Methodologies for Determining the Service Quality of the Intercity Rail Service Based on Users’ Perceptions and Expectations in Thailand
Abstract
:1. Introduction
1.1. The Rail Transportation Situation in Thailand
1.2. Intercity Rail Service Quality Attributes
1.3. The Methodologies for Determining the Quality of Transportation Services
1.4. Research Gap and Objective of This Study
2. Materials and Methods
2.1. Procedure
2.2. Material and Data Collection
2.2.1. Questionnaire Development
2.2.2. Participants and Data Collection
2.3. Analysis Methods
2.3.1. Factor Analysis
- (1)
- Exploratory factor analysis (EFA) was used to form indicator groups by focusing on a smaller number of factors than number of indicators. The factors (i.e., latent variables) were groups of indicators (i.e., observed variables). Examples of the factors in this research are vehicles, staff, services, and stations, which were grouped by factor analysis (FA). EFA is an analysis method used to survey and define common factors in order to explain correlations among observed variables. In other words, the results from EFA can reduce the observed variables by creating new variables in the form of common factors. Researchers usually utilize this method if there is not any clear supporting theory in terms of a correlation between measurement components and the score from each measurement indicator [7].
- (2)
- Confirmatory factor analysis (CFA) was used to verify the loading of each indicator. CFA was utilized when the researchers knew that the indicators were components of factors based on theory or the literature review [26]. However, there has never been a study of the composition of service quality indicators of the trains in Thailand; therefore, CFA was utilized based on the correlation structure from the results of EFA. Most research works in the transportation field focus on CFA (e.g., Jomnonkwao et al. [7], Watthanaklang et al. [17], and Ratanavaraha et al. [26]). This study applied both EFA and CFA to reduce the number of qualitative indicators of the Thai intercity rail services. Indicator group forming was considered, and indicator loading, obtained from the analyses, was utilized to create appropriate guidance to improve intercity rail services.
2.3.2. Cluster Analysis
2.3.3. Importance-Performance Analysis (IPA)
- “possible overkill” (low importance/high satisfaction): enterprises can consider reducing development in these perspectives;
- “keep up the good work” (high importance/high satisfaction): enterprises can consider continuing with these strategies;
- “low priority” (low importance/low satisfaction): the criteria in this quadrant have a low focus, and improvement is not needed;
- “concentrate here” (high importance/low satisfaction): the enterprise should urgently improve the criteria in this quadrant [30].
3. Results
3.1. Factor Analysis
3.2. Cluster Analysis
3.3. Importance-Performance Analysis (IPA)
4. Discussion
4.1. Grouping Service Quality Indicators
4.2. Notable Service Quality Indicators
5. Conclusions and Implementation
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Variables | Min | Max | Mean | Standard Deviation | Skewness | Kurtosis |
---|---|---|---|---|---|---|
G1 | −5 | 4 | −0.148 | 1.161 | −0.317 | 2.016 |
G2 | −5 | 4 | −0.145 | 1.323 | −0.334 | 1.541 |
G3 | −6 | 5 | −0.111 | 1.335 | −0.229 | 2.152 |
G4 | −5 | 5 | −0.073 | 1.237 | 0.025 | 1.626 |
G5 | −6 | 5 | −0.124 | 1.385 | −0.006 | 2.136 |
G6 | −5 | 5 | −0.099 | 1.317 | −0.126 | 1.907 |
G7 | −5 | 5 | −0.120 | 1.423 | 0.227 | 1.903 |
G8 | −6 | 5 | −0.179 | 1.499 | −0.548 | 1.981 |
G9 | −6 | 5 | −0.143 | 1.589 | −0.615 | 1.852 |
G10 | −4 | 5 | 0.020 | 1.295 | 0.207 | 1.531 |
G11 | −5 | 5 | −0.122 | 1.294 | −0.238 | 2.161 |
G12 | −6 | 5 | 0.010 | 1.360 | 0.029 | 2.097 |
G13 | −5 | 4 | 0.002 | 1.099 | −0.048 | 1.725 |
G14 | −6 | 4 | −0.023 | 1.162 | −0.212 | 1.918 |
G15 | −6 | 4 | −0.070 | 1.254 | −0.335 | 2.431 |
G16 | −6 | 4 | −0.078 | 1.189 | −0.572 | 2.875 |
G17 | −6 | 4 | −0.068 | 1.302 | −0.215 | 2.058 |
G18 | −6 | 6 | −0.127 | 1.289 | −0.037 | 3.760 |
G19 | −6 | 5 | −0.132 | 1.319 | −0.405 | 2.342 |
G20 | −6 | 5 | −0.140 | 1.192 | −0.394 | 2.848 |
G21 | −6 | 4 | −0.111 | 1.273 | −0.391 | 2.547 |
G22 | −5 | 5 | −0.111 | 1.203 | 0.067 | 2.733 |
G23 | −6 | 5 | −0.018 | 1.192 | −0.399 | 3.247 |
G24 | −6 | 4 | −0.083 | 1.255 | −0.816 | 3.723 |
G25 | −6 | 4 | −0.086 | 1.227 | −0.387 | 2.430 |
G26 | −5 | 4 | −0.109 | 1.314 | −0.235 | 1.635 |
G27 | −6 | 5 | −0.177 | 1.310 | −0.939 | 3.402 |
G28 | −6 | 5 | −0.163 | 1.268 | −0.595 | 2.890 |
G29 | −6 | 5 | −0.265 | 1.337 | −0.499 | 2.330 |
G30 | −6 | 5 | −0.259 | 1.487 | −0.916 | 3.200 |
G31 | −6 | 6 | −0.028 | 1.234 | 0.376 | 3.473 |
G32 | −4 | 6 | 0.021 | 1.229 | 0.409 | 2.935 |
G33 | −6 | 5 | −0.096 | 1.318 | −0.238 | 2.451 |
G34 | −6 | 6 | −0.003 | 1.221 | −0.182 | 4.001 |
G35 | −6 | 4 | −0.005 | 1.129 | −0.263 | 2.384 |
G36 | −6 | 4 | −0.042 | 1.192 | −0.566 | 3.428 |
G37 | −6 | 5 | −0.102 | 1.306 | −0.281 | 3.073 |
G38 | −6 | 5 | −0.146 | 1.373 | −0.247 | 2.084 |
G39 | −6 | 4 | −0.003 | 1.139 | −0.326 | 2.575 |
G40 | −4 | 4 | −0.020 | 1.108 | 0.118 | 1.259 |
G41 | −6 | 5 | −0.153 | 1.259 | −0.289 | 2.377 |
G42 | −6 | 5 | −0.112 | 1.297 | −0.199 | 1.956 |
G43 | −6 | 6 | −0.337 | 1.654 | −0.546 | 1.698 |
G44 | −6 | 5 | −0.259 | 1.457 | −0.647 | 2.713 |
G45 | −6 | 5 | −0.262 | 1.467 | −0.423 | 1.671 |
Variables | Mean | Normalized Importance |
---|---|---|
G1 | 4.850 | 2.40% |
G2 | 4.532 | 25.80% |
G3 | 4.759 | 47.30% |
G4 | 4.891 | 6.50% |
G5 | 4.810 | 21.10% |
G6 | 4.906 | 11.10% |
G7 | 4.789 | 28.40% |
G8 | 4.455 | 26.80% |
G9 | 4.441 | 26.40% |
G10 | 5.008 | 18.20% |
G11 | 4.808 | 44.30% |
G12 | 4.946 | 22.30% |
G13 | 5.276 | 11.60% |
G14 | 5.151 | 59.40% |
G15 | 5.085 | 44.90% |
G16 | 5.089 | 33.10% |
G17 | 5.042 | 8.60% |
G18 | 4.971 | 5.40% |
G19 | 4.954 | 15.90% |
G20 | 5.016 | 25.80% |
G21 | 5.124 | 54.20% |
G22 | 5.052 | 33.20% |
G23 | 4.912 | 28.10% |
G24 | 4.870 | 35.00% |
G25 | 4.924 | 83.90% |
G26 | 4.782 | 54.30% |
G27 | 4.623 | 16.70% |
G28 | 4.961 | 29.50% |
G29 | 4.774 | 68.10% |
G30 | 4.366 | 61.50% |
G31 | 5.096 | 19.60% |
G32 | 5.228 | 5.00% |
G33 | 4.841 | 27.40% |
G34 | 5.046 | 0.90% |
G35 | 5.018 | 45.70% |
G36 | 5.037 | 24.50% |
G37 | 4.904 | 16.70% |
G38 | 4.820 | 16.30% |
G39 | 5.143 | 37.50% |
G40 | 5.221 | 1.20% |
G41 | 4.984 | 31.40% |
G42 | 4.963 | 31.50% |
G43 | 4.187 | 11.50% |
G44 | 4.641 | 7.90% |
G45 | 4.725 | 100.00% |
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Characteristics | Train Types in Thailand | Total | % | ||||||
---|---|---|---|---|---|---|---|---|---|
SP EXP | EXP | RAP | |||||||
Freq. | % | Freq. | % | Freq. | % | ||||
Region | Northern line | 40 | 6.50% | 35 | 5.69% | 135 | 21.95% | 210 | 34.15% |
Northeastern line | 134 | 21.79% | 49 | 7.97% | 17 | 2.76% | 200 | 32.52% | |
Southern line | 69 | 11.22% | 49 | 7.97% | 87 | 14.15% | 205 | 33.33% | |
Gender | Male | 75 | 12.20% | 52 | 8.46% | 89 | 14.47% | 216 | 35.12% |
Female | 168 | 27.32% | 81 | 13.17% | 150 | 24.39% | 399 | 64.88% | |
Education | Elementary school | 5 | 0.81% | 2 | 0.33% | 21 | 3.41% | 28 | 4.55% |
Primary | 5 | 0.81% | 6 | 0.98% | 27 | 4.39% | 38 | 6.18% | |
High school | 66 | 10.73% | 30 | 4.88% | 68 | 11.06% | 164 | 26.67% | |
High vocational | 81 | 13.17% | 56 | 9.11% | 66 | 10.73% | 203 | 33.01% | |
Bachelor | 78 | 12.68% | 36 | 5.85% | 56 | 9.11% | 170 | 27.64% | |
Master | 7 | 1.14% | 3 | 0.49% | 1 | 0.16% | 11 | 1.79% | |
Doctoral | 1 | 0.16% | 0 | 0.00% | 0 | 0.00% | 1 | 0.16% | |
Salary (THB/Month) | <10,000 | 127 | 20.65% | 44 | 7.15% | 118 | 19.19% | 289 | 46.99% |
10,000–14,999 | 39 | 6.34% | 28 | 4.55% | 53 | 8.62% | 120 | 19.51% | |
15,000–19,999 | 22 | 3.58% | 31 | 5.04% | 37 | 6.02% | 90 | 14.63% | |
20,000–24,999 | 17 | 2.76% | 11 | 1.79% | 18 | 2.93% | 46 | 7.48% | |
25,000–29,999 | 25 | 4.07% | 12 | 1.95% | 10 | 1.63% | 47 | 7.64% | |
>30,000 | 13 | 2.11% | 7 | 1.14% | 3 | 0.49% | 23 | 3.74% | |
Occupation | Government/state enterprises | 54 | 8.78% | 36 | 5.85% | 22 | 3.58% | 112 | 18.21% |
Company employees | 29 | 4.72% | 31 | 5.04% | 46 | 7.48% | 106 | 17.24% | |
Personal business | 18 | 2.93% | 12 | 1.95% | 29 | 4.72% | 59 | 9.59% | |
Farmers | 4 | 0.65% | 3 | 0.49% | 4 | 0.65% | 11 | 1.79% | |
Students | 117 | 19.02% | 30 | 4.88% | 75 | 12.20% | 222 | 36.10% | |
Other | 21 | 3.41% | 21 | 3.41% | 63 | 10.24% | 105 | 17.07% | |
Purpose | Hometown | 99 | 16.10% | 36 | 5.85% | 94 | 15.28% | 229 | 37.24% |
Traveling | 64 | 10.41% | 43 | 6.99% | 67 | 10.89% | 174 | 28.29% | |
Working | 29 | 4.72% | 15 | 2.44% | 14 | 2.28% | 58 | 9.43% | |
Visiting relations | 43 | 6.99% | 35 | 5.69% | 44 | 7.15% | 122 | 19.84% | |
Other | 8 | 1.30% | 4 | 0.65% | 20 | 3.25% | 32 | 5.20% | |
Frequency | once a week | 40 | 6.50% | 14 | 2.28% | 51 | 8.29% | 105 | 17.07% |
once every two-weeks | 20 | 3.25% | 8 | 1.30% | 28 | 4.55% | 56 | 9.11% | |
once a month | 23 | 3.74% | 9 | 1.46% | 29 | 4.72% | 61 | 9.92% | |
once every two months | 49 | 7.97% | 22 | 3.58% | 48 | 7.80% | 119 | 19.35% | |
once every 4–6 months | 31 | 5.04% | 25 | 4.07% | 34 | 5.53% | 90 | 14.63% | |
once a year | 80 | 13.01% | 55 | 8.94% | 49 | 7.97% | 184 | 29.92% | |
Total | 243 | 39.51% | 133 | 21.63% | 239 | 38.86% | 615 | 100.00% |
Variable | Description | EFA | CFA | |||||||
---|---|---|---|---|---|---|---|---|---|---|
Communalities | Loading | Explained Variance (%) | Cronbach’s α | Loading | t-Value | Error Variance | CR | AVE | ||
Factor 1 | 15.900 | 0.973 | 0.997 | 0.743 | ||||||
G1 | Decent vehicle body appearance. | 0.611 | 0.703 | 0.715 | 33.843 | 0.021 | ||||
G2 | No engine noise disturbance when inside the train. | 0.657 | 0.704 | 0.773 | 43.899 | 0.018 | ||||
G3 | Neat and clean train interior. | 0.652 | 0.715 | 0.767 | 42.609 | 0.018 | ||||
G4 | Cool but convenient interior temperature. | 0.529 | 0.654 | 0.673 | 28.838 | 0.023 | ||||
G5 | Clean train seats. | 0.634 | 0.704 | 0.756 | 40.638 | 0.019 | ||||
G6 | Train seats with an appropriate space between two seats in a row. | 0.579 | 0.654 | 0.735 | 36.961 | 0.020 | ||||
G7 | Train seats are adjustable, of a suitable size, and convenient to use. | 0.611 | 0.670 | 0.755 | 40.366 | 0.019 | ||||
G8 | Variety of entertainment devices available in good working condition. | 0.651 | 0.631 | 0.802 | 50.731 | 0.016 | ||||
G9 | Clean, convenient toilets and washrooms. | 0.626 | 0.610 | 0.788 | 47.286 | 0.017 | ||||
G10 | Enough train carriages of appropriate size. | 0.531 | 0.577 | 0.715 | 34.013 | 0.021 | ||||
G11 | Properly functioning windows and doors. | 0.576 | 0.609 | 0.739 | 37.577 | 0.020 | ||||
G12 | Onboard food and drink services. | 0.543 | 0.528 | 0.702 | 32.197 | 0.022 | ||||
Factor 2 | 16.214 | 0.935 | 0.997 | 0.733 | ||||||
G13 | Neat and clear train crews. | 0.515 | 0.631 | 0.648 | 25.985 | 0.025 | ||||
G14 | On-time, accurate delivery of advertised services. | 0.634 | 0.703 | 0.732 | 36.002 | 0.020 | ||||
G15 | Crew able and willing to solve onboard problems. | 0.685 | 0.734 | 0.788 | 46.721 | 0.017 | ||||
G16 | Crews deliver information before the start of every service. | 0.618 | 0.730 | 0.732 | 36.065 | 0.020 | ||||
G17 | Crews can deliver fast and accurate services. | 0.671 | 0.730 | 0.784 | 45.572 | 0.017 | ||||
G18 | Crews are always willing to help. | 0.598 | 0.664 | 0.747 | 38.296 | 0.020 | ||||
G19 | Crews respond willingly to all passenger requests. | 0.636 | 0.692 | 0.779 | 44.718 | 0.017 | ||||
G20 | Crew behavior makes passengers confident about the service. | 0.579 | 0.648 | 0.752 | 39.458 | 0.019 | ||||
G21 | Crews deliver services politely. | 0.613 | 0.663 | 0.776 | 43.942 | 0.018 | ||||
G22 | Crews are knowledgeable and can provide accurate, complete information. | 0.608 | 0.528 | 0.723 | 34.699 | 0.021 | ||||
G23 | Attentive personal passenger service. | 0.533 | 0.504 | 0.653 | 26.603 | 0.025 | ||||
G24 | Passenger service willingness by crews. | 0.589 | 0.525 | 0.683 | 29.577 | 0.023 | ||||
Factor 3 | 12.397 | 0.914 | 0.996 | 0.717 | ||||||
G25 | Passenger service is important to the State Railway of Thailand. | 0.580 | 0.514 | 0.673 | 28.375 | 0.024 | ||||
G26 | Crews understand special passenger requirements. | 0.566 | 0.522 | 0.674 | 28.545 | 0.024 | ||||
G27 | Train timetables and train frequencies are suitable. | 0.665 | 0.691 | 0.742 | 37.466 | 0.020 | ||||
G28 | Safe traveling conditions (without accidents or broken-down trains). | 0.621 | 0.625 | 0.763 | 41.228 | 0.019 | ||||
G29 | Security system available to prevent crime. | 0.624 | 0.641 | 0.746 | 38.336 | 0.019 | ||||
G30 | Punctuality. | 0.558 | 0.480 | 0.731 | 35.858 | 0.020 | ||||
G31 | Enough ticket counters. | 0.514 | 0.469 | 0.722 | 34.566 | 0.021 | ||||
G32 | Suitable ticket prices. | 0.501 | 0.518 | 0.696 | 31.086 | 0.022 | ||||
G33 | Suitable onboard meal prices. | 0.555 | 0.569 | 0.706 | 32.399 | 0.022 | ||||
G34 | Services received as agreed on the ticket. | 0.551 | 0.573 | 0.713 | 33.314 | 0.021 | ||||
Factor 4 | 14.854 | 0.926 | 0.996 | 0.727 | ||||||
G35 | Terminal provides enough trip guidance and information. | 0.563 | 0.549 | 0.715 | 33.204 | 0.022 | ||||
G36 | Provides information when train timetable changes. | 0.559 | 0.575 | 0.718 | 33.851 | 0.021 | ||||
G37 | Provides connecting information to other public transportation. | 0.603 | 0.574 | 0.744 | 37.645 | 0.020 | ||||
G38 | Provides a complaint channel. | 0.588 | 0.589 | 0.744 | 37.611 | 0.020 | ||||
G39 | Suitable terminal sizes. | 0.567 | 0.673 | 0.678 | 28.797 | 0.024 | ||||
G40 | Suitable terminal locations, ease of dis/embarking. | 0.535 | 0.641 | 0.665 | 27.493 | 0.024 | ||||
G41 | Cleanliness of terminals. | 0.648 | 0.720 | 0.752 | 38.969 | 0.019 | ||||
G42 | Enough seats inside the terminals. | 0.593 | 0.659 | 0.743 | 37.436 | 0.020 | ||||
G43 | Other convenient infrastructure, e.g., Wi-Fi. | 0.612 | 0.653 | 0.750 | 38.553 | 0.019 | ||||
G44 | Enough car parks at the terminals. | 0.609 | 0.658 | 0.741 | 36.899 | 0.020 | ||||
G45 | Security system available to prevent crime at terminals. | 0.620 | 0.668 | 0.747 | 38.083 | 0.020 |
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Jomnonkwao, S.; Champahom, T.; Ratanavaraha, V. Methodologies for Determining the Service Quality of the Intercity Rail Service Based on Users’ Perceptions and Expectations in Thailand. Sustainability 2020, 12, 4259. https://doi.org/10.3390/su12104259
Jomnonkwao S, Champahom T, Ratanavaraha V. Methodologies for Determining the Service Quality of the Intercity Rail Service Based on Users’ Perceptions and Expectations in Thailand. Sustainability. 2020; 12(10):4259. https://doi.org/10.3390/su12104259
Chicago/Turabian StyleJomnonkwao, Sajjakaj, Thanapong Champahom, and Vatanavongs Ratanavaraha. 2020. "Methodologies for Determining the Service Quality of the Intercity Rail Service Based on Users’ Perceptions and Expectations in Thailand" Sustainability 12, no. 10: 4259. https://doi.org/10.3390/su12104259
APA StyleJomnonkwao, S., Champahom, T., & Ratanavaraha, V. (2020). Methodologies for Determining the Service Quality of the Intercity Rail Service Based on Users’ Perceptions and Expectations in Thailand. Sustainability, 12(10), 4259. https://doi.org/10.3390/su12104259