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Perceptual maps to aggregate assessments from different rating profiles: : A hesitant fuzzy linguistic approach

Published: 01 November 2023 Publication History

Abstract

In decision making environments under uncertainty, assessments are frequently expressed in linguistic terms. When people express their opinions using linguistic terms, the meanings ascribed to these terms may not always align. This phenomenon is captured by the concept of a linguistic perceptual map, which draws from the established lattice of hesitant fuzzy linguistic term sets. Each individual or group of people (referred to as a ’profile’) possesses their own distinct perceptual map. By projecting and aggregating the opinions of these individuals or groups onto a common perceptual map, an average opinion and a level of consensus are derived. This paper extensively studies the mathematical properties of the projection function. We prove that it is a monomorphism between lattices, preserving crucial order relations. Additionally, we progress beyond existing research by introducing an interpretation function. This function facilitates the translation of the aggregated result (referred to as the ’centroid’) from the common perceptual map to each individual’s perceptual map. The properties of the interpretation function are also subject to analysis, demonstrating its role in preserving previous order relations, despite not being a morphism. To illustrate the practicality of these concepts, we propose a methodology that we apply to a real-world case study involving data in the form of ratings from the Amazon books platform. The results obtained highlight that utilizing distinct perceptual maps for each user profile statistically enhances the degree of consensus compared to scenarios where perceptual maps are not differentiated.

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Highlights

Lattice structure of the common perceptual map to aggregate decision-maker profiles.
Projection function from each DM profile to the common perceptual map.
Centroid and degree of consensus in linguistic perceptual maps for GDM.
Interpretation function to translate results to each linguistic perceptual map.
Case study based on book ratings.

References

[1]
Martínez L., Ruan D., Herrera F., Computing with words in decision support systems: An overview on models and applications, Int. J. Comput. Intell. Syst. 3 (4) (2010) 382–395.
[2]
Herrera-Viedma E., Palomares I., Li C.-C., Cabrerizo F.J., Dong Y., Chiclana F., Herrera F., Revisiting fuzzy and linguistic decision making: Scenarios and challenges for making wiser decisions in a better way, IEEE Trans. Syst., Man, Cybern: Syst. 51 (1) (2020) 191–208.
[3]
Ding R.-X., Palomares I., Wang X., Yang G.-R., Liu B., Dong Y., Herrera-Viedma E., Herrera F., Large-scale decision-making: Characterization, taxonomy, challenges and future directions from an artificial intelligence and applications perspective, Inf. Fusion 59 (2020) 84–102.
[4]
Rodríguez R.M., Martínez L., Herrera F., Hesitant fuzzy linguistic term sets for decision making, IEEE Trans. Fuzzy Syst. 20 (1) (2011) 109–119.
[5]
Rodríguez R.M., Martínez L., Herrera F., A group decision making model dealing with comparative linguistic expressions based on hesitant fuzzy linguistic term sets, Inform. Sci. 241 (2013) 28–42.
[6]
Montserrat-Adell J., Agell N., Sánchez M., Prats F., Ruiz F.J., Modeling group assessments by means of hesitant fuzzy linguistic term sets, J. Appl. Log. 23 (2017) 40–50.
[7]
Dong Y., Hong W., Xu Y., Measuring consistency of linguistic preference relations: A 2-tuple linguistic approach, Soft Comput. 17 (2013) 2117–2130.
[8]
Herrera F., Herrera-Viedma E., Verdegay J., Linguistic measures based on fuzzy coincidence for reaching consensus in group decision making, Internat. J. Approx. Reason. 16 (1997) 309–334.
[9]
Tapia-García J., del Moral M., Martínez M., Herrera-Viedma E., A consensus model for group decision making problems with linguistic interval fuzzy preference relations, Expert Syst. Appl. 39 (2012) 10022–10030.
[10]
Wang J., Wang D., Zhang H., Chen X., Multi-criteria group decision making method based on interval 2-tuple linguistic information and choquet integral aggregation operators, Soft Comput. 19 (2015) 389–405.
[11]
Chiclana F., Mata F., Pérez L.G., Herrera-Viedma E., Type-1 OWA unbalanced fuzzy linguistic aggregation methodology: Application to eurobonds credit risk evaluation, Int. J. Intell. Syst. 33 (5) (2018) 1071–1088.
[12]
Cabrerizo F.J., Al-Hmouz R., Morfeq A., Balamash A., Martínez M., Herrera-Viedma E., Soft consensus measures in group decision making using unbalanced fuzzy linguistic information, Soft Comput. 21 (2017) 3037–3050.
[13]
Dong Y., Li C., Herrera F., An optimization-based approach to adjusting unbalanced linguistic preference relations to obtain a required consistency level, Inform. Sci. 292 (2015) 27–38.
[14]
Herrera F., Herrera-Viedma E., Martínez L., A fuzzy linguistic methodology to deal with unbalanced linguistic term sets, IEEE Trans. Fuzzy Syst. 16 (2008) 354–370.
[15]
Cordón O., Herrera F., Zwir I., Linguistic modeling by hierarchical systems of linguistic rules, IEEE Trans. Fuzzy Syst. 10 (1) (2002) 2–20.
[16]
Chen Z.-S., Liu X.-L., Rodríguez R.M., Wang X.-J., Chin K.-S., Tsui K.-L., Martínez L., Identifying and prioritizing factors affecting in-cabin passenger comfort on high-speed rail in China: A fuzzy-based linguistic approach, Appl. Soft Comput. 95 (2020).
[17]
Li C.-C., Dong Y., Herrera F., Herrera-Viedma E., Martínez L., Personalized individual semantics in computing with words for supporting linguistic group decision making. An application on consensus reaching, Inf. Fusion 33 (2017) 29–40.
[18]
Mendel J., Wu D., Perceptual Computing: Aiding People in Making Subjective Judgments, John Wiley & Sons, 2010.
[19]
Espinilla M., Liu J., Martínez L., An extended hierarchical linguistic model for decision-making problems, Comput. Intell. 27 (3) (2011) 489–512.
[20]
Porro O., Agell N., Sánchez M., Ruiz F.J., A multi-perceptual-based approach for group decision aiding, in: Torra V., Narukawa Y. (Eds.), Modeling Decisions for Artificial Intelligence, Springer International Publishing, Cham, 2022, pp. 15–25.
[21]
Porro O., Agell N., Sánchez M., Ruiz F.J., A multi-attribute group decision model based on unbalanced and multi-granular linguistic information: An application to assess entrepreneurial competencies in secondary schools, Appl. Soft Comput. 111 (2021).
[22]
F.J. Ruiz, N. Agell, M. Sánchez, A qualitative approach for aggregating people’s perceptions, in: Proceedings of the QR 2022 35th International Workshop on Qualitative Reasoning: Co-Located At International Conference on Artificial Intelligence (IJCAI’22): Vienna, July 23rd, 2022, pp. 41–44.

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Published In

cover image Applied Soft Computing
Applied Soft Computing  Volume 147, Issue C
Nov 2023
1683 pages

Publisher

Elsevier Science Publishers B. V.

Netherlands

Publication History

Published: 01 November 2023

Author Tags

  1. Decision making under uncertainty
  2. Linguistic modeling
  3. Unbalanced hesitant fuzzy linguistic term sets
  4. Rating scales

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