neig {ade4} | R Documentation |
neig
creates objects of class neig
with :
a list of edges
a binary square matrix
a list of vectors of neighbours
an integer (linear and circular graphs)
a data frame of polygons (area)
scores.neig returns the eigenvectors of neighbouring,
orthonormalized scores (null average, unit variance 1/n and null covariances) of maximal autocorrelation.
nb2neig returns an object of class neig
using an object of class nb
in the library 'spdep'
neig2nb returns an object of class nb
using an object of class neig
neig2mat returns the incidence matrix between edges (1 = neighbour ; 0 = no neighbour)
neig.util.GtoL and neig.util.LtoG are utilities.
neig(list = NULL, mat01 = NULL, edges = NULL, n.line = NULL, n.circle = NULL, area = NULL) scores.neig (obj) ## S3 method for class 'neig' print(x, ...) ## S3 method for class 'neig' summary(object, ...) nb2neig (nb) neig2nb (neig) neig2mat (neig)
list |
a list which each component gives the number of neighbours |
mat01 |
a symmetric square matrix of 0-1 values |
edges |
a matrix of 2 columns with integer values giving a list of edges |
n.line |
the number of points for a linear plot |
n.circle |
the number of points for a circular plot |
area |
a data frame containing a polygon set (see area.plot) |
nb |
an object of class 'nb' |
neig, x, obj, object |
an object of class 'neig' |
... |
further arguments passed to or from other methods |
Daniel Chessel
Thioulouse, J., D. Chessel, and S. Champely. 1995. Multivariate analysis of spatial patterns: a unified approach to local and global structures. Environmental and Ecological Statistics, 2, 1–14.
if(!adegraphicsLoaded()) { if(requireNamespace("deldir", quietly = TRUE)) { data(mafragh) par(mfrow = c(2, 1)) provi <- deldir::deldir(mafragh$xy) provi.neig <- neig(edges = as.matrix(provi$delsgs[, 5:6])) s.label(mafragh$xy, neig = provi.neig, inc = FALSE, addax = FALSE, clab = 0, cnei = 2) dist <- apply(provi.neig, 1, function(x) sqrt(sum((mafragh$xy[x[1], ] - mafragh$xy[x[2], ]) ^ 2))) #hist(dist, nclass = 50) mafragh.neig <- neig(edges = provi.neig[dist < 50, ]) s.label(mafragh$xy, neig = mafragh.neig, inc = FALSE, addax = FALSE, clab = 0, cnei = 2) par(mfrow = c(1, 1)) data(irishdata) irish.neig <- neig(area = irishdata$area) summary(irish.neig) print(irish.neig) s.label(irishdata$xy, neig = irish.neig, cneig = 3, area = irishdata$area, clab = 0.8, inc = FALSE) irish.scores <- scores.neig(irish.neig) par(mfrow = c(2, 3)) for(i in 1:6) s.value(irishdata$xy, irish.scores[, i], inc = FALSE, grid = FALSE, addax = FALSE, neig = irish.neig, csi = 2, cleg = 0, sub = paste("Eigenvector ",i), csub = 2) par(mfrow = c(1, 1)) a.neig <- neig(n.circle = 16) a.scores <- scores.neig(a.neig) xy <- cbind.data.frame(cos((1:16) * pi / 8), sin((1:16) * pi / 8)) par(mfrow = c(4, 4)) for(i in 1:15) s.value(xy, a.scores[, i], neig = a.neig, csi = 3, cleg = 0) par(mfrow = c(1, 1)) a.neig <- neig(n.line = 28) a.scores <- scores.neig(a.neig) par(mfrow = c(7, 4)) par(mar = c(1.1, 2.1, 0.1, 0.1)) for(i in 1:27) barplot(a.scores[, i], col = grey(0.8)) par(mfrow = c(1, 1)) } if(requireNamespace("maptools", quiet = TRUE) & requireNamespace("spdep", quiet = TRUE)) { data(columbus) par(mfrow = c(2, 1)) par(mar = c(0.1, 0.1, 0.1, 0.1)) plot(col.gal.nb, coords) s.label(data.frame(coords), neig = neig(list = col.gal.nb), inc = FALSE, clab = 0.6, cneig = 1) par(mfrow = c(1, 1)) data(mafragh) maf.rel <- relativeneigh(as.matrix(mafragh$xy)) maf.rel <- graph2nb(maf.rel) s.label(mafragh$xy, neig = neig(list = maf.rel), inc = FALSE, clab = 0, addax = FALSE, cne = 1, cpo = 2) par(mfrow = c(2, 2)) w <- matrix(runif(100), 50, 2) x.gab <- gabrielneigh(w) x.gab <- graph2nb(x.gab) s.label(data.frame(w), neig = neig(list = x.gab), inc = FALSE, clab = 0, addax = FALSE, cne = 1, cpo = 2, sub = "relative") x.rel <- relativeneigh(w) x.rel <- graph2nb(x.rel) s.label(data.frame(w), neig = neig(list = x.rel), inc = FALSE, clab = 0, addax = FALSE, cne = 1, cpo = 2, sub = "Gabriel") k1 <- knn2nb(knearneigh(w)) s.label(data.frame(w), neig = neig(list = k1), inc = FALSE, clab = 0, addax = FALSE, cne = 1, cpo = 2, sub = "k nearest neighbours") all.linked <- max(unlist(nbdists(k1, w))) z <- dnearneigh(w, 0, all.linked) s.label(data.frame(w), neig = neig(list = z), inc = FALSE, clab = 0, addax = FALSE, cne = 1, cpo = 2, sub = "Neighbourhood contiguity by distance") par(mfrow = c(1, 1)) } }