gmm.py 文件源码

python
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项目:Parallel-SGD 作者: angadgill 项目源码 文件源码
def _log_multivariate_normal_density_full(X, means, covars, min_covar=1.e-7):
    """Log probability for full covariance matrices."""
    n_samples, n_dim = X.shape
    nmix = len(means)
    log_prob = np.empty((n_samples, nmix))
    for c, (mu, cv) in enumerate(zip(means, covars)):
        try:
            cv_chol = linalg.cholesky(cv, lower=True)
        except linalg.LinAlgError:
            # The model is most probably stuck in a component with too
            # few observations, we need to reinitialize this components
            try:
                cv_chol = linalg.cholesky(cv + min_covar * np.eye(n_dim),
                                          lower=True)
            except linalg.LinAlgError:
                raise ValueError("'covars' must be symmetric, "
                                 "positive-definite")

        cv_log_det = 2 * np.sum(np.log(np.diagonal(cv_chol)))
        cv_sol = linalg.solve_triangular(cv_chol, (X - mu).T, lower=True).T
        log_prob[:, c] = - .5 * (np.sum(cv_sol ** 2, axis=1) +
                                 n_dim * np.log(2 * np.pi) + cv_log_det)

    return log_prob
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