:py:mod:`evomap.mapping._mds` ============================= .. py:module:: evomap.mapping._mds .. autoapi-nested-parse:: Stress-Based Multidimensional Scaling. Module Contents --------------- Classes ~~~~~~~ .. autoapisummary:: evomap.mapping._mds.MDS Functions ~~~~~~~~~ .. autoapisummary:: evomap.mapping._mds._normalized_stress_function evomap.mapping._mds._normalized_stress_gradient Attributes ~~~~~~~~~~ .. autoapisummary:: evomap.mapping._mds.EPSILON .. py:data:: EPSILON :value: 1e-10 .. py:class:: MDS(n_dims=2, mds_type=None, n_iter=2000, n_iter_check=50, init=None, verbose=0, input_type='distance', max_halves=5, tol=0.001, n_inits=1, step_size=1) .. py:method:: fit(X) .. py:method:: fit_transform(X) .. py:function:: _normalized_stress_function(positions, disparities, mds_type=None, compute_error=True, compute_grad=True) Compute normalized stress as a measure of goodness-of-fit between input distances and the distances among the estimated positions. :param positions: estimated positions :type positions: np.array of shape (n_samples, n_dims) :param disparities: input distances (or transform disparities) :type disparities: np.array of shape (n_samples, n_samples) :param inclusions: array of 0/1 entries indicating if an object should be included in the estimation, by default None :type inclusions: np.array of shape (n_samples), optional :param compute_error: indicates if cost funciton value should be computed, by default True :type compute_error: bool, optional :param compute_grad: indicates if gradient should be computed, by default True :type compute_grad: bool, optional :returns: cost function value and gradient :rtype: float, array of shape (n_samples, n_dims) .. py:function:: _normalized_stress_gradient(positions, distances, disparities) Calculate gradient of normalized stress function. :param positions: estimated postiions :type positions: np.array of shape (n_samples, n_dims) :param distances: euclidean distances among estimated positions :type distances: np.array of shape (n_samples, n_samples) :param disparities: input distance (or disparity) matrix :type disparities: np.array of shape (n_samples, n_samples) :returns: gradient :rtype: np.array of shape (n_samples, n_dims)