Text Mining with Network Analysis of Online Reviews and Consumers’ Satisfaction: A Case Study in Busan Wine Bars
Abstract
:1. Introduction
2. Literature Review
2.1. Online Review
2.2. Wine Bar and Service Quality
2.3. Customer Satisfaction and Experience
2.4. Text Mining and Semantic Network Analysis
3. Methodology
3.1. Sample Design and Data Collection
3.2. Data Analysis
3.3. Research Hypothesis
4. Result
4.1. Frequency Analysis
4.2. Semantic Network Analysis
4.3. Factor Analysis
4.4. Linear Regression Analysis
5. Conclusions
6. Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Author Name | Year | Title | Implication |
---|---|---|---|
Wolf, Wolf, and Lecat [37] | 2022 | Wine market segmentation by age generations in the Western US: expectations after the COVID-19 pandemic | As a result of this study, segmentation by generation is appropriate when creating products, pricing, determining channels of distribution, and creating messaging for a specific wine brand. The COVID-19 pandemic caused channel shifting that is expected to continue after the pandemic. |
Gazzola, Grechi, Pavione and Gilardoni [38] | 2022 | Italian wine sustainability: new trends in consumer behaviors for the millennial generation. | This study reflects the Italian reality of the pre-COVID-19 period. Obviously, the pandemic situation and the geographic scenario analyzed could change the results of a second wave of the survey. |
Fu and Kim [39] | 2021 | A study on wine cognition using semantic network analysis: Focused on the Chinese wine market | This study could be considered as one of the research paradigms of the utilization of big data in the wine industry for the Chinese market and meaningful information extracted from this study could be an instrumental example for illustrating the significance of big data and semantic network analysis in the research of wine industry. |
Deroover, Siegrist, Brain, McIntyre, and Bucher [40] | 2021 | A scoping review on consumer behavior related to wine and health | This review summarizes the current research published on consumers’ health perception of wine and health. Five topics were identified: perceived healthiness of wine, moderate wine consumption, the role of health in wine consumption decision making, labeling, and consumer perception and behavior related to wine innovations. Consumers are confused about the exact health impact of wine and there is still an important need for further educational efforts on this matter. |
Dressler and Paunovic [13] | 2019 | Customer-centric offer design: Meeting expectations for a wine bar and shop and the relevance of hybrid offering components | Wine bars and shops need to concentrate on hybrid offerings of wine-related products and services to create a memorable experience. It should position itself on the market based on its strengths and consciously emphasize distinctiveness from regular wine-sales channels. |
Words | Frequency | Rank | % | Words | Frequency | Rank | % |
---|---|---|---|---|---|---|---|
atmosphere | 651 | 1 | 27.58% | light | 21 | 26 | 0.89% |
cocktail | 227 | 2 | 9.62% | reservation | 21 | 27 | 0.89% |
snack | 113 | 3 | 4.79% | guest | 21 | 28 | 0.89% |
whiskey | 107 | 4 | 4.53% | mood | 21 | 29 | 0.89% |
drink | 91 | 5 | 3.86% | Gwangalli | 20 | 30 | 0.85% |
service | 73 | 6 | 3.09% | conversation | 18 | 31 | 0.76% |
price | 69 | 7 | 2.92% | experience | 18 | 32 | 0.76% |
wine | 66 | 8 | 2.80% | interior | 17 | 33 | 0.72% |
friendly | 53 | 9 | 2.25% | variety | 16 | 34 | 0.68% |
restaurant | 52 | 10 | 2.20% | amount | 16 | 35 | 0.68% |
place | 48 | 11 | 2.03% | recommendation | 15 | 36 | 0.64% |
bartend | 46 | 12 | 1.95% | floor | 14 | 37 | 0.59% |
alcohol | 45 | 13 | 1.91% | foreigner | 14 | 38 | 0.59% |
taste | 40 | 14 | 1.69% | liquor | 14 | 39 | 0.59% |
Seomyeon | 36 | 15 | 1.53% | food | 13 | 40 | 0.55% |
selection | 32 | 16 | 1.36% | toilet | 13 | 41 | 0.55% |
staff | 31 | 17 | 1.31% | dinner | 13 | 42 | 0.55% |
weekend | 31 | 18 | 1.31% | order | 13 | 43 | 0.55% |
quality | 27 | 19 | 1.14% | table | 12 | 44 | 0.51% |
bottle | 27 | 20 | 1.14% | flavor | 11 | 45 | 0.47% |
bar | 27 | 21 | 1.14% | manager | 11 | 46 | 0.47% |
cheese | 26 | 22 | 1.10% | special | 10 | 47 | 0.42% |
Busan | 24 | 23 | 1.02% | feel | 10 | 48 | 0.42% |
music | 24 | 24 | 1.02% | difference | 10 | 49 | 0.42% |
performance | 22 | 25 | 0.93% | beer | 10 | 50 | 0.42% |
Words | Frequency | Freeman’s Degree Centrality | Eigenvector Centrality | |||
---|---|---|---|---|---|---|
Frequency | Rank | Coefficient | Rank | Coefficient | Rank | |
atmosphere | 651 | 1 | 13.121 | 1 | 0.577 | 1 |
cocktail | 227 | 2 | 8.403 | 2 | 0.511 | 2 |
snack | 113 | 3 | 4.058 | 4 | 0.267 | 4 |
whiskey | 107 | 4 | 4.574 | 3 | 0.285 | 3 |
drink | 91 | 5 | 2.845 | 5 | 0.141 | 8 |
service | 73 | 6 | 2.581 | 6 | 0.19 | 5 |
price | 69 | 7 | 2.185 | 7 | 0.142 | 7 |
wine | 66 | 8 | 1.609 | 12 | 0.122 | 9 |
friendly | 53 | 9 | 1.993 | 9 | 0.103 | 12 |
restaurant | 52 | 10 | 1.753 | 10 | 0.115 | 11 |
place | 48 | 11 | 1.285 | 14 | 0.057 | 25 |
bartend | 46 | 12 | 2.005 | 8 | 0.148 | 6 |
alcohol | 45 | 13 | 1.248 | 17 | 0.077 | 16 |
taste | 40 | 14 | 1.200 | 19 | 0.064 | 24 |
seomyeon | 36 | 15 | 1.645 | 11 | 0.117 | 10 |
selection | 32 | 16 | 1.453 | 13 | 0.091 | 13 |
weekend | 31 | 18 | 0.888 | 28 | 0.075 | 19 |
staff | 31 | 17 | 1.116 | 21 | 0.08 | 15 |
quality | 27 | 19 | 1.152 | 20 | 0.076 | 18 |
bottle | 27 | 20 | 1.056 | 22 | 0.048 | 29 |
bar | 27 | 21 | 0.564 | 38 | 0.031 | 42 |
cheese | 26 | 22 | 0.900 | 27 | 0.054 | 26 |
music | 24 | 24 | 0.912 | 26 | 0.077 | 17 |
Busan | 24 | 23 | 0.684 | 31 | 0.039 | 33 |
performance | 22 | 25 | 0.648 | 32 | 0.042 | 30 |
reservation | 21 | 27 | 1.236 | 18 | 0.067 | 22 |
mood | 21 | 29 | 0.024 | 50 | 0.003 | 50 |
light | 21 | 26 | 1.008 | 23 | 0.084 | 14 |
guest | 21 | 28 | 1.261 | 16 | 0.069 | 21 |
gwangalli | 20 | 30 | 0.576 | 35 | 0.034 | 37 |
experience | 18 | 32 | 0.444 | 44 | 0.016 | 48 |
conversation | 18 | 31 | 0.648 | 33 | 0.072 | 20 |
interior | 17 | 33 | 0.312 | 47 | 0.033 | 38 |
variety | 16 | 34 | 0.492 | 41 | 0.032 | 41 |
amount | 16 | 35 | 0.780 | 29 | 0.052 | 27 |
recommendation | 15 | 36 | 0.456 | 43 | 0.035 | 36 |
liquor | 14 | 39 | 0.960 | 25 | 0.036 | 35 |
foreigner | 14 | 38 | 0.360 | 45 | 0.019 | 47 |
floor | 14 | 37 | 0.624 | 34 | 0.039 | 34 |
toilet | 13 | 41 | 0.312 | 46 | 0.029 | 43 |
order | 13 | 43 | 1.273 | 15 | 0.065 | 23 |
food | 13 | 40 | 0.504 | 40 | 0.033 | 39 |
dinner | 13 | 42 | 0.564 | 36 | 0.033 | 40 |
table | 12 | 44 | 0.996 | 24 | 0.052 | 28 |
manager | 11 | 46 | 0.732 | 30 | 0.041 | 31 |
flavor | 11 | 45 | 0.564 | 37 | 0.029 | 44 |
special | 10 | 47 | 0.264 | 48 | 0.022 | 46 |
feel | 10 | 48 | 0.240 | 49 | 0.014 | 49 |
difference | 10 | 49 | 0.516 | 39 | 0.027 | 45 |
beer | 10 | 50 | 0.456 | 42 | 0.04 | 32 |
Extracted Words | Significant Words | |
---|---|---|
Date and Location | drink/weekend/gwangalli/dinner/bar/seomyeon/place/foreigner/Busan/ restaurant | drink/weekend/gwangalli/dinner/bar/ seomyeon/foreigner/Busan/restaurant |
Service | quality/order/staff/reservation/ performance/friendly/selection/ guest/service/bartend/ conversation/experience/manager/ recommendation | quality/order/staff/reservation/friendly/ selection/guest/service/bartend/conversation/experience/manager/ recommendation |
Menu | snack/cocktail/taste/amount/bottle/wine/cheese/alcohot/price/beer/ flavor/liquor/food/whiskey/variety | snack/cocktail/taste/amount/bottle/wine/cheese/alcohot/price/beer/flavor/ liquor/food/whiskey/variety |
Atmosphere | light/mood/table/special/floor/feel/difference/atmosphere/interior/ toilet/music | light/mood/table/special/floor/feel/ difference/atmosphere/interior/toilet/ music |
Words | Factor Loading | Eigen Value | Variance (%) | |
---|---|---|---|---|
Service | Staff | 0.884 | 1.836 | 11.473 |
Friendly | 0.895 | |||
Staff | Manager | 0.793 | 1.524 | 9.524 |
Bartend | 0.776 | |||
Menu | Bottle | 0.661 | 1.391 | 8.693 |
Cheese | 0.630 | |||
Wine | 0.558 | |||
Snack | 0.481 | |||
Environment | Interior | 0.779 | 1.253 | 7.831 |
Light | 0.710 | |||
Recommendation | Reservation | 0.666 | 1.198 | 7.490 |
Experience | 0.647 | |||
Busan | 0.521 | |||
Atmosphere | Floor | 0.637 | 1.022 | 6.385 |
Place | 0.522 | |||
Music | 0.506 |
Model | Unstandardized | Standardized | t | Sig. | |
---|---|---|---|---|---|
Coef. | Coef. | ||||
B | Std. Error | Beta | |||
(Constant) | 4.434 | 0.024 | 184.268 | 0.000 | |
Service | 0.049 | 0.024 | 0.055 | 2.037 | 0.042 |
Staff | 0.043 | 0.024 | 0.049 | 1.795 | 0.073 |
Menu | −0.060 | 0.024 | −0.068 | −2.498 | 0.013 |
Environment | −0.049 | 0.024 | −0.055 | −2.035 | 0.042 |
Recommendation | 0.066 | 0.024 | 0.075 | 2.749 | 0.006 |
Atmosphere | 0.020 | 0.024 | 0.022 | 0.811 | 0.418 |
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Fu, W.; Choi, E.-K.; Kim, H.-S. Text Mining with Network Analysis of Online Reviews and Consumers’ Satisfaction: A Case Study in Busan Wine Bars. Information 2022, 13, 127. https://doi.org/10.3390/info13030127
Fu W, Choi E-K, Kim H-S. Text Mining with Network Analysis of Online Reviews and Consumers’ Satisfaction: A Case Study in Busan Wine Bars. Information. 2022; 13(3):127. https://doi.org/10.3390/info13030127
Chicago/Turabian StyleFu, Wei, Eun-Kyong Choi, and Hak-Seon Kim. 2022. "Text Mining with Network Analysis of Online Reviews and Consumers’ Satisfaction: A Case Study in Busan Wine Bars" Information 13, no. 3: 127. https://doi.org/10.3390/info13030127
APA StyleFu, W., Choi, E. -K., & Kim, H. -S. (2022). Text Mining with Network Analysis of Online Reviews and Consumers’ Satisfaction: A Case Study in Busan Wine Bars. Information, 13(3), 127. https://doi.org/10.3390/info13030127