scipy.spatial.distance.cdist¶
- scipy.spatial.distance.cdist(XA, XB, metric='euclidean', p=2, V=None, VI=None, w=None)[source]¶
- Computes distance between each pair of the two collections of inputs. - The following are common calling conventions: - Y = cdist(XA, XB, 'euclidean') - Computes the distance between \(m\) points using Euclidean distance (2-norm) as the distance metric between the points. The points are arranged as \(m\) \(n\)-dimensional row vectors in the matrix X. 
- Y = cdist(XA, XB, 'minkowski', p) - Computes the distances using the Minkowski distance \(||u-v||_p\) (\(p\)-norm) where \(p \geq 1\). 
- Y = cdist(XA, XB, 'cityblock') - Computes the city block or Manhattan distance between the points. 
- Y = cdist(XA, XB, 'seuclidean', V=None) - Computes the standardized Euclidean distance. The standardized Euclidean distance between two n-vectors u and v is \[\sqrt{\sum {(u_i-v_i)^2 / V[x_i]}}.\]- V is the variance vector; V[i] is the variance computed over all the i’th components of the points. If not passed, it is automatically computed. 
- Y = cdist(XA, XB, 'sqeuclidean') - Computes the squared Euclidean distance \(||u-v||_2^2\) between the vectors. 
- Y = cdist(XA, XB, 'cosine') - Computes the cosine distance between vectors u and v, \[1 - \frac{u \cdot v} {{||u||}_2 {||v||}_2}\]- where \(||*||_2\) is the 2-norm of its argument *, and \(u \cdot v\) is the dot product of \(u\) and \(v\). 
- Y = cdist(XA, XB, 'correlation') - Computes the correlation distance between vectors u and v. This is \[1 - \frac{(u - \bar{u}) \cdot (v - \bar{v})} {{||(u - \bar{u})||}_2 {||(v - \bar{v})||}_2}\]- where \(\bar{v}\) is the mean of the elements of vector v, and \(x \cdot y\) is the dot product of \(x\) and \(y\). 
- Y = cdist(XA, XB, 'hamming') - Computes the normalized Hamming distance, or the proportion of those vector elements between two n-vectors u and v which disagree. To save memory, the matrix X can be of type boolean. 
- Y = cdist(XA, XB, 'jaccard') - Computes the Jaccard distance between the points. Given two vectors, u and v, the Jaccard distance is the proportion of those elements u[i] and v[i] that disagree where at least one of them is non-zero. 
- Y = cdist(XA, XB, 'chebyshev') 
 - Computes the Chebyshev distance between the points. The Chebyshev distance between two n-vectors u and v is the maximum norm-1 distance between their respective elements. More precisely, the distance is given by \[d(u,v) = \max_i {|u_i-v_i|}.\]- Y = cdist(XA, XB, 'canberra')
 - Computes the Canberra distance between the points. The Canberra distance between two points u and v is \[d(u,v) = \sum_i \frac{|u_i-v_i|} {|u_i|+|v_i|}.\]- Y = cdist(XA, XB, 'braycurtis')
 - Computes the Bray-Curtis distance between the points. The Bray-Curtis distance between two points u and v is \[d(u,v) = \frac{\sum_i (u_i-v_i)} {\sum_i (u_i+v_i)}\]- Y = cdist(XA, XB, 'mahalanobis', VI=None)
 Computes the Mahalanobis distance between the points. The Mahalanobis distance between two points u and v is \((u-v)(1/V)(u-v)^T\) where \((1/V)\) (the VI variable) is the inverse covariance. If VI is not None, VI will be used as the inverse covariance matrix.- Y = cdist(XA, XB, 'yule')
 Computes the Yule distance between the boolean vectors. (see yule function documentation)- Y = cdist(XA, XB, 'matching')
 Computes the matching distance between the boolean vectors. (see matching function documentation)- Y = cdist(XA, XB, 'dice')
 Computes the Dice distance between the boolean vectors. (see dice function documentation)- Y = cdist(XA, XB, 'kulsinski')
 Computes the Kulsinski distance between the boolean vectors. (see kulsinski function documentation)- Y = cdist(XA, XB, 'rogerstanimoto')
 Computes the Rogers-Tanimoto distance between the boolean vectors. (see rogerstanimoto function documentation)- Y = cdist(XA, XB, 'russellrao')
 Computes the Russell-Rao distance between the boolean vectors. (see russellrao function documentation)- Y = cdist(XA, XB, 'sokalmichener')
 Computes the Sokal-Michener distance between the boolean vectors. (see sokalmichener function documentation)- Y = cdist(XA, XB, 'sokalsneath')
 Computes the Sokal-Sneath distance between the vectors. (see sokalsneath function documentation)- Y = cdist(XA, XB, 'wminkowski')
 Computes the weighted Minkowski distance between the vectors. (see wminkowski function documentation)- Y = cdist(XA, XB, f)
 - Computes the distance between all pairs of vectors in X using the user supplied 2-arity function f. For example, Euclidean distance between the vectors could be computed as follows: - dm = cdist(XA, XB, lambda u, v: np.sqrt(((u-v)**2).sum())) - Note that you should avoid passing a reference to one of the distance functions defined in this library. For example,: - dm = cdist(XA, XB, sokalsneath) - would calculate the pair-wise distances between the vectors in X using the Python function sokalsneath. This would result in sokalsneath being called \({n \choose 2}\) times, which is inefficient. Instead, the optimized C version is more efficient, and we call it using the following syntax: - dm = cdist(XA, XB, 'sokalsneath') - Parameters: - XA : ndarray - An \(m_A\) by \(n\) array of \(m_A\) original observations in an \(n\)-dimensional space. Inputs are converted to float type. - XB : ndarray - An \(m_B\) by \(n\) array of \(m_B\) original observations in an \(n\)-dimensional space. Inputs are converted to float type. - metric : str or callable, optional - The distance metric to use. If a string, the distance function can be ‘braycurtis’, ‘canberra’, ‘chebyshev’, ‘cityblock’, ‘correlation’, ‘cosine’, ‘dice’, ‘euclidean’, ‘hamming’, ‘jaccard’, ‘kulsinski’, ‘mahalanobis’, ‘matching’, ‘minkowski’, ‘rogerstanimoto’, ‘russellrao’, ‘seuclidean’, ‘sokalmichener’, ‘sokalsneath’, ‘sqeuclidean’, ‘wminkowski’, ‘yule’. - w : ndarray, optional - The weight vector (for weighted Minkowski). - p : scalar, optional - The p-norm to apply (for Minkowski, weighted and unweighted) - V : ndarray, optional - The variance vector (for standardized Euclidean). - VI : ndarray, optional - The inverse of the covariance matrix (for Mahalanobis). - Returns: - Y : ndarray - A \(m_A\) by \(m_B\) distance matrix is returned. For each \(i\) and \(j\), the metric dist(u=XA[i], v=XB[j]) is computed and stored in the \(ij\) th entry. - Raises: - ValueError - An exception is thrown if XA and XB do not have the same number of columns. - Examples - Find the Euclidean distances between four 2-D coordinates: - >>> from scipy.spatial import distance >>> coords = [(35.0456, -85.2672), ... (35.1174, -89.9711), ... (35.9728, -83.9422), ... (36.1667, -86.7833)] >>> distance.cdist(coords, coords, 'euclidean') array([[ 0. , 4.7044, 1.6172, 1.8856], [ 4.7044, 0. , 6.0893, 3.3561], [ 1.6172, 6.0893, 0. , 2.8477], [ 1.8856, 3.3561, 2.8477, 0. ]]) - Find the Manhattan distance from a 3-D point to the corners of the unit cube: - >>> a = np.array([[0, 0, 0], ... [0, 0, 1], ... [0, 1, 0], ... [0, 1, 1], ... [1, 0, 0], ... [1, 0, 1], ... [1, 1, 0], ... [1, 1, 1]]) >>> b = np.array([[ 0.1, 0.2, 0.4]]) >>> distance.cdist(a, b, 'cityblock') array([[ 0.7], [ 0.9], [ 1.3], [ 1.5], [ 1.5], [ 1.7], [ 2.1], [ 2.3]]) 
