806/epubprivate/OEBPS/Images/Figure-P86_3712318.jpg?sign=1739383018-GFdjtxraUM91wAGmV4boPoFEIaYYtY3O-0-499d96025e6d364e73ec979047b9260e)
以下代码获得图2.26~图2.33,并且获得特征值分解、SVD分解、PCA分析和Cholesky分解之间关系。
B4_Ch1_5.m clc; clear all; close all corr_rho = cos(pi/6); SIGMA = 3*[1,0;0,1]*[1,corr_rho;corr_rho,1]*[1,0;0,1]; num = 1000; rng('default') X = mvnrnd([0,0],SIGMA,num); % R = chol(SIGMA) % X = mvnrnd([0,0],[1,0;0,1],num); % X = X*R; X = X - mean(X); theta = pi*1/12*3; v1 = [cos(theta); sin(theta)]; v2 = [-sin(theta); cos(theta)]; V = [v1,v2]; figure(1) plot(X(:,1),X(:,2),'.'); hold on daspect([1,1,1]) xlim([-8,8]); ylim([-8,8]); xlabel('x_1'); ylabel('x_2') h = quiver(0,0,v1(1),v1(2)); h.AutoScaleFactor = 3; h = quiver(0,0,v2(1),v2(2)); h.AutoScaleFactor = 3; hAxis = gca; hAxis.XAxisLocation = 'origin'; hAxis.YAxisLocation = 'origin'; box off axes_x = [-8, 0; 8, 0;]*V; axes_y = [0, 8; 0, -8;]*V; Z = X*V; figure(2) plot(Z(:,1),Z(:,2),'.'); hold on plot(axes_x(:,1)',axes_x(:,2)','k') plot(axes_y(:,1)',axes_y(:,2)','k') daspect([1,1,1]) xlim([-8,8]); ylim([-8,8]); xlabel('y_1'); ylabel('y_2') hAxis = gca; hAxis.XAxisLocation = 'origin'; hAxis.YAxisLocation = 'origin'; box off h = quiver(0,0,1,0); h.AutoScaleFactor = 3; h = quiver(0,0,0,1); h.AutoScaleFactor = 3; edges = [-8:0.4:8]; figure(3) subplot(2,1,1) histogram(Z(:,1),edges,'Normalization','probability') xlim([-8,8]); ylim([0,0.35]) ylabel('Probability'); xlabel('y2') box off; grid off subplot(2,1,2) histogram(Z(:,2),edges,'Normalization','probability') xlim([-8,8]); ylim([0,0.35]) ylabel('Probability'); xlabel('y2') box off; grid off SIGMA_Z = cov(Z); figure(4) heatmapHandle = heatmap(SIGMA_Z); caxis(heatmapHandle,[0 6]); %% Conversions [n,~] = size(X); % n, number of observations SIGMA = (X.'*X)/(n-1) cov(X) [V_eig,LAMBDA] = eig(SIGMA) [U,S,V_svd] = svd(X); S([1,2],:) S([1,2],:).^2/(n-1) [coeff,score,latent] = pca(X); % coeff, V % score, Z % latent, lambda figure(5) subplot(1,2,1) plot(X(:,1),X(:,2),'.'); hold on daspect([1,1,1]) xlim([-8,8]); ylim([-8,8]); xlabel('x_1'); ylabel('x_2') h = quiver(0,0,coeff(1,1),coeff(2,1)); h.AutoScaleFactor = 3; h = quiver(0,0,coeff(1,2),coeff(2,2)); h.AutoScaleFactor = 3; hAxis = gca; hAxis.XAxisLocation = 'origin'; hAxis.YAxisLocation = 'origin'; box off subplot(1,2,2) plot(score(:,1),score(:,2),'.'); hold on daspect([1,1,1]) xlim([-8,8]); ylim([-8,8]); xlabel('z_1'); ylabel('z_2') hAxis = gca; hAxis.XAxisLocation = 'origin'; hAxis.YAxisLocation = 'origin'; box off R = chol(SIGMA) % X = mvnrnd([0,0],[1,0;0,1],num); % X = X*R; Z = X*R^(-1); cov(Z) figure(5) subplot(1,2,1) plot(X(:,1),X(:,2),'.'); hold on daspect([1,1,1]) xlim([-8,8]); ylim([-8,8]); xlabel('x_1'); ylabel('x_2') h = quiver(0,0,v1(1),v1(2)); h.AutoScaleFactor = 3; h = quiver(0,0,v2(1),v2(2)); h.AutoScaleFactor = 3; hAxis = gca; hAxis.XAxisLocation = 'origin'; hAxis. YAxisLocation = 'origin'; box off subplot(1,2,2) plot(Z(:,1),Z(:,2),'.'); hold on daspect([1,1,1]) xlim([-8,8]); ylim([-8,8]); xlabel('z_1'); ylabel('z_2') hAxis = gca; hAxis.XAxisLocation = 'origin'; hAxis.YAxisLocation = 'origin'; box off