Source code for pyifdm.methods.if_mairca

# Copyright (c) 2022 Jakub Więckowski

from .mairca.ifs import ifs
from .ifs.normalization import minmax_normalization
from .ifs.distance import normalized_euclidean_distance
from .ifs.score import liu_wang_score
from ..helpers import rank

from .validator import Validator


[docs] class ifMAIRCA():
[docs] def __init__(self, normalization=minmax_normalization, distance=normalized_euclidean_distance, score=liu_wang_score): """ Create Intuitionistic Fuzzy MAIRCA method object with normalization and distance functions Parameters ---------- normalization: callable, default=minmax_normalization Function used to normalize the decision matrix distance: callable, default=normalized_euclidean_distance Function used to calculate distance between two IFS score: callable, default=liu_wang_score Function used to calculate crisp score of IFS """ self.normalization = normalization self.distance = distance self.score = score self.__descending = True
[docs] def __call__(self, matrix, weights, types): """ Calculates the alternatives preferences Parameters ---------- matrix : ndarray Decision matrix / alternatives data. Alternatives are in rows and Criteria are in columns. weights : ndarray Vector of criteria weights in a crisp or Intuitionistic Fuzzy form types : ndarray Types of criteria, 1 profit, -1 cost Returns ---------- ndarray: Preference calculated for alternatives. Greater values are placed higher in ranking """ # validate data Validator.ifs_validation(matrix, weights, types) self.preferences = ifs(matrix, weights, types, self.normalization, self.distance, self.score).astype(float) return self.preferences
[docs] def rank(self): """ Calculates the alternatives ranking based on the obtained preferences Returns ---------- ndarray: Ranking of alternatives """ try: return rank(self.preferences, self.__descending) except AttributeError: raise AttributeError('Cannot calculate ranking before assessment') except: raise ValueError('Error occurred in ranking calculation')