Package for Multi-Criteria Decision Analysis with Objective Criteria Weighting
Project description
objective-weights-for-mcda
This is Python 3 library dedicated for multi-criteria decision analysis with criteria weights determined by objective weighting methods.
Installation
Downloading and installation of objective-weights-mcda
package can be done with using pip
pip install objective-weights-mcda
Methods
mcda_methods
includes:
vikor
with VIKOR method
Other modules include:
-
additions
includerank_preference
method for ranking alternatives according to MCDA score -
correlations
include:- Spearman rank correlation coefficient
spearman
, - Weighted Spearman rank correlation coefficient
weighted_spearman
, - Pearson correlation coefficient
pearson_coeff
- Spearman rank correlation coefficient
-
normalizations
with methods for decision matrix normalization:linear_normalization
- Linear normalization,minmax_normalization
- Minimum- Maximum normalization,max_normalization
- Maximum normalization,sum_normalization
- Sum normalization,vector_normalization
- Vector normalization
-
weighting_methods
include 11 objective weighting methods for determination of criteria weights (significance) without decision-maker involvement:equal_weighting
- Equal weighting methodentropy_weighting
- Entropy weighting methodstd_weighting
- Standard deviation weighting methodcritic_weighting
- CRITIC weighting methodgini_weighting
- Gini coefficient-based weighting methodmerec_weighting
- MEREC weighting methodstat_var_weighting
- Statistical variance weighting methodcilos_weighting
- CILOS weighting methodidocriw_weighting
- IDOCRIW weighting methodangle_weighting
- Angle weighting methodcoeff_var_weighting
- Coefficient of variation weighting method
Examples of usage of objective_weights_mcda
are provided on GitHub in examples
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for objective-weights-mcda-0.0.7.tar.gz
Algorithm | Hash digest | |
---|---|---|
SHA256 | 277a899a8633abf5be8c9887965a2ce79c838be20cff47d9103dec87f4246746 |
|
MD5 | 19830688e48f5c64a1e7803e904bab73 |
|
BLAKE2b-256 | ae949672f6b0c39d03beeb22a6d9450f87d440367ad8774507295fd3441ec858 |
Hashes for objective_weights_mcda-0.0.7-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 062e9f183af1808ff1061e7f70a64ac017ca1fb533939c2c0b57cead7da00a1a |
|
MD5 | 45457e0bfd416be5b8ba8ab8150b23d6 |
|
BLAKE2b-256 | 74c550bff1986cd7b77d335436e69824a20256d3862ec830e31cc41c756038c9 |