Cv Mat Variance
If a is a multidimensional array then var a treats the values along the first array dimension whose size does not equal 1 as vectors.
Cv mat variance. Dismiss join github today. Github is home to over 50 million developers working together to host and review code manage projects and build software together. Computes the mean and variance of a given matrix along its rows. The function ignores nans.
Is defined as std x mean x and as such is a measure of the relative variability. If a is a vector of observations the variance is a scalar. Cv vl where the covariance matrix can be represented as c vlv 1 which can be also obtained by singular value decomposition. Input vector output cv.
It computes in the same way as woud do reduce but with variance function. In probability theory and statistics a covariance matrix also known as auto covariance matrix dispersion matrix variance matrix or variance covariance matrix is a square matrix giving the covariance between each pair of elements of a given random vector in the matrix diagonal there are variances i e the covariance of each element with itself. If a is a matrix whose columns are random variables and whose rows are observations v is a row vector containing the variances corresponding to each column. Cv getcv x compute the coefficient of variation c v of the input vector x.
Coefficient of variation a scalar. To calculate standard deviation from variance only take the square root. Output nx1 matrix with computed variance. The eigenvectors are unit vectors representing the direction of the largest variance of the data while the eigenvalues represent the magnitude of this variance in the corresponding directions.
An example using pca for dimensionality reduction while maintaining an amount of variance. Vice versa variance is standard deviation squared. The size of this dimension becomes 1.