Comparison between Multiple Attribute Decision Making Methods through Objective Weighting Method in Determining Best Employee

Autor: Andre Hasudungan Lubis, Nurul Khairina, Muhammad Fikri Riandra
Jazyk: angličtina
Rok vydání: 2023
Předmět:
DOI: 10.5281/zenodo.7837306
Popis: Multiple Attribute Decision Making (MADM) is a popular method to be selected in numerous studies in solving decision-making cases. Methods like SAW, WASPAS, SMART, and WP are preferred among researchers to be used for many purposes. However, the best method still not compared in determining best employee. Hence, the study conducted the comparison between the methods by using the Rank Similarity Index (RSI). The index is used to express the most appropriate method. In terms of weighting, we propose the D-CRITIC method as the tool to support the comparison procedure. Moreover, we select the bus driver as the sample case of the study with total of 10 candidates are nominated to be chosen as the best. The company has given the rank list before, so we just compare the actual rank with the result of MADM methods calculations. The result shows that SAW and WASPAS are the methods with the highest similarity towards the rank. Furthermore, these methods also reach the great score of the RSI between the others.
Databáze: OpenAIRE