# This file is part of the Gudhi Library - https://gudhi.inria.fr/ - which is released under MIT. # See file LICENSE or go to https://gudhi.inria.fr/licensing/ for full license details. # Author(s): Raphaƫl Tinarrage, Yuichi Ike, Masatoshi Takenouchi # # Copyright (C) 2020 Inria, Copyright (C) 2020 FUjitsu Laboratories Ltd. # # Modification(s): # - YYYY/MM Author: Description of the modification from gudhi import SimplexTree class WeightedRipsComplex: """ Class to generate a weighted Rips complex from a distance matrix and weights on vertices, in the way described in :cite:`dtmfiltrations`. Remark that all the filtration values are doubled compared to the definition in the paper for the consistency with RipsComplex. """ def __init__(self, distance_matrix, weights=None, max_filtration=float('inf')): """ Args: distance_matrix (Sequence[Sequence[float]]): distance matrix (full square or lower triangular). weights (Sequence[float]): (one half of) weight for each vertex. max_filtration (float): specifies the maximal filtration value to be considered. """ self.distance_matrix = distance_matrix if weights is not None: self.weights = weights else: self.weights = [0] * len(distance_matrix) self.max_filtration = max_filtration def create_simplex_tree(self, max_dimension): """ Args: max_dimension (int): graph expansion until this given dimension. """ dist = self.distance_matrix F = self.weights num_pts = len(dist) st = SimplexTree() for i in range(num_pts): if 2*F[i] <= self.max_filtration: st.insert([i], 2*F[i]) for i in range(num_pts): for j in range(i): value = max(2*F[i], 2*F[j], dist[i][j] + F[i] + F[j]) # max is needed when F is not 1-Lipschitz if value <= self.max_filtration: st.insert([i,j], filtration=value) st.expansion(max_dimension) return st