User Acceptance of Hotel Service Robots Using the Quantitative Kano Model
Abstract
:1. Introduction
2. Literature Review
2.1. Contemporary Research on Public Acceptance of HSRs
2.2. Decomposing Public Development Acceptance of HSRs: Application of the Perceived Value Theory
- Hotel room price: The amount paid for staying in a hotel room. (A1)
- Hotel charge service price: The price when using dry cleaning services. (A2)
- Catering price: The cost incurred when purchasing food or drinks. (A3)
- Safety: The safety of using robots. (A4)
- Reliability: Robots can accurately execute commands. (A5)
- Time-saving: It takes less time for the robot to execute commands. (A6)
- Personification: It feels more like a real human being. (A7)
- Convenience: Simpler and faster. (A8)
- Diversified Services: More types and forms of services. (A9)
- Clean: The cleanliness of the hotel’s environment. (A10)
- Quiet: The surrounding environment is pleasant during their stay. (A11)
- Privacy protection: The high-tech means of robots make the personal privacy of customers better protected. (A12)
- Trustworthiness: In an uncertain environment, the user actively predicts the robot’s behaviors, believing it will act as expected. (A13)
- Luxuriousness: A magnificent, rich feeling. (A14)
- Social interaction: Social activities interacting with other individuals for material and spiritual exchanges. (A15)
- Appearance: Looks comfortable and happy. (A16)
- Enjoyment: The feeling of pleasure and satisfaction when one does or experiences something positive. (A17)
- Legal compliance: Compliance with the law. (A18)
- Social norm compliance: Robots make more ethical choices. For example, if a guest falls or has a sudden illness, the robot automatically calls the police or helps the guest. (A19)
- Reduced manufacturing waste: Precise use of computing resources without waste. (A20)
- Reputation: Famous for using the latest technology of hotel robots. (A21)
- Scientific: Using hotel robots promotes science’s necessity and enables people to support using and developing new technologies. (A22)
2.3. Differentiating Attributes of Public Perceived Value: Application of the Kano Model
3. Methods
3.1. Questionnaire Design and Sample Statistics
3.2. Quantitative Acceptance Analysis
4. Results
4.1. Quantitative Acceptance Analysis
4.2. Sensitivity Analysis: Acceptance Formation Rate versus Product Performance
5. Conclusions
6. Managerial Implications
Author Contributions
Funding
Conflicts of Interest
Appendix A
Questionnaire 1. Hotel room price: Amount to be paid for staying in a hotel room. If hotel room prices for hotel service robots are not cheap, would you choose it? If hotel room prices for hotel service robots are cheap, would you choose it?
2. Hotel charge service price: The price you need to pay when using dry cleaning services in the hotel. If hotel charge service prices for hotel service robots are not cheap, would you choose it? If hotel charge service prices for hotel service robots are cheap, would you choose it?
3. Catering price: The cost incurred in the purchase of food or drinks in the hotel. If hotel catering prices for hotel service robots are not cheap, would you choose it? If hotel catering prices for hotel service robots are cheap, would you choose it?
4. Safety: The safety of robot use. If the hotel using hotel service robots is not safe, would you choose it? If the hotel using hotel service robots is safe, would you choose it?
5. Reliability: Robots can accurately execute commands. If the hotel uses a hotel service robot that is not reliable, would you choose it? If the hotel uses a hotel service robot that is reliable, would you choose it?
6. Save time: It takes less time for the robot to execute commands. If the hotel using the hotel service robot does not save time, would you choose it? If the hotel using the hotel service robot saves time, would you choose it?
7. Personification: It feels more like a real human being. If the hotel uses a hotel service robot that is impersonal, would you choose it? If the hotel uses a hotel service robot that is personalized, would you choose it?
8. Convenience: Simpler and faster to use.If the hotel uses a hotel service robot that is an inconvenience, would you choose it? If the hotel uses the hotel service robot that is convenient, would you choose it? Will the convenience affect your use of hotel service robots? 9. Diversified services: More types and forms of service than ever. If the hotel service using hotel service robots is not diversified, would you choose it? If the hotel service using hotel service robots is diversified, would you choose it?
10. Cleanly: The cleanliness of the hotel environment. If the hotel using hotel service robots is not clean, would you choose it? If the hotel using hotel service robots is clean, would you choose it?
11. Quietly: The surrounding environment is not noisy during the stay. If the hotel using hotel service robots is not quiet, would you choose it? If the hotel using hotel service robots is quiet, would you choose it?
12. Privacy protection: The high-tech means of robots are used to make the personal privacy of customers better protected. If the hotel using hotel service robots does not have privacy protection, would you choose it? If the hotel using hotel service robots does have privacy protection, would you choose it?
13. Trustworthy: It is a belief that in the uncertain environment, the user actively predicts the behavior of the robot, relies on the robot, and believes that the robot will act as expected. If the hotel uses a hotel service robot that is not trustworthy, would you choose it? If the hotel uses a hotel service robot that is trustworthy, would you choose it?
14. Luxury: Magnificent, rich feeling. If the hotel using hotel service robots is not luxurious, would you choose it? If the hotel using hotel service robots is luxurious, would you choose it?
15. Social interaction: Social activities that interact with other individuals for material and spiritual exchanges. If the hotel uses a hotel service robot that cannot socially interact, would you choose it? If the hotel uses a hotel service robot that can socially interact, would you choose it?
16. Aesthetic/appearance: Looks comfortable and happy. If the hotel using hotel service robots is not aesthetically pleasing, would you choose it? If the hotel using hotel service robots is aesthetically pleasing, would you choose it?
17. Enjoyment: It is the feeling of pleasure and satisfaction that you have when you do or experience something that you like. If the hotel using hotel service robots is not enjoyable, would you choose it? If the hotel using hotel service robots is enjoyable, would you choose it?
18. Legal compliance: Compliance with the law. If the hotel using hotel service robots is not in legal compliance, would you choose it? If the hotel using hotel service robots is in legal compliance, would you choose it?
19. Social norm compliance: Robots can make more ethical choices (for example, if a guest falls or has a sudden illness, the robot can automatically call the police or help the guest). If the hotel uses a hotel service robot with no social norms compliance, would you choose it? If the hotel uses a hotel service robot with social norms compliance, would you choose it?
20. Reduce manufacturing waste: Precise use of computing resources without waste. If the hotel uses a hotel service robot that does not reduce manufacturing waste, would you choose it? If the hotel uses a hotel service robot that reduces manufacturing waste, would you choose it?
21. Reputation: It is famous for using the latest technology of hotel robots. If the hotel using hotel service robots is not reputable, would you choose it? If the hotel using hotel service robots is reputable, would you choose it?
22. Scientific: The use of hotel robots promotes the necessity of science and enables more people to support the use and development of new technologies. If the hotel using hotel service robots is not scientifically motivated, would you choose it? If the hotel using hotel service robots has scientific motivations, would you choose it?
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Demographic Characteristics | Number of Respondents (n = 261) | Percentage (%) |
---|---|---|
Gender | ||
Male | 91 | 34.87 |
Female | 170 | 65.13 |
Age | ||
Less than 18 years old | 2 | 0.77 |
18–28 years old | 142 | 54.41 |
29–38 years old | 72 | 27.59 |
39–48 years old | 22 | 8.43 |
49–58 years old | 21 | 8.05 |
More than 58 years old | 2 | 0.77 |
Educational Status | ||
High school degree | 25 | 9.58 |
College degree | 146 | 55.94 |
Master’s degree | 53 | 20.31 |
Doctoral degree | 14 | 5.36 |
Not in the option | 23 | 8.81 |
Profession | ||
Full-time student | 55 | 21.07 |
Production staff | 10 | 3.83 |
Salesperson | 19 | 7.28 |
Financial auditor | 17 | 6.51 |
Civilian staff | 15 | 5.75 |
Teacher | 42 | 17.5 |
Consultant | 2 | 16.09 |
Firm employees | 59 | 22.61 |
Professionals | 8 | 3.07 |
Other (self-employed, freelance, farmer, unemployed, transport, etc.) | 34 | 13.02 |
Annual income level | ||
50,000–100,000 | 119 | 45.59 |
100,000–200,000 | 50 | 19.16 |
200,000–300,000 | 13 | 4.98 |
Higher than 300,000 | 12 | 4.6 |
Not in the option | 67 | 25.67 |
User Requirement | Answer to the Dysfunctional Question | |||||
---|---|---|---|---|---|---|
Like | Must Be | Neutral | Live with | Dislike | ||
Answer to the functional question | Like | Q | A | A | A | O |
Must be | R | I | I | I | M | |
Neutral | R | I | I | I | M | |
Live with | R | I | I | I | M | |
Dislike | R | R | R | R | Q |
(1) | (2) | (3) | (4) | (5) | (6) | (7) |
---|---|---|---|---|---|---|
A1 | 0.5787 | −0.3701 | 0.95xi − 0.37 | 0.55xi − 0.92 | −1.50xi + 1.13 | − 0.24 |
A2 | 0.5099 | −0.3992 | 0.91xi − 0.40 | 0.53xi − 0.93 | −1.44xi + 1.04 | − 0.20 − 0.18 |
A3 | 0.5320 | −0.3880 | 0.92xi − 0.39 | 0.54xi − 0.92 | −1.46xi + 1.07 | − 0.20 |
A4 | 0.5219 | −0.6693 | 1.19xi − 0.67 | 0.69xi − 1.36 | −1.88xi + 1.22 | − 0.12 |
A5 | 0.5984 | −0.6299 | 1.23xi − 0.63 | 0.71xi − 1.34 | −1.94xi + 1.31 | − 0.25 |
A6 | 0.5814 | −0.4651 | 1.05xi − 0.47 | 0.61xi − 1.07 | −1.66xi + 1.19 | − 0.26 |
A7 | 0.5664 | −0.6055 | 1.17xi − 0.61 | 0.68xi − 1.29 | −1.85xi + 1.25 | − 0.22 |
A8 | 0.5922 | −0.5608 | 1.15xi − 0.56 | 0.67xi − 1.23 | −1.82xi + 1.26 | − 0.26 |
A9 | 0.5422 | −0.4337 | 0.98xi − 0.43 | 0.57xi − 1.00 | −1.54xi + 1.11 | − 0.20 |
A10 | 0.6235 | −0.6784 | 1.30xi − 0.68 | 0.76xi − 1.44 | −2.06xi + 1.38 | − 0.27 |
A11 | 0.6310 | −0.6548 | 1.29xi − 0.65 | 0.75xi − 1.40 | −2.03xi + 1.38 | − 0.28 |
A12 | 0.6142 | −0.6890 | 1.30xi − 0.69 | 0.76xi − 1.45 | −2.06xi + 1.37 | − 0.26 |
A13 | 0.6048 | −0.6371 | 1.24xi − 0.64 | 0.72xi − 1.36 | −1.96xi + 1.33 | − 0.26 |
A14 | 0.5238 | −0.3294 | 0.85xi − 0.33 | 0.50xi − 0.83 | −1.35xi + 1.02 | − 0.21 |
A15 | 0.6653 | −0.3745 | 1.04xi − 0.37 | 0.61xi − 0.98 | −1.65xi + 1.27 | − 0.37 |
A16 | 0.5178 | −0.3439 | 0.86xi − 0.34 | 0.50xi − 0.85 | −1.36xi + 1.02 | − 0.19 |
A17 | 0.6335 | −0.4382 | 1.07xi − 0.44 | 0.62xi − 1.06 | −1.70xi + 1.26 | − 0.32 |
A18 | 0.5630 | −0.6693 | 1.23xi − 0.67 | 0.72xi − 1.39 | −1.95xi−1.28 | − 0.19 |
A19 | 0.6142 | −0.6024 | 1.22xi − 0.60 | 0.71xi − 1.31 | −1.92xi + 1.32 | − 0.29 |
A20 | 0.6200 | −0.4880 | 1.11xi − 0.49 | 0.64xi − 1.13 | −1.75xi + 1.26 | − 0.20 − 0.30 |
A21 | 0.5652 | −0.3478 | 0.91xi − 0.49 | 0.53xi − 0.88 | −1.44xi + 1.10 | − 0.27 |
A22 | 0.5866 | −0.4843 | 1.07xi − 0.48 | 0.62xi − 1.11 | −1.69xi + 1.21 | − 0.27 |
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Xie, M.; Kim, H.-b. User Acceptance of Hotel Service Robots Using the Quantitative Kano Model. Sustainability 2022, 14, 3988. https://doi.org/10.3390/su14073988
Xie M, Kim H-b. User Acceptance of Hotel Service Robots Using the Quantitative Kano Model. Sustainability. 2022; 14(7):3988. https://doi.org/10.3390/su14073988
Chicago/Turabian StyleXie, Muzi, and Hong-bumm Kim. 2022. "User Acceptance of Hotel Service Robots Using the Quantitative Kano Model" Sustainability 14, no. 7: 3988. https://doi.org/10.3390/su14073988
APA StyleXie, M., & Kim, H.-b. (2022). User Acceptance of Hotel Service Robots Using the Quantitative Kano Model. Sustainability, 14(7), 3988. https://doi.org/10.3390/su14073988