Title of article :
Multi-criteria IT personnel selection on intuitionistic fuzzy information measures and ARAS methodology
Author/Authors :
Raj Mishra, A. Department of Mathematics - Govt. College Jaitwara, Satna, M P, India , Sisodia, G. Department of Computer Science & Engineering - ITM University,Gwalior, India , Raj Pardasani, K. Department of Mathematics - Bioinformatics and Computer Applications, MANIT, Bhopal-462051, M P, India , Sharma, K. Department of Computer Science & Engineering - ITM University,Gwalior, India
Abstract :
Global challenge and the speedy growth of information technologies compel organizations to constantly change their
ways. At the present time, associations need IT personnel who create a dierence by creative thoughts and who preserve
with the rapid amendments. Since the evaluation of IT personnel selection (ITPS) consists of dierent alternatives and
criteria, therefore, IT personnel selection could be regarded as a multi-criteria decision making (MCDM) problem.
The doctrine of intuitionistic fuzzy sets (IFSs) is an eective tool to elucidate the uncertain information in an MCDM
problem. The main objective of the paper is to choose the best IT personnel candidate by integrating intuitionistic fuzzy
Additive Ratio Assessment (IF-ARAS) method with divergence measure, improved score function and IF-aggregation
operators. In the developed methodology, the weights of criteria and decision experts (DEs) are computed based
on proposed IF-divergence measure method intuitionistic fuzzy preference evaluation method, respectively. Next, the
decision experts judgments are aggregated of the proposed method to evade the loss of data. Finally, the proposed
IF-ARAS method is implemented to solve the IT-personnel selection (ITPS) problem to indicate the applicability of
the presented approach. In addition, a comparative analysis is provided to discuss the obtained results for validating
the developed methodology. The analysis illustrates that the IF-ARAS method is eective and well consistent with the
existing ones.
Keywords :
Intuitionistic fuzzy sets , divergence measure , personnel selection , multi-criteria decision making , ARAS
Journal title :
Iranian Journal of Fuzzy Systems (IJFS)