Nothing Special   »   [go: up one dir, main page]

skip to main content
research-article

Pythagorean fuzzy information processing based on centroid distance measure and its applications

Published: 01 February 2024 Publication History

Highlights

The centroid distance of PFNs is proposed and its properties are discussed.
Propose a score function based on the centroid distance and discuss its properties.
Applications of Pythagorean fuzzy clustering, ranking and MCDM are developed.
Some advantages of the proposed methods are showed through comparative analysis.

Abstract

By using Pythagorean fuzzy set (PFS), people can quantitatively describe and process information with fuzziness, and then make reasonable and effective judgments or decisions. In this process, distance measure often serves as a useful and important tool. The purpose of this paper is to explore some information processing methods and techniques in Pythagorean fuzzy environment. Firstly, the research progress of PFS is reviewed, and the main research directions and some hot issues in relevant research fields are discussed. Secondly, by analyzing the information of hesitation degree of Pythagorean fuzzy number (PFN), definitions of hesitation factor and centroid distance measure based on the representation of centroid coordinates of the hesitation regions are proposed, and properties of hesitation factor and centroid distance measure are discussed. Finally, the novel clustering algorithm, ranking method and multi criteria decision making (MCDM) method are developed in Pythagorean fuzzy environment, which are based on the new centroid distance measure. The effectiveness of the proposed algorithm and methods are verified through numerical examples and comparative analysis. The research results indicate that the centroid distance measure proposed in this paper can effectively characterize the distance between PFNs, thus making the clustering algorithm of PFNs, the ranking method of PFNs, and the Pythagorean fuzzy MCDM method have obvious superiorities and advantages.

References

[1]
M. Akram, A. Luqman, J.C.R. Alcantud, An integrated ELECTRE-I approach for risk evaluation with hesitant Pythagorean fuzzy information, Expert Systems with Applications 200 (2022).
[2]
K.T. Atanassov, Intuitionistic fuzzy sets, Fuzzy Sets and Systems 20 (1986) 87–96.
[3]
B. Batool, S. Abdullah, S. Ashraf, M. Ahmad, Pythagorean probabilistic hesitant fuzzy aggregation operators and their application in decision-making, Kybernetes 51 (4) (2022) 1626–1652.
[4]
F.E. Boran, D. Akay, A biparametric similarity measure on intuitionistic fuzzy sets with applications to pattern recognition, Information Sciences 255 (2014) 45–57.
[5]
S.M. Chen, J.M. Tan, Handling multicriteria fuzzy decision-making problems based on vague set theory, Fuzzy Sets and Systems 67 (2) (1994) 163–172.
[6]
P.A. Ejegwa, J.A. Awolola, Novel distance measures for Pythagorean fuzzy sets with applications to pattern recognition problems, Granular Computing 6 (1) (2021) 181–189.
[7]
M.A. Firozja, B. Agheli, E.B. Jamkhaneh, A new similarity measure for Pythagorean fuzzy sets, Complex & Intelligent Systems 6 (1) (2020) 67–74.
[8]
H. Garg, A novel correlation coefficients between Pythagorean fuzzy sets and its applications to decision-making processes, International Journal of Intelligent Systems 31 (12) (2016) 1234–1252.
[9]
H. Garg, A novel accuracy function under interval-valued Pythagorean fuzzy environment for solving multicriteria decision making problem, Journal of Intelligent & Fuzzy Systems 31 (1) (2016) 529–540.
[10]
H. Garg, Hesitant Pythagorean fuzzy Maclaurin symmetric mean operators and its applications to multiattribute decision-making process, International Journal of Intelligent Systems 34 (4) (2019) 601–626.
[11]
H. Garg, Pythagorean Fuzzy Sets, Springer Press, Singapore, 2021.
[12]
X.J. Gou, Z.S. Xu, P.J. Ren, The properties of continuous Pythagorean fuzzy information, International Journal of Intelligent Systems 31 (5) (2016) 401–424.
[13]
Guan, T. C. (2022). Green logistics partner selection based on Pythagorean hesitant fuzzy set and multiobjective optimization. Mathematical Problems in Engineering, 2022, Article 6993066.
[14]
D.H. Hong, C.H. Choi, Multicriteria fuzzy decisionmaking problems based on vague set theory, Fuzzy Sets and Systems 114 (1) (2000) 103–113.
[15]
Z. Hussian, M.S. Yang, Distance and similarity measures of Pythagorean fuzzy sets based on the Hausdorff metric with application to fuzzy TOPSIS, International Journal of Intelligent Systems 34 (10) (2019) 2633–2654.
[16]
M.J. Khan, P. Kumam, W. Deebani, W. Kumam, Z. Shah, Bi-parametric distance and similarity measures of picture fuzzy sets and their applications in medical diagnosis, Egyptian Informatics Journal 22 (2) (2021) 201–212.
[17]
M.S.A. Khan, S. Abdullah, A. Ali, N. Siddiqui, F. Amin, Pythagorean hesitant fuzzy sets and their application to group decision making with incomplete weight information, Journal of Intelligent & Fuzzy Systems 33 (6) (2017) 3971–3985.
[18]
M.S.A. Khan, S. Abdullah, A. Ali, F. Amin, F. Hussain, Pythagorean hesitant fuzzy Choquet integral aggregation operators and their application to multi-attribute decision-making, Soft Computing 23 (1) (2019) 251–267.
[19]
D.Q. Li, W.Y. Zeng, Distance measure of Pythagorean fuzzy sets, International Journal of Intelligent Systems 33 (2) (2018) 348–361.
[20]
H.M. Li, L.L. Lv, F. Li, L.Y. Wang, Q. Xia, A novel approach to emergency risk assessment using FMEA with extended MULTIMOORA method under interval-valued Pythagorean fuzzy environment, International Journal of Intelligent Computing and Cybernetics 13 (1) (2020) 41–65.
[21]
Y.H. Li, G. Sun, A unified ranking method of intuitionistic fuzzy numbers and Pythagorean fuzzy numbers based on geometric area characterization, Computational and Applied Mathematics 42 (2023) Article 16.
[22]
Y.H. Li, G. Sun, X.P. Li, Geometric ranking of Pythagorean fuzzy numbers based on upper curved trapezoidal area characterization score function, International Journal of Fuzzy Systems 24 (8) (2022) 3564–3583.
[23]
Lin, M. W., Huang, C., & Xu, Z. S. (2019). TOPSIS method based on correlation coefficient and entropy measure for linguistic Pythagorean fuzzy sets and its application to multiple attribute decision making. Complexity, 2019, Article 6967390.
[24]
M.W. Lin, C. Huang, R.Q. Chen, H. Fujita, X. Wang, Directional correlation coefficient measures for Pythagorean fuzzy sets: Their applications to medical diagnosis and cluster analysis, Complex & Intelligent Systems 7 (2) (2021) 1025–1043.
[25]
Z.M. Liu, P.D. Liu, W.L. Liu, J. Pang, Pythagorean uncertain linguistic partitioned Bonferroni mean operators and their application in multi-attribute decision making, Journal of Intelligent & Fuzzy Systems 32 (3) (2017) 2779–2790.
[26]
Z.M. Ma, Z.S. Xu, Symmetric Pythagorean fuzzy weighted geometric averaging operators and their application in multicriteria decision-making Problems, International Journal of Intelligent Systems 31 (12) (2016) 1198–1219.
[27]
Z.M. Mu, S.Z. Zeng, P.Y. Wang, Novel approach to multi-attribute group decision-making based on interval-valued Pythagorean fuzzy power Maclaurin symmetric mean operator, Computers & Industrial Engineering 155 (2021).
[28]
K. Naeem, M. Riaz, X.D. Peng, D. Afzal, Pythagorean fuzzy soft MCGDM methods based on TOPSIS, VIKOR and aggregation operators, Journal of Intelligent & Fuzzy Systems 37 (5) (2019) 6937–6957.
[29]
M. Olgun, M. Unver, S. Yardimci, Pythagorean fuzzy points and applications in pattern recognition and Pythagorean fuzzy topologies, Soft Computing 25 (7) (2021) 5225–5232.
[30]
X.D. Peng, X.L. Ma, Pythagorean fuzzy multi-criteria decision making method based on CODAS with new score function, Journal of Intelligent & Fuzzy Systems 38 (3) (2020) 3307–3318.
[31]
X.D. Peng, Y. Yang, Some results for Pythagorean fuzzy sets, International Journal of Intelligent Systems 30 (11) (2015) 1133–1160.
[32]
X.D. Peng, H.Y. Yuan, Y. Yang, Pythagorean fuzzy information measures and their applications, International Journal of Intelligent Systems 32 (10) (2017) 991–1029.
[33]
K. Rahman, S. Abdullah, R. Ahmed, M. Ullah, Pythagorean fuzzy Einstein weighted geometric aggregation operator and their application to multiple attribute group decision making, Journal of Intelligent & Fuzzy Systems 33 (1) (2017) 635–647.
[34]
K. Rahman, S. Abdullah, A. Ali, F. Amin, Pythagorean fuzzy Einstein hybrid averaging aggregation operator and its application to multiple-attribute group decision making, Journal of Intelligent Systems 29 (1) (2020) 736–752.
[35]
P.J. Ren, Z.S. Xu, X.J. Gou, Pythagorean fuzzy TODIM approach to multi-criteria decision making, Applied Soft Computing 42 (2016) 246–259.
[36]
Riaz, M., Naeem, K., Chinram, R., & Iampan, A. (2021). Pythagorean m-polar fuzzy weighted aggregation operators and algorithm for the investment strategic decision making. Journal of Mathematics, 2021, Article 6644994.
[37]
M.M. Shahri, A.S. Jahromi, M. Houshmand, Failure mode and effect analysis using an integrated approach of clustering and MCDM under Pythagorean fuzzy environment, Journal of Loss Prevention in the Process Industries 72 (2021).
[38]
G. Sun, W.C. Hua, G.J. Wang, Interactive group decision making method based on probabilistic hesitant Pythagorean fuzzy information representation, Applied Intelligence 52 (15) (2022) 18226–18247.
[39]
G. Sun, X.P. Li, D.G. Chen, Ranking defects and solving countermeasures for Pythagorean fuzzy sets with hesitant degree, International Journal of Machine Learning and Cybernetics 13 (5) (2022) 1265–1281.
[40]
G. Sun, M.X. Wang, X.P. Li, Centroid coordinate ranking of Pythagorean fuzzy numbers and its application in group decision making, Cognitive Computation 14 (2) (2022) 602–623.
[41]
E. Szmidt, J. Kacprzyk, Distance between intuitionistic fuzzy sets, Fuzzy Sets and Systems 114 (3) (2000) 505–518.
[42]
K. Ullah, T. Mahmood, Z. Ali, N. Jan, On some distance measures of complex Pythagorean fuzzy sets and their applications in pattern recognition, Complex & Intelligent Systems 6 (1) (2020) 15–27.
[43]
S.P. Wan, Z. Jin, J.Y. Dong, Pythagorean fuzzy mathematical programming method for multi-attribute group decision making with Pythagorean fuzzy truth degrees, Knowledge and Information Systems 55 (2) (2018) 437–466.
[44]
S.P. Wan, S.Q. Li, J.Y. Dong, A three-phase method for Pythagorean fuzzy multiattribute group decision making and application to haze management, Computers & Industrial Engineering 123 (2018) 348–363.
[45]
G.W. Wei, M. Lu, Pythagorean fuzzy Maclaurin symmetric mean operators in multiple attribute decision making, International Journal of Intelligent Systems 33 (5) (2018) 1043–1070.
[46]
G.W. Wei, M. Lu, Pythagorean fuzzy power aggregation operators in multiple attribute decision making, International Journal of Intelligent Systems 33 (1) (2018) 169–186.
[47]
Z.S. Xu, Some similarity measures of intuitionistic fuzzy sets and their applications to multiple attribute decision making, Fuzzy Optimization and Decision Making 6 (2) (2007) 109–121.
[48]
W.T. Xue, Z.S. Xu, X.L. Zhang, X.L. Tian, Pythagorean fuzzy LINMAP method based on the entropy theory for railway project investment decision making, International Journal of Intelligent Systems 33 (1) (2018) 93–125.
[49]
R.R. Yager, Pythagorean membership grades in multicriteria decision making, IEEE Transactions on Fuzzy Systems 22 (4) (2014) 958–965.
[50]
R.R. Yager, A.M. Abbasov, Pythagorean membeship grades, complex numbers and decision making, International Journal of Intelligent Systems 28 (5) (2013) 436–452.
[51]
W. Yang, C.J. Wang, Y. Liu, Y. Sun, Hesitant Pythagorean fuzzy interaction aggregation operators and their application in multiple attribute decision-making, Complex & Intelligent Systems 5 (2) (2019) 199–216.
[52]
L.A. Zadeh, Fuzzy sets, Information and Control 8 (1965) 338–353.
[53]
X.L. Zhang, Multicriteria Pythagorean fuzzy decision analysis-a hierarchical QUALIFLEX approach with the closeness index-based ranking methods, Information Sciences 330 (2016) 104–124.
[54]
X.L. Zhang, Pythagorean fuzzy clustering analysis: A hierarchical clustering algorithm with the ratio index-based ranking methods, International Journal of Intelligent Systems 33 (9) (2018) 1798–1822.
[55]
X.L. Zhang, Z.S. Xu, Extension of TOPSIS to multiple criteria decision making with Pythagorean fuzzy sets, International Journal of Intelligent Systems 29 (12) (2014) 1061–1078.

Index Terms

  1. Pythagorean fuzzy information processing based on centroid distance measure and its applications
    Index terms have been assigned to the content through auto-classification.

    Recommendations

    Comments

    Please enable JavaScript to view thecomments powered by Disqus.

    Information & Contributors

    Information

    Published In

    cover image Expert Systems with Applications: An International Journal
    Expert Systems with Applications: An International Journal  Volume 236, Issue C
    Feb 2024
    1583 pages

    Publisher

    Pergamon Press, Inc.

    United States

    Publication History

    Published: 01 February 2024

    Author Tags

    1. Pythagorean fuzzy number (PFN)
    2. Centroid distance measure
    3. Clustering algorithm
    4. Ranking method
    5. Multi criteria decision making (MCDM) method

    Qualifiers

    • Research-article

    Contributors

    Other Metrics

    Bibliometrics & Citations

    Bibliometrics

    Article Metrics

    • 0
      Total Citations
    • 0
      Total Downloads
    • Downloads (Last 12 months)0
    • Downloads (Last 6 weeks)0
    Reflects downloads up to 29 Nov 2024

    Other Metrics

    Citations

    View Options

    View options

    Login options

    Media

    Figures

    Other

    Tables

    Share

    Share

    Share this Publication link

    Share on social media