Calculate Depth Space using Spatial Depth
Calculates the representation of the training classes in depth space using spatial depth.
depth.space.spatial(data, cardinalities, mah.estimate = "moment", mah.parMcd = 0.75)
data |
Matrix containing training sample where each row is a d-dimensional object, and objects of each class are kept together so that the matrix can be thought of as containing blocks of objects representing classes. |
cardinalities |
Numerical vector of cardinalities of each class in |
mah.estimate |
is a character string specifying which estimates to use when calculating sample covariance matrix; can be |
mah.parMcd |
is the value of the argument |
The depth representation is calculated in the same way as in depth.spatial
, see 'References' for more information and details.
Matrix of objects, each object (row) is represented via its depths (columns) w.r.t. each of the classes of the training sample; order of the classes in columns corresponds to the one in the argument cardinalities
.
Chaudhuri, P. (1996). On a geometric notion of quantiles for multivariate data. Journal of the Americal Statistical Association 91 862–872.
Koltchinskii, V.I. (1997). M-estimation, convexity and quantiles. The Annals of Statistics 25 435–477.
Serfling, R. (2006). Depth functions in nonparametric multivariate inference. In: Liu, R., Serfling, R., Souvaine, D. (eds.), Data Depth: Robust Multivariate Analysis, Computational Geometry and Applications, American Mathematical Society, 1–16.
Vardi, Y. and Zhang, C.H. (2000). The multivariate L1-median and associated data depth. Proceedings of the National Academy of Sciences, U.S.A. 97 1423–1426.
ddalpha.train
and ddalpha.classify
for application, depth.spatial
for calculation of spatial depth.
# Generate a bivariate normal location-shift classification task # containing 20 training objects class1 <- mvrnorm(10, c(0,0), matrix(c(1,1,1,4), nrow = 2, ncol = 2, byrow = TRUE)) class2 <- mvrnorm(10, c(2,2), matrix(c(1,1,1,4), nrow = 2, ncol = 2, byrow = TRUE)) data <- rbind(class1, class2) # Get depth space using spatial depth depth.space.spatial(data, c(10, 10)) data <- getdata("hemophilia") cardinalities = c(sum(data$gr == "normal"), sum(data$gr == "carrier")) depth.space.spatial(data[,1:2], cardinalities)
Please choose more modern alternatives, such as Google Chrome or Mozilla Firefox.