Technology and Innovation: Analyzing the Heterogeneity of the Hotel Guests’ Behavior
Abstract
:1. Introduction
2. Literature Review and Research Question
2.1. eWOM and Motivation to Consult eWOM
2.2. Information and Communication Technologies (ICT)
2.3. Relational Innovation
2.4. Research Question
3. Research Design
3.1. Data Collection and Measures
3.2. Data Analysis and Results
4. Conclusions and Implications
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Review of Recent Empirical Research on eWOM as Antecedent, ICT and Customer-Related Service Innovations in the Tourism and Hospitality Literature
Authors | Objectives | Methodology | Main Findings |
---|---|---|---|
eWOM | |||
Nieto-García et al. [23] | The paper aims to evaluate the effect of external information (eWOM valence and volume) and internal information (internal reference price) on consumers’ willingness to pay (WTP) for accommodation. | Online experiment and survey design study of 766 tourists was conducted in Spain. | The findings suggest the relevant role of eWOM and internal reference price in determining consumers’ WTP. |
Hu and Kim [13] | The paper aims to examine: (1) The effects of eWOM motivations on customers’ eWOM behavior in the hotel setting. (2) The moderating role of the Big Five personality traits in the relationship between eWOM motivations and eWOM posting behavior. | Survey design study for two independent samples: (1) Positive hotel service encounter, n = 246 participants; (2) Negative hotel service encounter, n = 230 participants were conducted in USA. | Self-enhancement and enjoyment were the critical predictors of positive eWOM behavior, whereas venting and economic incentives were prominent predictors of negative eWOM behavior. Moreover, agreeableness and conscientiousness were found to interact with self-enhancement, enjoyment, and altruism (positive and negative) motivational factors, leading to eWOM behavior. |
Filieri et al. [24] | The paper aims to examine the influence of verbal and visual eWOM cues on tourists’ intentions and behavior. | Experimental and survey-based study of: (1) 460 participants were conducted in Indonesia. (2) 208 participants were conducted in Canada. | eWOM mainly affects tourists’ intentions and decisions through visual cues. Specifically, popularity heuristics, performance visual heuristics, and user-generated pictures affect tourists’ intention and decision to visit a destination and its attractions. However, information quality did not affect tourists’ decisions. |
Moliner-Velázquez et al. [7] | The paper aims to detect the heterogeneity of the effect of different motivations (convenience, risks reduction, and social reassurance) and the volume of comments on the willingness to check online reviews. | Personal survey design study of 393 hotel guests was conducted in Spain. | Results present the factors that influence online comment consultations and the differences between the relationships as a consequence of the unobserved heterogeneity of consumers. Findings disclose the existence of three internally consistent segments, which reveal the varying influence on consumer intentions to look at online comments. |
Lee et al. [18] | The paper aims to analyze the moderating mechanism of eWOM and further consider a multiple mediation analysis of how service innovation may influence in-person WOM through service quality and brand loyalty. | Survey design study of 939 customers of a famous hotpot restaurant was conducted in China. | Results present that when restaurants have positive electronic WOM, it helps restaurants improve service quality, thus increasing brand loyalty over time and helping restaurants increase their reputations in the highly competitive restaurant market. |
Berné et al. [14] | The paper aims to examine hotel managers’ decision-making processes regarding the acceptance and management of eWOM and its impact on the hotel ecosystem. | Survey design study addressed to 142 hotel managers was conducted in Italy. | eWOM is essential in managers’ motivations to explain hotel change implementation. The hotel leverages eWOM information and interaction through structural, relational, and human capital to enhance products, services, and strategies. |
Le and Ryu [4] | The paper aims to evaluate an eWOM adoption model which includes source evaluation attributes, trust in eWOM, eWOM intention and booking intention, and investigate the moderation of negative reviews from vloggers on relationships in the eWOM adoption model. | Experimental survey design studies addressed to 146 students (study 1) and 374 tourists (study 2) were conducted in Vietnam. | Results suggest that source evaluation attributes are important predictors of trust in eWOM, which positively impact eWOM and booking intention. Additionally, the negative review of vloggers can diminish the effects of information quality on trust and of trust on eWOM intention in study 1 and on hotel booking intention in study 2. |
ICT | |||
Šerić [31] | The paper aims to validate the relationships between social web (ICT), IMC, and overall brand equity and to test the moderating role of national culture on these relationships. | Survey-based study of 475 guests of upscale hotels was conducted in Croatia. | Strong positive and significant relationships were found between social web (ICT) and IMC on the one hand, and IMC and brand equity on the other. Moreover, national culture is found to exert a statistically significant moderating effect on both relationships. |
Dieck et al. [50] | The paper aims to propose and test a modified technology acceptance model for social media networks (SMNs) in the luxury hotel context, integrating satisfaction and continued usage intention. | Mixed-method approach study: 16 interviews and 258 questionnaires with luxury hotel guests were conducted in the UK. | Findings show that accessibility, trust, social influence, and perceived benefits influence perceived ease of use and perceived usefulness, which affect attitude and satisfaction and ultimately continued usage intentions. |
Moliner-Velázquez et al. [11] | The paper aims to examine how ICT and eWOM contribute to consumer loyalty in the tourist industry and to observe the moderating effects of customer characteristics. | Survey-based study of 386 hotel guests was conducted in Spain. | Results confirm significant relationships in the sequence ICT advancement-satisfaction with ICT-satisfaction with hotel loyalty, the mediating effect of eWOM, and the moderating effects of the customer characteristics. |
Alabau-Montoya and Ruiz-Molina [56] | The paper aims to provide insight into the emotions of the visitor experiences and the usefulness of ICT as a facilitator of visitor experience co-creation through eliciting emotions. | Qualitative-based study of the comments posted on online review sites of travel-related services was conducted in Spain. | ICT solutions stand out as a useful tool to engage visitors in experience co-creation in war heritage tourism sites and encourage spontaneous, positive electronic word-of-mouth communications. |
Yang et al. [57] | The paper aims to investigate the relationship between technology readiness and technology amenities as antecedents to visiting intentions. | Online survey-based study with 648 travelers was conducted in China. | The results indicate that perceived ease of use and usefulness correlate with technology amenities but not with technology readiness. Furthermore, technology readiness affects intentions to visit smart hotels, but technology amenities do not. |
Hameed et al. [8] | The paper aims to examine open innovation’s role in fostering service innovation and business performance. | Survey-based study with 201 managerial employees of hospitality companies was conducted in Malaysia. | The findings of this study revealed that open innovation has a crucial contribution to fostering service innovation and business performance. Moreover, ICT increases external knowledge and internal innovation, which in turn increases knowledge management. |
Service innovations | |||
Gil-Saura et al. [10] | The paper aims to analyze the impact of hotel relational innovation and technology on brand equity and hotel–guest relational ties, and customer loyalty. | Survey-based study of 401 guests at 42 hotels was conducted in Spain. | Results suggest a significant positive impact of relational innovation on guest perceptions of ICT and the strength of relational ties. Moreover, ICT exerts a positive impact on overall brand equity, which, in turn, has a positive impact on relational ties and guest loyalty. |
Casais et al. [41] | The paper aims to discuss tourism innovation developed by hosts of sharing accommodation based on the outcomes of guests’ value co-creation. | In-depth interviews with hosts of Airbnb accommodations were conducted in Portugal. | The results evidence that relationship marketing is a central aspect of peer-to-peer business models analyzed as an innovation catalyst. This fact is considered critical for co-creating the tourism experience and incrementing innovation in accommodation services. |
Hameed et al. [37] | The paper aims to test the relationships between external knowledge, internal innovation, firms’ open innovation performance, service innovation, and business performance in the hotel industry. | Survey-based study of 285 managerial staff of chain hotels was conducted in Pakistan. | The findings show that firms’ open innovation performance positively influences service innovation and business performance. They also reveal that external knowledge and internal innovation positively influence firms’ open innovation performance, leading to service innovation and business performance, respectively. |
Shin and Perdue [35] | The paper aims to explore open innovation processes by examining the impact of customer empowerment and social recognition rewards on both open innovation engagement intentions and the creativity of proposed innovation ideas. | Two scenario-based experimental studies with 238 undergraduate students and a field survey with 252 hotel community members were conducted in the USA. | The studies found that customer empowerment, mediated by intrinsic motivations, increased open innovation engagement intentions and positively affected the creativity of proposed innovation ideas. As a form of extrinsic motivation, social recognition rewards did not contribute to either open innovation engagement intentions or the creativity of innovation ideas. |
Baloglu and Bai [42] | The paper aims to: (1) Study personalization’s effect relative to relational bonds. (2) Compare this effect to both the Generation Xer and Millennial cohorts. | Survey-based study of 205 luxury hotel guests was conducted in the USA. | The results show differences between the two generational cohorts regarding the relational bonds regarding behavioural loyalty intentions. |
Appendix B. Item Statements
Construct | Items | Source |
---|---|---|
Motivations to consult eWOM | MOT1. I read online reviews about hotels because it’s the fastest way to get information: | Kim et al. [28] |
MOT2. I read online reviews about hotels because it’s convenient to search for information from home or work | ||
MOT3. I read online reviews about hotels because I can easily compare different hotels | ||
MOT4. I read online reviews about hotels because I can find solutions for my problems related to booking | ||
MOT5. I read online reviews about hotels because they help me to make the right buying decisions | ||
MOT6. I read online reviews about hotels because I can benefit from others’ experiences before I book a hotel room | ||
MOT7. I read online reviews about hotels because I like being part of a virtual community | ||
MOT8. I read online reviews about hotels because I get to know which topics are in | ||
Relational Innovation | RIN1. The hotel innovates to reduce or eliminate problems with customers | Oke and Idiagbon-Oke [51] |
RIN2. The hotel innovates so that its relationships with clients are close and personal | ||
RIN3. Thanks to the hotel’s innovations, the relationship with customers is good | ||
ICT implementation | ICT1.This hotel invests in technology | Wu et al. [15] |
ICT2. This hotel incorporates the latest technology trends | ||
ICT3. The technology of this hotel is more advanced compared to other hotels | ||
ICT4. This hotel uses customer feedback to coordinate and develop ICT to improve services and meet customer needs better. |
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Gender | % | Occupation | % |
---|---|---|---|
Male | 50.9% | Student | 7.1% |
Female | 49.1% | Employee | 62.6% |
Age (years) | Self-employed | 8.9% | |
18–25 | 14.5% | Unemployed | 6.9% |
26–35 | 19.6% | Housekeeper | 2.0% |
36–45 | 21.4% | Retired | 12.5% |
46–55 | 19.3% | Education level | |
56–65 | 14.5% | Primary education | 6.6% |
>65 | 10.7% | Secondary education | 14.0% |
With a partner? | Vocational school | 18.6% | |
Alone | 57.3% | Higher education | 54.7% |
In pairs | 28.0% | Postgraduate education | 6.1% |
With family | 5.1% | Travel reason | |
With a group | 4.3% | Leisure/vacations | 93.9% |
With others | 57.3% | Business | 5.6% |
Hotel rating | Both | 0.5% | |
2-star | 2.8% | Number of nights spent | |
3-star | 32.3% | 2 | 31.8% |
4-star | 58.0% | ≥3 | 68.2% |
≥5-star | 6.9% | Advance booking | |
<1 week | 30.3% | ||
1–2 weeks | 48.9% | ||
2–3 weeks | 13.7% | ||
>3 weeks | 7.1% |
Latent Construct | Item | Factor Loading | t-Stat | R2 |
---|---|---|---|---|
F1. Motivations to consult eWOM α = 0.949 CR = 0.957 AVE = 0.760 | MOT1 | 0.881 a | 0.776 | |
MOT2 | 0.907 ** | 25.14 | 0.823 | |
MOT3 | 0.910 ** | 30.94 | 0.827 | |
MOT4 | 0.883 ** | 32.14 | 0.780 | |
MOT5 | 0.886 ** | 28.61 | 0.784 | |
MOT6 | 0.892 ** | 27.98 | 0.795 | |
MOT8 | 0.733 ** | 19.81 | 0.538 | |
F2. Relational Innovation α = 0.948 CR = 0.951 AVE = 0.886 | RINN1 | 0.920 | 0.846 | |
RINN2 | 0.930 ** | 39.24 | 0.864 | |
RINN3 | 0.932 ** | 36.79 | 0.869 | |
F3. ICT implementation α = 0.951 CR = 0.951 AVE = 0.828 | ICT1 | 0.886 | 0.786 | |
ICT2 | 0.928 ** | 35.35 | 0.861 | |
ICT3 | 0.925 ** | 29.65 | 0.855 | |
ICT4 | 0.905 ** | 30.90 | 0.820 |
Latent Construct | Mean | SD | F1 | F2 | F3 |
---|---|---|---|---|---|
F1. Motivations to consult eWOM | 5.13 | 1.40 | 0.872 | ||
F2. Relational Innovation | 4.67 | 1.51 | 0.811 ** | 0.941 | |
F3. ICT Implementation | 4.33 | 1.44 | 0.289 ** | 0.308 ** | 0.910 |
-LL | AIC | BIC | CAIC | Entropy | R2 | N Free Par | |
1-Class | 1261.72 | 2535.44 | 2559.28 | 2565.28 | 1.00 | 1.00 | 6 |
2-Classes | 1108.15 | 2236.30 | 2276.04 | 2286.04 | 0.86 | 0.88 | 10 |
3-Classes | 1092.15 | 2212.31 | 2267.94 | 2281.94 | 0.72 | 0.73 | 14 |
4-Classes | 1090.57 | 2217.14 | 2288.67 | 2306.67 | 0.61 | 0.57 | 18 |
Predictors | Seg. 1 (n = 193; 49.1%) | Seg. 2 (n = 137; 34.9%) | Seg. 3 (n = 63; 16.0%) | Wald | R2 | |||
Parameter (s.e.) | z-Stat | Parameter (s.e.) | z-Stat | Parameter (s.e.) | z-Stat | |||
Intercept | 0.33 * (0.13) | 2.44 | 0.02 (0.16) | 0.13 | −0.35 * (0.18) | −1.96 | ||
Moti. Consult eWOM | −0.27 + (0.17) | −1.65 | 0.85 ** (0.15) | 5.47 | −0.57 ** (0.19) | −2.99 | 29.96 ** | 0.16 |
Relational Innovat. | −3.32 ** (0.81) | −4.11 | 3.25 ** (0.77) | 4.23 | 0.07 (0.36) | 0.20 | 18.36 ** | 0.79 |
ICT implement. | −2.98 ** (0.67) | −4.45 | 2.73 ** (0.56) | 4.87 | 0.25 (0.32) | 0.80 | 23.83 ** | 0.73 |
Variable | Seg. 1 | Seg. 2 | Seg. 3 | |
Motivations to consult eWOM F(df = 2) = 41.974 ** | 4.793 (±1.40) | 5.917 (±0.93) | 4.447 (±1.49) | |
Relational Innovation F(df = 2) = 399.5 ** | 3.461 (±1.02) | 6.166 (±0.62) | 5.111 (±0.81) | |
ICT Implementation F(df = 2) = 328.4 ** | 3.216 (±1.02) | 5.701 (±0.79) | 4.758 (±0.52) | |
Covariable | ||||
Gender χ2(df = 2) = 6.22 * | Male | 46.1% | 46.7% | 63.5% |
Female | 53.9% | 53.3% | 36.5% | |
Age F(df = 2) = 1.61 | Mean (±sd) year | 43.3 (±14.8) | 43.2 (±14.8) | 46.9 (±15.3) |
Motive for traveling χ2(df = 4) = 6.98 | Leisure | 91.2% | 97.8% | 93.7% |
Business | 7.8% | 2.2% | 6.3% | |
Both | 1.0% | 0% | 0% | |
Number of stars χ2(df = 6) = 19.31 ** | 2 * | 5.2% | 0.7% | 0% |
3 * | 35.8% | 29.9% | 13.4% | |
4 * | 56% | 60.6% | 16.2% | |
≥5 * | 3.1% | 8.8% | 33.3% |
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Bordian, M.; Fuentes-Blasco, M.; Gil-Saura, I.; Moliner-Velázquez, B. Technology and Innovation: Analyzing the Heterogeneity of the Hotel Guests’ Behavior. J. Theor. Appl. Electron. Commer. Res. 2024, 19, 1599-1615. https://doi.org/10.3390/jtaer19020078
Bordian M, Fuentes-Blasco M, Gil-Saura I, Moliner-Velázquez B. Technology and Innovation: Analyzing the Heterogeneity of the Hotel Guests’ Behavior. Journal of Theoretical and Applied Electronic Commerce Research. 2024; 19(2):1599-1615. https://doi.org/10.3390/jtaer19020078
Chicago/Turabian StyleBordian, Mariia, María Fuentes-Blasco, Irene Gil-Saura, and Beatriz Moliner-Velázquez. 2024. "Technology and Innovation: Analyzing the Heterogeneity of the Hotel Guests’ Behavior" Journal of Theoretical and Applied Electronic Commerce Research 19, no. 2: 1599-1615. https://doi.org/10.3390/jtaer19020078
APA StyleBordian, M., Fuentes-Blasco, M., Gil-Saura, I., & Moliner-Velázquez, B. (2024). Technology and Innovation: Analyzing the Heterogeneity of the Hotel Guests’ Behavior. Journal of Theoretical and Applied Electronic Commerce Research, 19(2), 1599-1615. https://doi.org/10.3390/jtaer19020078