Distance computations (scipy.spatial.distance)¶
Function Reference¶
Distance matrix computation from a collection of raw observation vectors stored in a rectangular array.
pdist(X[, metric]) |
Pairwise distances between observations in n-dimensional space. |
cdist(XA, XB[, metric]) |
Compute distance between each pair of the two collections of inputs. |
squareform(X[, force, checks]) |
Convert a vector-form distance vector to a square-form distance matrix, and vice-versa. |
directed_hausdorff(u, v[, seed]) |
Compute the directed Hausdorff distance between two N-D arrays. |
Predicates for checking the validity of distance matrices, both condensed and redundant. Also contained in this module are functions for computing the number of observations in a distance matrix.
is_valid_dm(D[, tol, throw, name, warning]) |
Return True if input array is a valid distance matrix. |
is_valid_y(y[, warning, throw, name]) |
Return True if the input array is a valid condensed distance matrix. |
num_obs_dm(d) |
Return the number of original observations that correspond to a square, redundant distance matrix. |
num_obs_y(Y) |
Return the number of original observations that correspond to a condensed distance matrix. |
Distance functions between two numeric vectors u and v. Computing
distances over a large collection of vectors is inefficient for these
functions. Use pdist for this purpose.
braycurtis(u, v[, w]) |
Compute the Bray-Curtis distance between two 1-D arrays. |
canberra(u, v[, w]) |
Compute the Canberra distance between two 1-D arrays. |
chebyshev(u, v[, w]) |
Compute the Chebyshev distance. |
cityblock(u, v[, w]) |
Compute the City Block (Manhattan) distance. |
correlation(u, v[, w, centered]) |
Compute the correlation distance between two 1-D arrays. |
cosine(u, v[, w]) |
Compute the Cosine distance between 1-D arrays. |
euclidean(u, v[, w]) |
Computes the Euclidean distance between two 1-D arrays. |
jensenshannon(p, q[, base]) |
Compute the Jensen-Shannon distance (metric) between two 1-D probability arrays. |
mahalanobis(u, v, VI) |
Compute the Mahalanobis distance between two 1-D arrays. |
minkowski(u, v[, p, w]) |
Compute the Minkowski distance between two 1-D arrays. |
seuclidean(u, v, V) |
Return the standardized Euclidean distance between two 1-D arrays. |
sqeuclidean(u, v[, w]) |
Compute the squared Euclidean distance between two 1-D arrays. |
wminkowski(u, v, p, w) |
Compute the weighted Minkowski distance between two 1-D arrays. |
Distance functions between two boolean vectors (representing sets) u and
v. As in the case of numerical vectors, pdist is more efficient for
computing the distances between all pairs.
dice(u, v[, w]) |
Compute the Dice dissimilarity between two boolean 1-D arrays. |
hamming(u, v[, w]) |
Compute the Hamming distance between two 1-D arrays. |
jaccard(u, v[, w]) |
Compute the Jaccard-Needham dissimilarity between two boolean 1-D arrays. |
kulsinski(u, v[, w]) |
Compute the Kulsinski dissimilarity between two boolean 1-D arrays. |
rogerstanimoto(u, v[, w]) |
Compute the Rogers-Tanimoto dissimilarity between two boolean 1-D arrays. |
russellrao(u, v[, w]) |
Compute the Russell-Rao dissimilarity between two boolean 1-D arrays. |
sokalmichener(u, v[, w]) |
Compute the Sokal-Michener dissimilarity between two boolean 1-D arrays. |
sokalsneath(u, v[, w]) |
Compute the Sokal-Sneath dissimilarity between two boolean 1-D arrays. |
yule(u, v[, w]) |
Compute the Yule dissimilarity between two boolean 1-D arrays. |
hamming also operates over discrete numerical vectors.
