EVALUATION OF MANAGER PERFORMANCE USING FUZZY LOGIC TECHNIQUES

Ragini Shukla, Manoj Kumar

Abstract


Most companies and Organization use performance appraisal system to evaluate the managers performance. The managers performance is very important to the management of company and as well as industrial organizations.  In which usually involves crisp and uncertain values to evaluate managers performance. In this paper we proposed to evaluate managers performance on the basis of different factors, applying into fuzzy inference system (FIS) , FIS is the process of formulating the mapping from a given input to an output using fuzzy logic. We can consider some of the most relevant factors, and developed rules will be fuzzified. As input fuzzy variable performance will be fuzzified with suitable fuzzy linguistic variable and ultimately FIS will be developed. This paper explains the comparison of two different membership function and getting more or less similar, So as to achieve the shape of membership function, which is not playing much role to evaluate the performance in positive or negative direction.


Keywords


Performance Appraisal, management and employee Cascaded, Fuzzy Inference System, Sensitivity Analysis, Fuzzy membership, Fuzzy Rules.

Full Text:

PDF

References


Bhosale G.A., “Fuzzy Inference System for Teaching Staff Performance Appraisal”2013, IJCIT.

Chen W, Panahi M, Performance evaluation of GIS-based new ensemble data mining differential evolution (DE) and particle swarm optimization (PSO) for landslide spatial modeling 2017, IEEE.

DarshanKumar and JagdevSingh A fuzzy logic based decision support system for evaluation of suppliers in supply chain management practices ,2013, Elsevier.

Gokhan Gokmen , Evaluation of student performance in laboratory applications using fuzzy logic 2010, ELSVIER.

Imtiaz Ahmed and Ineen Sultana, Employee performance evaluation: a fuzzy approach,2013, (IJPPM).

MahdiSabaghi “Sustainability assessment using fuzzy-inference technique (SAFT): A methodology toward green products”2016, Elsevier.

Sirigiri P, Gangadhar P.V.V.S, Evaluate E-Government Security Strategy by using Fuzzy Logic Techniques ,2012,Global journals.

Yadav RS, Singh VP Modeling Academic Performance Evaluation Using Soft Computing Techniques: A Fuzzy Logic Approach 2011,IJCSE,.

Yang L,Entchev E, Performance prediction of a hybrid micro generation system using Adaptive Neuro Fuzzy Inference System (ANFIS) technique 2014, Elsevier, International Journal of Computer Trends and Technology- volume3Issue2- 2012 ISSN: 2231-2803 http://www.internationaljournalssrg.org Page 205

Zadeh L.A., Fuzzy algorithms, Info. & Ctl., Vol. 12, 1968, pp. 94-102.

Zadeh L.A., Fuzzy Sets, Information and Control, 1965.

Zadeh L.A., Making computers think like people, IEEE. Spectrum, 8/1984, pp. 26-32.

Zadeh L.A., Outline of A New Approach to the Analysis of Complex Systems and Decision Processes, 1973.


Refbacks

  • There are currently no refbacks.




Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.

Copyright © 2019 INTERNATIONAL EDUCATION AND RESEARCH JOURNAL