Mahalanobis distance in R

烂漫一生 提交于 2019-12-29 03:32:48

问题


I have found the mahalanobis.dist function in package StatMatch (http://cran.r-project.org/web/packages/StatMatch/StatMatch.pdf) but it isn't doing exactly what I want. It seems to be calculating the mahalanobis distance from each observation in data.y to each observation in data.x

I would like to calculate the mahalanobis distance of one observation in data.y to all observations in data.x. Basically calculate a mahalanobis distance of one point to a "cloud" of points if that makes sense. Kind of getting at the idea of the probability of an observation being part of another group of observations

This person (http://people.revoledu.com/kardi/tutorial/Similarity/MahalanobisDistance.html) seems to be doing this and I've tried to replicate his process in R but it is failing when I get to the bottom part of the equation:

mahaldist = sqrt((inversepooledcov %*% t(meandiffmatrix)) %*% meandiffmatrix)

All the code I am working with is here:

a = rbind(c(2,2), c(2,5), c(6,5),c(7,3))

colnames(a) = c('x', 'y')

b = rbind(c(6,5),c(3,4))

colnames(b) = c('x', 'y')

acov = cov(a)
bcov = cov(b)

meandiff1 = mean(a[,1]) - mean(b[,1])

meandiff2 = mean(a[,2]) - mean(b[,2])

meandiffmatrix = rbind(c(meandiff1,meandiff2))

totaldata = dim(a)[1] + dim(b)[1]

pooledcov = (dim(a)[1]/totaldata * acov) + (dim(b)[1]/totaldata * bcov)

inversepooledcov = solve(pooledcov)

mahaldist = sqrt((inversepooledcov %*% t(meandiffmatrix)) %*% meandiffmatrix)

回答1:


How about using the mahalanobis function in the stats package:

 mahalanobis(x, center, cov, inverted = FALSE, ...)



回答2:


I've been trying this out from the same website that you looked at and then stumbled upon this question. I managed to get the script to work, But I get a different result.

#WORKING EXAMPLE
#MAHALANOBIS DIST OF TWO MATRICES

#define matrix
mat1<-matrix(data=c(2,2,6,7,4,6,5,4,2,1,2,5,5,3,7,4,3,6,5,3),nrow=10)
mat2<-matrix(data=c(6,7,8,5,5,5,4,7,6,4),nrow=5)
#center data
mat1.1<-scale(mat1,center=T,scale=F)
mat2.1<-scale(mat2,center=T,scale=F)
#cov matrix
mat1.2<-cov(mat1.1,method="pearson")
mat2.2<-cov(mat2.1,method="pearson")
n1<-nrow(mat1)
n2<-nrow(mat2)
n3<-n1+n2
#pooled matrix
mat3<-((n1/n3)*mat1.2) + ((n2/n3)*mat2.2)
#inverse pooled matrix
mat4<-solve(mat3)
#mean diff
mat5<-as.matrix((colMeans(mat1)-colMeans(mat2)))
#multiply
mat6<-t(mat5) %*% mat4
#multiply
sqrt(mat6 %*% mat5)

I think the function mahalanobis() is used to compute mahalanobis distances between individuals (rows) in one matrix. The function pairwise.mahalanobis() from package(HDMD) can compare two or more matrices and give mahalanobis distances between the matrices.




回答3:


Your output before taking the square root is :

inversepooledcov %*% t(meandiffmatrix) %*% meandiffmatrix
          [,1]        [,2]
x -0.004349227 -0.01304768
y  0.114529639  0.34358892

I think you can'take the square root of negative numbers number, so you have NAN for negative elements:

 sqrt(inversepooledcov %*% t(meandiffmatrix) %*% meandiffmatrix)
       [,1]      [,2]
x       NaN       NaN
y 0.3384223 0.5861646

Warning message:
In sqrt(inversepooledcov %*% t(meandiffmatrix) %*% meandiffmatrix) :
  NaNs produced



回答4:


You can wrap the function stats::mahalanobis as bellow to output a mahalanobis distance matrix (pairwise mahalanobis distances):

# x - data frame
# cx - covariance matrix; if not provided, 
#      it will be estimated from the data
mah <- function(x, cx = NULL) {
  if(is.null(cx)) cx <- cov(x)
  out <- lapply(1:nrow(x), function(i) {
    mahalanobis(x = x, 
                center = do.call("c", x[i, ]),
                cov = cx)
  })
  return(as.dist(do.call("rbind", out)))
}

Then, you can cluster your data and plot it, for example:

# Dummy data
x <- data.frame(X = c(rnorm(10, 0), rnorm(10, 5)), 
                Y = c(rnorm(10, 0), rnorm(10, 7)), 
                Z = c(rnorm(10, 0), rnorm(10, 12)))
rownames(x) <- LETTERS[1:20]
plot(x, pch = LETTERS[1:20])

# Comute the mahalanobis distance matrix
d <- mah(x)
d

# Cluster and plot
hc <- hclust(d)
plot(hc)




回答5:


There a very easy way to do it using R Package "biotools". In this case you will get a Squared Distance Mahalanobis Matrix.

#Manly (2004, p.65-66)

x1 <- c(131.37, 132.37, 134.47, 135.50, 136.17)
x2 <- c(133.60, 132.70, 133.80, 132.30, 130.33)
x3 <- c(99.17, 99.07, 96.03, 94.53, 93.50)
x4 <- c(50.53, 50.23, 50.57, 51.97, 51.37)

#size (n x p) #Means 
x <- cbind(x1, x2, x3, x4) 

#size (p x p) #Variances and Covariances
Cov <- matrix(c(21.112,0.038,0.078,2.01, 0.038,23.486,5.2,2.844, 
        0.078,5.2,24.18,1.134, 2.01,2.844,1.134,10.154), 4, 4)

library(biotools)
Mahalanobis_Distance<-D2.dist(x, Cov)
print(Mahalanobis_Distance)



回答6:


Mahalanobis distance is equivalent to (squared) Euclidean distance if the covariance matrix is identity. If you have covariance between your variables, you can make Mahalanobis and sq Euclidean equal by whitening the matrix first to remove the covariance. I.e., do:

#X is your matrix
if (!require("whitening")) install.packages("whitening")

X <- whitening::whiten(X) # default is ZCA (Mahalanobis) whitening
X_dist <- dist(X, diag = T, method = "euclidean")^2

You can confirm that this gives you the same distance matrix as the code that Davit provided in one of the previous answers.



来源:https://stackoverflow.com/questions/18658961/mahalanobis-distance-in-r

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