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Cognitive Computation

, Volume 10, Issue 5, pp 737–751 | Cite as

A Projection-Based Outranking Method with Multi-Hesitant Fuzzy Linguistic Term Sets for Hotel Location Selection

  • Pu Ji
  • Hong-Yu Zhang
  • Jian-Qiang Wang
Article

Abstract

Keen competition drives hotel companies to enhance their position. One way to do this is to select a proper hotel location. However, hotel location selection is a complex problem. This study establishes a multi-criteria hotel location selection method. In this method, cognitive information is depicted by multi-hesitant fuzzy linguistic term sets (MHFLTSs). Moreover, the method considers the non-compensation of criteria. It introduces the elimination and choice translating reality (ELECTRE) method. Notably, the method utilizes projection to define concordance and discordance indices. A case study and comparative study are performed in this study. They exhibit the feasibility of the method. Results of the studies show that the method can solve such problems, and they reveal the method’s advantages. One theoretical contribution lies in the characterization of cognitive information. MHFLTSs can handle vacillation of decision-makers caused by their complex cognition, and they express both conformity and divergence of opinions during cognitive processes. Our method has the advantages of the ELECTRE method. In addition, the ELECTRE method is improved by introducing the projection. The proposed method is promising in hotel location selection. Moreover, it is a potential option to address cognitive computation.

Keywords

Multi-hesitant fuzzy linguistic term sets Multi-criteria decision-making Outranking method Projection Hotel location selection 

Notes

Acknowledgements

The authors are rather grateful to thank the editors and anonymous reviewers for their helpful comments and suggestions. This work was supported by the National Natural Science Foundation of China (nos. 71501192 and 71571193).

Compliance with Ethical Standards

All the authors have read and have abided by the statement of ethical standards for manuscripts. And we declare that:

(a) The material has not been published in whole or in part elsewhere;

(b) The paper is not currently being considered for publication elsewhere;

(c) All authors have been personally and actively involved in substantive work leading to the manuscript, and will hold themselves jointly and individually responsible for its content;

(d) Authors whose names appear on the submission have contributed sufficiently to the scientific work and therefore share collective responsibility and accountability for the results;

(e) All sources of funding of all the authors that may be relevant, including current funding of posts and funding for the research being reported;

(f) There is no conflict of interest.

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Copyright information

© Springer Science+Business Media, LLC, part of Springer Nature 2018

Authors and Affiliations

  1. 1.School of BusinessCentral South UniversityChangshaChina

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