The Technique for Order Performance by Similarity to Ideal Solution (TOPSIS) has applied in many environments to solve the multi-criteria decision-making problem. In this paper, we have been categorized the articles that have been utilized TOPSIS and hybrid with others methods for solving decision-making problem. For that reason, the aim of this paper is to focus on the hybrid TOPSIS method to recognize the methods that have to apply with TOPSIS to enhancing the decision making from the final rank. TOPSIS have suffered from some weakness corresponding to weight election and distance measurement. The weight influence on the final decision making so that need more attention and the researches have assigned many techniques to solve this problem. Moreover, the distance measurement and influence on the final rank because the Euclidean distance could not reflect relative imported between the alternatives to the positive and negative ideal solution.
Abdullateef, B. N., Elias, N. F., Mohamed, H., Zaidan, A., & Zaidan, B. (2016). An evaluation and selection problems of OSS-LMS packages. SpringerPlus, 5(1), 248.
Abidin, M. Z., Rusli, R., & Shariff, A. M. (2016). Technique for Order Performance by Similarity to Ideal Solution (TOPSIS)-entropy Methodology for Inherent Safety Design Decision Making Tool. Procedia Engineering, 148, 1043-1050.
Albahri, A., Zaidan, A., Albahri, O., Zaidan, B., & Alsalem, M. (2018). Real-Time Fault-Tolerant mHealth System: Comprehensive Review of Healthcare Services, Opens Issues, Challenges and Methodological Aspects. Journal of medical systems, 42(8), 137.
Albahri, O., Zaidan, A., Zaidan, B., Hashim, M., Albahri, A., & Alsalem, M. (2018). Real-Time Remote Health-Monitoring Systems in a Medical Centre: A Review of the Provision of Healthcare Services-Based Body Sensor Information, Open Challenges and Methodological Aspects. Journal of medical systems, 42(9), 164.
Chu, J., & Su, Y. (2012). The application of TOPSIS method in selecting fixed seismic shelter for evacuation in cities. Systems Engineering Procedia, 3, 391-397.
Dagdeviren, M. (2010). A hybrid multi-criteria decision-making model for personnel selection in manufacturing systems. Journal of Intelligent manufacturing, 21(4), 451-460.
Dai, L., & Wang, J. (2011). Evaluation of the profitability of power listed companies based on entropy improved TOPSIS method. Procedia Engineering, 15, 4728-4732.
Du, Z.-h., & Yu, C.-h. (2008). Analysis of the manufacture supplier selection with the improved technique for order preference by similarity to ideal solution. Paper presented at the Management Science and Engineering, 2008. ICMSE 2008. 15th Annual Conference Proceedings., International Conference on.
Gangurde, S., & Akarte, M. (2010). Ranking of product alternatives based on customer-designer preferences. Paper presented at the Industrial Engineering and Engineering Management (IEEM), 2010 IEEE International Conference on.
Guo-feng, W., & Li-wen, C. (2010). Construction project bidding risk assessment model based on rough set-TOPSIS. Paper presented at the Information Engineering (ICIE), 2010 WASE International Conference on.
Hanine, M., Boutkhoum, O., Tikniouine, A., & Agouti, T. (2016). Application of an integrated multi-criteria decision making AHP-TOPSIS methodology for ETL software selection. SpringerPlus, 5(1), 1.
Ic, Y. T. (2012). An experimental design approach using TOPSIS method for the selection of computer-integrated manufacturing technologies. Robotics and Computer-Integrated Manufacturing, 28(2), 245-256.
I??klar, G., & Buyukozkan, G. (2007). Using a multi-criteria decision making approach to evaluate mobile phone alternatives. Computer Standards & Interfaces, 29(2), 265-274.
Ju, Y., & Wang, A. (2012). Emergency alternative evaluation under group decision makers: A method of incorporating DS/AHP with extended TOPSIS. Expert Systems with Applications, 39(1), 1315-1323.
Jumaah, F., Zadain, A., Zaidan, B., Hamzah, A., & Bahbibi, R. (2018). Decision-making solution based multi-measurement design parameter for optimization of GPS receiver tracking channels in static and dynamic real-time positioning multipath environment. Measurement, 118, 83-95.
Kaabi, H., & Jabeur, K. (2015). TOPSIS using a mixed subjective-objective criteria weights for ABC inventory classification. Paper presented at the Intelligent Systems Design and Applications (ISDA), 2015 15th International Conference on.
Kalid, N., Zaidan, A., Zaidan, B., Salman, O. H., Hashim, M., Albahri, O., & Albahri, A. (2018). Based on Real Time Remote Health Monitoring Systems: A New Approach for Prioritization “Large Scales Data” Patients with Chronic Heart Diseases Using Body Sensors and Communication Technology. Journal of medical systems, 42(4), 69.
Liguo, F., & Yanhong, L. (2008). A new MCDM method in transmission network planning based on gray correlation degree and TOPSIS. Paper presented at the Control Conference,
In-Text Citation: (Abdulhadi, 2019)
To Cite this Article: Abdulhadi, A. Q. (2019). Review of Hybrid TOPSIS with other Methods. International Journal of Academic Research in Business and Social Sciences, 9(14), 52–62.
Copyright: © 2019 The Author(s)
Published by Human Resource Management Academic Research Society (www.hrmars.com)
This article is published under the Creative Commons Attribution (CC BY 4.0) license. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this license may be seen at: http://creativecommons.org/licences/by/4.0/legalcode