numpy.random.multivariate_normal
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numpy.random.multivariate_normal(mean, cov[, size, check_valid, tol])
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Draw random samples from a multivariate normal distribution. The multivariate normal, multinormal or Gaussian distribution is a generalization of the one-dimensional normal distribution to higher dimensions. Such a distribution is specified by its mean and covariance matrix. These parameters are analogous to the mean (average or “center”) and variance (standard deviation, or “width,” squared) of the one-dimensional normal distribution. Parameters: - 
mean : 1-D array_like, of length N
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Mean of the N-dimensional distribution. 
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cov : 2-D array_like, of shape (N, N)
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Covariance matrix of the distribution. It must be symmetric and positive-semidefinite for proper sampling. 
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size : int or tuple of ints, optional
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Given a shape of, for example, (m,n,k),m*n*ksamples are generated, and packed in anm-by-n-by-karrangement. Because each sample isN-dimensional, the output shape is(m,n,k,N). If no shape is specified, a single (N-D) sample is returned.
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check_valid : { ‘warn’, ‘raise’, ‘ignore’ }, optional
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Behavior when the covariance matrix is not positive semidefinite. 
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tol : float, optional
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Tolerance when checking the singular values in covariance matrix. 
 Returns: - 
out : ndarray
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The drawn samples, of shape size, if that was provided. If not, the shape is (N,).In other words, each entry out[i,j,...,:]is an N-dimensional value drawn from the distribution.
 NotesThe mean is a coordinate in N-dimensional space, which represents the location where samples are most likely to be generated. This is analogous to the peak of the bell curve for the one-dimensional or univariate normal distribution. Covariance indicates the level to which two variables vary together. From the multivariate normal distribution, we draw N-dimensional samples, . The covariance matrix element is the covariance of and . The element is the variance of (i.e. its “spread”). Instead of specifying the full covariance matrix, popular approximations include: - Spherical covariance (covis a multiple of the identity matrix)
- Diagonal covariance (covhas non-negative elements, and only on the diagonal)
 This geometrical property can be seen in two dimensions by plotting generated data-points: >>> mean = [0, 0] >>> cov = [[1, 0], [0, 100]] # diagonal covariance Diagonal covariance means that points are oriented along x or y-axis: >>> import matplotlib.pyplot as plt >>> x, y = np.random.multivariate_normal(mean, cov, 5000).T >>> plt.plot(x, y, 'x') >>> plt.axis('equal') >>> plt.show()Note that the covariance matrix must be positive semidefinite (a.k.a. nonnegative-definite). Otherwise, the behavior of this method is undefined and backwards compatibility is not guaranteed. References[1] Papoulis, A., “Probability, Random Variables, and Stochastic Processes,” 3rd ed., New York: McGraw-Hill, 1991. [2] Duda, R. O., Hart, P. E., and Stork, D. G., “Pattern Classification,” 2nd ed., New York: Wiley, 2001. Examples>>> mean = (1, 2) >>> cov = [[1, 0], [0, 1]] >>> x = np.random.multivariate_normal(mean, cov, (3, 3)) >>> x.shape (3, 3, 2) The following is probably true, given that 0.6 is roughly twice the standard deviation: >>> list((x[0,0,:] - mean) < 0.6) [True, True] 
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    https://docs.scipy.org/doc/numpy-1.16.1/reference/generated/numpy.random.multivariate_normal.html