Performance Evaluation of IT Industries Using SERVQUAL, DEA and FMCDM
Subject Areas : Business StrategyAlireza Alinezhad 1 , Ramin Hakimian 2
1 - Department of Industrial and Mechanical Engineering
Qazvin Branch, Islamic Azad University, Qazvin, Iran,
2 - Qazvin Branch, Islamic Azad University,
Qazvin, Iran
Keywords:
Abstract :
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6. Appendixes
Table 3. Average weight gain fuzzy numbers extracted from
Table 2 and parameters used in the method of fuzzy VIKOR
Average |
Weighted Index |
|
Fuzzy Number |
Wi |
|
(0.65,0.81,0.905) |
0.799 |
Holding general sessions before project execution |
(0.63,0.79,0.885) |
0.779 |
Receiving recognition plan certificate |
(0.515,0.68,0.805) |
0.673 |
Special meetings of the directors circles |
(0.45,0.645,0.82) |
0.642 |
Presenting successful executive models in similar industries |
(0.56,0.745,0.875) |
0.736 |
Expert’s sufficient knowledge regarding the process |
(0.315,0.49,0.655) |
0.488 |
Considering special organizational processes |
(0.465,0.64,0.79) |
0.636 |
Designing processes having future development as a perspective |
(0.305,0.485,0.675) |
0.487 |
Developing executive modules for special processes |
(0.3,0.5,0.695) |
0.499 |
Possibility of adding other software systems |
(0.73,0.88,0.955) |
0.868 |
Preparing special reports required by the organization |
(0.485,0.665,0.81) |
0.659 |
Presenting pamphlet and other educational notes |
(0.33,0.53,0.73) |
0.530 |
Possibility of entering test information in educational copy |
(0.51,0.705,0.875) |
0.701 |
Presenting executive models in similar industries |
(0.48,0.665,0.82) |
0.660 |
Making educational activities proper for various knowledge level |
(0.33,0.475,0.625) |
0.476 |
Using useful opinions of users |
(0.67,0.845,0.955) |
0.834 |
Increasing number of practical education sessions |
(0.52,0.72,0.885) |
0.714 |
Experts with pertinent document and sufficient experience |
(0.4,0.585,0.76) |
0.583 |
Accessibility of experts in times other than working hours |
(0.4,0.595,0.785) |
0.594 |
Presenting course completion certificate |
(0.255,0.42,0.605) |
0.423 |
Preparing new reports by users |
(0.33,0.475,0.625) |
0.476 |
Connecting to other existing systems |
(0.45,0.645,0.82) |
0.642 |
Linking to other Microsoft facilities |
Table 4. Data Envelopment Analysis and its results
Reference Group |
Efficiency Score |
Empathy |
Assurances |
Responsiveness |
Reliability |
Tangibles |
|
7,14 |
95 |
3.3 |
4.4 |
2.6 |
1.6 |
2.9 |
DMU1 |
|
100 |
1.8 |
5.2 |
3.4 |
0.1 |
3.8 |
DMU2 |
6,17 |
54 |
2.3 |
1.0 |
1.2 |
0.1 |
2.5 |
DMU3 |
1,6,19 |
58 |
1.1 |
3.5 |
2.1 |
1.9 |
0.1 |
DMU4 |
|
100 |
2.6 |
2.9 |
3.5 |
2.7 |
2.5 |
DMU5 |
|
100 |
2.5 |
4.9 |
2.7 |
3.9 |
1.5 |
DMU6 |
|
100 |
3.8 |
1.9 |
3.2 |
0.7 |
3.2 |
DMU7 |
7,17 |
88 |
2.6 |
4.1 |
1.5 |
2.8 |
1.8 |
DMU8 |
|
100 |
4.5 |
5.1 |
4.4 |
2.6 |
3.9 |
DMU17 |
Table 5. model of decision making (for example DMU8)
and target setting for Benchmarking
Empathy |
Assurances |
Responsiveness |
Reliability |
Tangibles |
|
|
3.8 |
1.9 |
3.2 |
0.7 |
3.2 |
DMU 7 |
1 |
4.5 |
5.1 |
4.4 |
2.6 |
3.9 |
DMU 17 |
2 |
5.1 |
4.7 |
5.3 |
5.6 |
4.7 |
Improvement target |
3 |
2.6 |
4.1 |
1.5 |
2.8 |
1.8 |
DMU 8 |
4 |
2.5 |
0.6 |
3.8 |
2.8 |
2.9 |
Improvement required |
5 |