Connections between Campos-Bolanos and Murofushi–Sugeno Representations of a Fuzzy Measure
Abstract
:1. Introduction
- when groups and work disjointedly;
- when the groups work together and their collaboration is effective;
- when the groups work together and their collaboration is ineffective.
2. Preliminary Concepts
3. Connection between Campos-Bolanos and Murofushi–Sugeno Representations
4. Choquet’s Capacities of Order Two in Murofushi–Sugeno Representations
5. Distance on Fuzzy Measures’ Space in MSR
6. Connections between Two-Order Additive Fuzzy Measure and Interaction Indexes of Attributes in the MSR Environment
7. An Illustrative Example
8. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
List of Symbols
Y | finite set (universum) |
elements of Y | |
set of all subsets of Y | |
fuzzy measure on | |
dual fuzzy measure to | |
fuzzy measure space | |
A, B, C, D, G | subsets of Y |
complement of | |
N | natural number |
permutation group of natural numbers from 1 to n | |
elements of | |
dual permutation of | |
associated probabilities on | |
associated probability class (APC) of the fuzzy measure | |
finite set of some definite “indexes” | |
element of | |
set of all subsets of | |
0–1 order-preserving homomorphism | |
dual probability measures on | |
(,,,) | Murofushi–Sugeno representation (MSR) of the fuzzy measure |
set of all semi-filters in | |
Se | semi-filter |
, | 0–1 order-preserving homomorphisms |
probability measures on () | |
M | mapping () |
subset of | |
mapping: () | |
(,(),) | equivalent MSR of the fuzzy measure . |
classes of probability measures of nonequivalent MSRs of dual fuzzy measures and . | |
(), | nonequivalent representation class of the fuzzy measure . |
subset of APC | |
mapping from the composition connection between CBR and MSR | |
W | fuzzy subset of Y |
membership function of fuzzy subset W | |
monotone expectation of with respect to the fuzzy measure | |
Choquet’s integral on | |
Lebesgue measure on [0;1] | |
subset of | |
mathematical expectation of with respect to the probability measure | |
indicator of subset | |
distances between fuzzy measures | |
concatenation operation of numbers and | |
linear function | |
lower and upper limit values | |
a, | constants |
Shapley value | |
Interaction index | |
Mobius transformation |
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Sirbiladze, G.; Manjafarashvili, T. Connections between Campos-Bolanos and Murofushi–Sugeno Representations of a Fuzzy Measure. Mathematics 2022, 10, 516. https://doi.org/10.3390/math10030516
Sirbiladze G, Manjafarashvili T. Connections between Campos-Bolanos and Murofushi–Sugeno Representations of a Fuzzy Measure. Mathematics. 2022; 10(3):516. https://doi.org/10.3390/math10030516
Chicago/Turabian StyleSirbiladze, Gia, and Teimuraz Manjafarashvili. 2022. "Connections between Campos-Bolanos and Murofushi–Sugeno Representations of a Fuzzy Measure" Mathematics 10, no. 3: 516. https://doi.org/10.3390/math10030516
APA StyleSirbiladze, G., & Manjafarashvili, T. (2022). Connections between Campos-Bolanos and Murofushi–Sugeno Representations of a Fuzzy Measure. Mathematics, 10(3), 516. https://doi.org/10.3390/math10030516