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Article

Developing a Wine Tourism Destination Image Measurement Scale

by
Gvantsa Sekhniashvili
1,* and
Zoltán Bujdosó
2
1
Doctoral School of Economic and Regional Sciences, Hungarian University of Agriculture and Life Sciences, Páter Károly utca 1., H-2100 Gödöllő, Hungary
2
Institute of Rural Development and Sustainable Economy, Hungarian University of Agriculture and Life Sciences, Páter Károly utca 1., H-2100 Gödöllő, Hungary
*
Author to whom correspondence should be addressed.
Sustainability 2023, 15(11), 8549; https://doi.org/10.3390/su15118549
Submission received: 13 April 2023 / Revised: 17 May 2023 / Accepted: 22 May 2023 / Published: 24 May 2023
(This article belongs to the Collection Advances in Marketing and Managing Tourism Destinations)

Abstract

:
Wine tourism plays an important role in the positioning strategies of wine destinations. As the competitiveness is high among wine destinations, it is important to identify the main factors that affect wine tourists’ decision making. One of the most important factors is the wine tourism destination’s image. To measure the image of a wine region, there is a need for a scale that is adapted to the characteristics of wine tourism destinations. Our purpose is to develop a scale that can measure any wine region’s image. We used a literature review and focus group interviews to collect scale attributes. We gathered responses using an online survey. Our respondents were mostly non-visitors. We used FA to analyze the data. We also tested the reliability of this scale using Cronbach’s Alpha. As a result, we developed a reliable scale with six factors. This can be further tested and used by any wine tourism destination to measure the people’s perceptions about them. The developed scale can have various purposes. It can be used by destination management organizations or marketing agencies. Measured images of wine region can be used in the planning of future positioning strategies and promotions. The scale can be used to compare the images of competitor wine regions. Images can also be studied during a period and any changes can be observed.

1. Introduction

Wine tourism significantly affects regional development [1]. Wine tourism can contribute to job creation, regional revitalization, preservation of the culture and customs, and wildlife protection [1]. To ensure the sustainability of wine tourism destinations (WTDs), it is important to manage and monitor its tourism development. Unmanaged tourism can be destructive for WTDs.
Marketing and promotion of a destination are part of its management, and assists in the positioning of wine regions in a way that prevents mass tourism and undesired touristic development. To plan and execute positioning of a wine region, the first step is to understand the perceptions that target markets have about the WTD. Researching the wine tourism destination image (WTDI) contributes to the sustainable development of a wine region.
In addition, today’s wine tourists are more aware of sustainability issues, their own responsibilities, and the environmental effects of their choice [2]. Sustainability is becoming a differentiating factor for WTDs [2]. For this reason, studying the image that target markets hold about WTDs is crucial.
Tourists’ decision making is strongly related to the destination image [3]. Images that tourists hold about destinations even affect travel satisfaction [3]. People only consider traveling to a destination that they are aware of or have some information and impressions about [4]. In addition, people are more likely to decide to visit a destination about which they have a strong image [4,5]. This is why, in order to be more competitive, destination developers and marketers need to create an attractive destination image [6]. A decision about visitation depends on the match between people’s perception of the destination’s offering and the people’s preferences [7]. It is also important to monitor tourists’ perceptions as they might not perceive destinations the same way as destination marketers project them. Even though destination branding contributes to the images that tourists hold, other information sources participate in the image-formation process [8]. All information sources, such as general and social media, word-of-mouth, and own experience of visiting a destination, are involved in image formation [9].
Echtner and Ritchie [9,10] conceptualized destination image. Based on this model, imagery can be attribute-based or holistic. Attribute-based imagery is measured with a structured methodology such as image scales, where respondents are asked about measurable attributes of the image, for example, price levels, safety, and friendliness of locals. Holistic imagery is a holistic impression of a destination, and it cannot be measured with attribute-based scales. Holistic imagery is studied using an unstructured methodology, such as a free-form description of one’s perceptions of a destination. Destination image characteristics can be functional and psychological. Functional characteristics are observable, for example, tourist sites or climate, whereas psychological characteristics are intangible, for example, friendliness, fame, or quality of service. Both characteristics can be measured by structured attribute-based scales and unstructured methods as a part of holistic imagery. The image characteristics can also be common and unique. Common attributes can be either functional or psychological and are opposed to unique attributes and features of a destination. For example, common attributes (both functional and psychological) can be measured by attribute-based scales as part of the structured measurement methodology. These attributes can be rated by respondents and can be compared with other destinations’ characteristics. On the contrary, unique characteristics cannot be compared or rated using the structured methodology. Unique features of the destination image can be measured by the unstructured methodology.
Echtner and Ritchie’s [9,10] destination image concept has different dimensions, but they should be understood as a whole and measured altogether. As an example, climate and price levels are functional and common dimensions that can be measured by attribute-based scales. However, they can also be part of a destination’s holistic image that can be measured by the unstructured methodology. The fame and quality of service are psychological and common attributes of a destination. They can be measured by attribute-based scales. However, they can also be captured as a part of the holistic imagery of a destination measured with unstructured methods. Finally, holistic imagery can only be captured by unstructured methods. Unique characteristics of the destination image can also only be captured by unstructured methods.
The formation of a destination image relies on various information sources, which can be categorized as either primary or secondary. Primary sources are derived from individuals’ personal visitation experiences at the destination, while secondary sources encompass information gathered from external sources [11]. Secondary sources encompass a wide range of channels, including travel guides, advertising, recommendations from friends and family, online platforms, destination management organizations, and various media outlets [12]. In other words, visitors hold images based on their own experiences, while non-visitors hold images based on secondary sources. The primary and secondary images can be different from each other, and secondary images might change after the visitation [13]. The perception of information from different sources varies among individual travelers, leading to subjective expectations [14]. As a result, the actual decision to visit a destination is influenced by the alignment between tourists’ preferences and their perceived offerings of the destination [7].
When talking about a specific type of destination, such as WTD, an image can be formed through the same general information sources, as well as some more specific ones. For example, wine tastings, wine-related media, movies, and books will contribute to the image. The main object of WTDI research is a wine region referred to as a winescape [15]. “WTDI studies beliefs, perceptions, thoughts, feelings, ideas, expectations, and knowledge about a wine tourism destination, in other words, wine region or winescape, that is projected by destination management bodies and perceived by wine tourists.” [15] (p. 758). Currently, no uniform scale is available to measure WTDI [16] (p. 500). Sekhniashvili’s [15] review of the WTDI literature published between 2001 and 2020 shows that authors have researched the WTDI topic but a valid scale suitable for WTDI measurement has not been created. Bruwer et al. [17] suggest that there is a gap in the WTDI research, and, due to the nature of wine tourism, a WTDI measurement approach, different from the mainstream tourism destination image studies, should be developed [17].

2. Materials and Methods

Based on a WTDI literature review by Sekhniashvili [15], it was found that there is no unified measurement technique for WTDI. The goal of this research is to develop a WTDI scale using the example of Georgia.
As we found during the literature review [8,9,15], the most reliable way of studying a destination’s image is by using a combined methodology. This means using qualitative and quantitative techniques. These two methods supplement each other. The qualitative or holistic method is used to define holistic and unique aspects of the image, while the quantitative method measures attribute-based and common image features as well as functional and psychological dimensions [10]. This methodology is still widely used by destination image researchers [18,19]. As our objective was not to measure a WTDI of a specific wine region, but to develop an attribute-based scale for measuring any wine regions’ image, we followed the scale development steps below and disregarded studying the holistic and unique imagery of Georgia.
Echtner and Ritchie [9,10], Ritchie and Crouch [20], and Jenkins [3] recommend using a two-phase methodology to develop a scale for the quantitative part of the study. This starts with qualitative research of a relevant market to determine the attributes that can be used in the second stage of the quantitative data collection. The initial research is important as it helps in designing a reliable scale suitable for the target audience.
As this kind of research requires large amounts of funding and time, WTDI research often simply incorporates a literature review as a tool to collect attributes for quantitative research. As the image of a WTD can be properly researched only with the combined methodology, including quantitative and qualitative methods, we decided to contribute to the quantitative methodology. To do so, it is crucial to develop a scale incorporating all the winescape attributes.
The methodology used in our research has two phases. In the first stage, we try to develop attribute scale with the inputs from the literature review and the wine tourists’ perceptions of different WTDs. At this point we design an attribute-based scale which covers common psychological and functional dimensions [10].
In the second step, we use this scale and collect the quantitative data about the WTDI of Georgia. We chose FA as a data analysis method and we also tested Cronbach’s Alpha to confirm the reliability of the scale.
The scale was developed by following a methodology similar to that used by Echtner and Ritchie [10]. Below we describe the process step by step:
  • Literature review to identify attributes.
  • Qualitative data collection using focus groups to gather more attributes.
  • Content analysis to determine the list of the attributes collected.
  • Merge the attributes into a new scale.
  • Quantitative data collection and analysis.

3. Results

Following the methodology described in the previous section, we collected attributes and tested the scale. The scale was tested by collecting data on a WTD in Georgia. This study resulted in a WTDI scale that can be used in future to measure the WTDI of any wine region. Below we describe the research in detail as well as its results.

3.1. Literature Review to Identify Attributes

In the beginning, literature about the WTDI was reviewed and the attributes were collected. The list of attributes is displayed in Table 1. We used the same 21 articles about WTDIs published during 2001–2020 as reviewed by Sekhniashvili [15]. To see the exact list of the literature, consult Table 2 on page 759–760 of Sekhniashvili [15]. To make sure we were not missing any attributes, we also consulted the tourism destination image research by Echtner and Ritchie [10]; Table 1 also present the attributes from the study by Echtner and Ritchie [10]. The authors of these articles mainly used a literature review and free elicitation when collecting the attributes. The attributes are both functional and psychological. For example, “purchasing good wine” or “accommodation” is functional or tangible, while “exciting” and “tranquil” are more psychological or intangible. Some of the attributes resemble the same concepts; hence, later, during the merging step we discard some of them.

3.2. Qualitative Data Collection to Gather More Attributes

The next step in the scale design was to collect the data with qualitative research. The research instrument was focus group interviews with 47 respondents. At this stage, it was decided that the study subject would be wine tourists who had traveled to wine regions and/or participated in wine tourism activities at least once in the past three years. Interviews were held in April and May of 2022. The respondents were found online through social media, and interviews were held via Zoom. We posted in Facebook groups related to wine tourism and travel, as well as general travel- and tourism-related groups. The post asked people to volunteer as participants in focus group interviews if they had traveled to wine regions and/or participated in wine tourism activities at least once in the past three years. This question was once again asked before starting the interviews; anyone who had not participated in wine tourism activities in the past 3 years was not recruited for the interviews. In each focus group, there was an average of 3–4 participants. We recorded the interviews to use the script later during data analysis. We asked the respondents two questions. Overall, 567 words and short phrases were collected after we manually scripted the interviews. The nationalities of the sample varied (from all the continents).
The questions that the respondents were asked to gather the characteristics of the regions were adapted from Echtner and Ritchie [10], as follows:
  • What images or characteristics come to mind when you think of XXX as a travel destination?
  • Please describe the atmosphere or mood that you would expect to experience while visiting XXX?
By asking these questions, we were able to collect data about functional and psychological holistic elements of the destination image perceived by wine tourists. This information helped us to collect a list of attributes for the WTDI scale that we aimed to develop. This step was necessary as using only a literature review does not ensure a full list of the attributes.
In this section, wine tourists were asked to provide their images of five wine regions as travel destinations. A total of 62% of the respondents answered “no” when we asked whether they had visited the wine region in question. Our objective was to develop a scale that can measure perceptions of the people who have visited the WTD before and perceptions of the people who have not. This is why we included responses from both groups of wine tourists. We chose diverse wine regions to ensure that the final scale would be relevant to different kinds of wine tourism destinations globally. The wine regions were Mendoza (in Argentina), Napa Valley (in USA), Barossa Valley (in Australia), Marlborough (in New Zealand), Kakheti (in Georgia), Colchagua Valley (in Chile), Tokaj (Hungary), Peloponnese (in Greece), Chianti (in Italy), and Stellenbosch (in South Africa). A different group of five regions from the ten was used in the interviews.

3.3. Content Analysis to Determine the List of the Attributes Collected

We had many analysis options for the data received from the focus group interviews. Mainly, we had to choose whether to undertake this manually or with software. We decided to manually code the words and phrases collected during the interviews. Firstly, we transcribed the interviews in Excel. After that, two different experts coded and labeled the words and phrases. The experts were instructed to read the words and phrases and correct any obvious spelling mistakes, then to group the same or similar words together and name the groups with a representative label. There were no restrictions regarding the label names or placement of each word or phrase in a specific group. Each word and phrase was assigned to one of the labels by experts. Each expert worked independently. After labeling the first 100 words and phrases, the experts met and discussed differences in label names, as well as allocation of each word or phrase in the specific group. They reached consensus during the meeting and agreed on label names; they also corrected the discrepancies. After coding each 100 of the words and phrases, the experts organized a meeting to further clarify the result and reach an agreement. As a result, we obtained 41 attributes/labels.

3.4. Merge the Attributes into a New Scale

The final step was to merge the list of attributes generated by the literature review with those derived from the wine tourists’ replies and content analysis. Some of the labels overlapped, so we discarded the duplicate attributes. We also discarded the items that were duplicated or resembled the same concepts. We obtained 70 attributes after merging and discarding overlapping attributes. The results are displayed in Table 2.

3.5. Quantitative Data Collection and Analysis

We then used the quantitative method with a survey as an instrument. The goal of this questionnaire was to validate the scale. The online survey had closed-ended questions. The survey was designed in Google Forms. It was posted in different social media groups to collect responses between December 2022 and January 2023. Similar to the qualitative data collection, we posted on Facebook groups related to wine tourism and travel, as well as general travel- and tourism-related groups. In the post, we asked people to fill in our survey, which would take approximately 7–8 min and would be about WTDI. We also mentioned that Georgian nationals could not participate. As a result, the nationalities of the sample were varied but excluded Georgians. The questions of the survey were grouped into different sections. The questionnaire was tested on 20 respondents to eliminate any bias. We slightly corrected the survey after the test.
The questions of the interview were grouped into different sections. The first section asked whether respondents had ever visited Georgia.
The second section gathered demographic information such as nationality, age, gender, education, marital status, and occupation. In this section, we also asked an extra question to determine the ratio of wine tourists to the total number of respondents:
  • Have the respondents visited any region in the past 2 years with the purpose of visiting vineyards, wineries, wine tasting, consuming and/or purchasing wine or attending wine events?
The third section asked respondents about characteristics of Georgia as a WTD. We used a 7-point Likert answer format, from the answer “strongly disagree” to the answer “strongly agree”. As we expected that most of our sample had not visited Georgia, we decided to add an additional answer, i.e., “no opinion”. This answer allowed non-visitors to skip a question if they had no information from secondary sources regarding a specific attribute we were asking about. Later, during the analysis, we only included responses on the 7-point Likert scale and disregarded “no opinion” entries. The statements that respondents rated were worded in the following format:
  • I think that as a wine tourism destination, Georgia has interesting history/customs/culture.
  • I think that as a wine tourism destination, Georgia is easily accessible.
  • I think that in a wine tourism destination Georgia it’s easy to communicate with locals.
We collected 298 responses to our questionnaire. Most of our results are based on non-visitor perceptions, as 85% of the respondents answered that they had never visited Georgia before. In terms of age, most of our respondents were between 18 and 24 years old (41%), 38% of them were between 25 and 34 years old, and 13% were between 35 and 44 years old. We received the fewest answers from other age groups, with 4% being from people between 45 and 54 years old, 3% of people were between 55 and 64 years old, and only 1% of the respondents were 65 years or older. A total of 60% of our respondents were female and 38% were male; 2% did not wish to answer. Most of the respondents had Bachelor’s (39%) or Master’s degrees (30%). Most of our respondents were students (51%) or employees (39%). In terms of marital status, most of the respondents were either in a relationship (35%), single (43%), or married (17%). A total of 9% of the respondents were never involved in wine tourism, while the rest had been involved. The demographics of our sample is shown in Table 3.
We used SPSS to analyze the data that we collected using the questionnaire. In the beginning of the process, we checked the convenience of factor analysis. We wanted to examine how suitable our data was for factor analysis. We found the value of the Kaiser–Meyer–Olkin (KMO) test for sampling adequacy was 0.967. As this value was close to 1, it means our data were suitable for factor analysis.
We also preformed Bartlett’s sphericity test to determine whether there was a strong enough correlation in our data to use factor analysis and principal components analysis (PCA) to reduce dimensionality. Bartlett’s sphericity test determines whether the correlation matrix of the variables is an identity matrix. The correlation matrix was not an identity matrix in our analysis, as shown by the Bartlett’s test result, which also reveals an approximate chi-square value of 24,721.075 with 2415 degrees of freedom and a p-value of 0.000; this indicates that the data can be used for factor analysis. The results of KMO and Bartlett’s test are shown in Table 4.
To analyze the data and reduce dimensionality, we used factor analysis (FA) including PCA. Promax with Kaiser normalization was used to standardize the data before factor analysis. This rotation technique gave us the cleanest results.
In our analysis, six components had eigenvalues greater than 1 and they were retained. Together, these six elements accounted for 71.66% of the variance, which indicates that they represented the most important variables in the dataset. Our minimum factor loading was set at 0.3.
We measured the internal consistency reliability of a collection of items or variables using the Cronbach’s Alpha coefficient. Examining the Cronbach’s Alpha values for each component is crucial, in addition to looking at the overall Cronbach’s Alpha value. We found that all the results of Cronbach’s Alpha coefficients were close to 1. As the reliability was high, we did not discard any item. We display the results of the factor analysis and reliability analysis in Table 5.
The first component is linked to wine and the wine tourism experience. It includes factors such as wine quality, availability of wineries, opportunity to taste lots of wine, interesting wine styles, and tasting experiences. It is not surprising that a wine tourism destination image is strongly defined by wine and wine-related characteristics. The items included in the first component are mostly functional.
The second component explains the atmosphere and environment of the WTD. It includes factors such as sense of freedom, discovery, escapism, and happiness, as well as a pleasant, hospitable, and easily accessible environment. It seems like the affective characteristics of the destination are an important part of its image. The second component items can be interpreted as the psychological dimension of the WTDI.
The third component includes factors related to cleanliness, nice climate, price levels, and level of safety. As for any other type of destination, safety, cleanliness, and other social factors are crucial. The third component items are mostly functional.
The fourth components are all about tourism facilities, i.e., shopping facilities, nice beaches, availability of tourist information, crowdedness, urbanization levels, and quality of service. We can assign some of the items to the psychological dimension of the WTDI, for example, good quality of service. The others can be considered as functional dimensions, such as interesting fairs, exhibits, and festivals.
The fifth component is linked to cultural and natural attractions, such as rich wine culture, nice scenery, vineyard landscapes, winery settings, opportunity for adventure, and increasing knowledge. This factor is mostly connected to the functional destination image component.
The sixth factor explains the comfort and infrastructure in the WTD. For example, variables such as quality of accommodation and restaurants, interesting local products, gastronomy, nightlife, and entertainment seem to be an important part of the WTDI. We included all the attributes that are part of the six components in Table 6 so that they are easily accessible for future research purposes. Some of the items can be categorized as the functional WTDI dimension, while others are psychological.

4. Discussion

Destination image plays an important role in tourism marketing research. The importance of the destination image is linked to its influence on an individual’s behavior regarding travel decision making [21,22,23,24,25,26]. The WTDI has been studied by a few authors who emphasize that WTDI research is limited [16,17,25], Williams [26] notes that it might be easier for wine tourism destinations to be noticed among other types of tourism destinations but it is a challenge to differentiate one wine region from another. To be successful and attract visitors, WTDs should make sure that the projected images match wine tourist’ preferences [26]. Bruwer et al. [17] suggests that the WTDI needs a research perspective that is differentiated from the common DI studies due to its unique nature. To fill the gap in the literature, we developed a scale that is adapted to WTD’s nature and can measure its image. We used Georgia as a WTD in this study and measured its image. As a result, we obtained a scale with six factors. These factors are the most significant part of the WTDI. The questionnaire that we developed includes 70 items that can measure the attribute-based WTDI. However, it should be used along with the three open-ended questions [8] to explore the holistic WTD imagery and learn about the unique characteristics of the wine region.
Our study contributes to the WTDI research by developing a WTDI measurement approach that is differentiated from generic tourism destination image (TDI) measurement scales. As wine tourism regions, products, and experiences have unique characteristics, studying the WTDI requires a research method that is different from the common TDI approaches. Our attempt to develop a WTDI measurement scale contributes to the structured/quantitative part of WTDI research. While it is possible to improve the scale we developed, in its present state it can serve as a tool to measure and compare images of different wine regions, compare images of a specific WTD during longitudinal studies, and compare images of a wine region before and after application of positioning/promotional strategies.
In terms of practical implications of our research results, the scale is useful for wine regions’ promotional and positioning strategies. By measuring an image, WTDs can learn about their image among their competitors and work on differentiation of their wine tourism product and strategy. In this way, wine regions can learn about their competitive advantages or create plans to promote these advantages using social media or other channels. WTDs can also learn about their weaknesses and the negative images people hold about them. In this way, they can implement actual improvements, as well as plan ways to change people’s negative impressions. For example, if people believe that winery staff are not knowledgeable about wine, this weakness can be solved by training of staff as well as suitable advertising strategies to change people’s beliefs or perceptions.
The main limitation of our scale is that it consists of 70 attributes, which might be too many. The length of the survey can affect the quality of the responses, as well as the response rates [27]. However, researchers should not forget the importance of each and every item. We suggest that the scale should be further tested to reduce the number of items, without neglecting any important characteristics of the WTDI.
We also recommend that this scale should be tested in different wine tourism destinations, and further statistical methodologies should be applied, such as CFA.
It would be necessary to collect new data and assess the reliability and the validity of the present scale.
Finally, whenever measuring an image of a specific WTD, we recommended applying both qualitative and quantitative methodologies to capture the full spectrum of WTDI characteristics.

Author Contributions

Conceptualization, G.S. and Z.B.; methodology, G.S.; software, G.S.; validation, G.S.; formal analysis, G.S.; investigation, G.S. and Z.B.; resources, G.S.; data curation, G.S.; writing—original draft preparation, G.S.; writing—review and editing, G.S. and Z.B.; visualization, G.S.; supervision, Z.B.; project administration, G.S. All authors have read and agreed to the published version of the manuscript.

Funding

Doctoral School of Economic and Regional Sciences, Hungarian University of Agriculture and Life Sciences.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data has been shared in the article as a review.

Acknowledgments

The authors would like to thank the reviewers who gave suggestions about how to improve the article, the Hungarian University of Agriculture and Life Sciences for supporting this publication, and the Stipendium Hungaricum, Tempus Public Foundation.

Conflicts of Interest

The authors declare no conflict of interest.

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Table 1. List of the attributes used in WTDI studies.
Table 1. List of the attributes used in WTDI studies.
#Attributes#Attributes#Attributes
1Variety of nature34Appealing interior design of the buildings67Good availability of wineries
2Beautiful scenery and landscape35Proximity of the region to a main city68Winery staff knowledgeable about wine
3Good settings of the wineries 36Reputation69Wineries are visitor friendly
4Great vineyard landscapes37Local transportation70Purchasing good wine
5History and culture 38Peaceful 71Opportunity to taste lots of wine
6Customs39Slightly crowded. 72Wines from this region are of high quality.
7Cultural activities40Relaxing 73Positive references to wine quality, value, price, etc.
8Towns/villages41Quality of life 74There is sufficient signage to the winery
9Rich wine culture42Safety 75The signage is large enough to be seen
10Availability of tourist information43Cleanliness 76The signage makes it easy to find your way
11Shopping 44Climate 77The signage is easy to be understood
12Lack of urbanization45Unpolluted environment78The layout makes it easy to get to the winery
13Good value for money46The odors/scents are pleasant79Signage to get to and move through the region
14Gastronomy47Friendly people 80Employees give prompt service
15Other local products/cottage industries48Prices 81Employees are always willing to help
16Nightlife49Exciting 82Employees are neat in appearance
17Entertainment50Pleasant 83Employees have knowledge to answer queries
18Quality of the restaurants/pubs51Interest arousing 84Employees are consistently courteous
19Leisure and recreation 52Fun85Employees give individual attention to me
20Infrastructures53Tranquil86Service staff and local residents/People and hospitality great
21Accommodation54A sense of escapism87Accessibility
22Appealing architecture of the buildings55A sense of discovery 88Personal safety
23Tourist sites/activities56Cities89Ease of communication
24National parks/wilderness activities57Accommodation/restaurants90Customs/culture
25Historic sites/museums58Architecture/buildings91Different cuisine/food and drink
26Beaches59Costs/price levels92Hospitality/friendliness/receptiveness
27Fairs, exhibits, festivals60Climate93Restful/relaxing
28Scenery/natural attractions61Crowdedness94Atmosphere (familiar versus exotic)
29Nightlife and entertainment62Cleanliness95Opportunity for adventure
30Shopping facilities63Degree of urbanization96Opportunity for increase knowledge
31Facilities for information and tours64Economic development/affluence97Family or adult oriented
32Sports facilities/activities65Extent of commercialization98Quality of service
33Local infrastructure/transportation66Political stability99Fame/reputation
Table 2. List of the attributes after merging.
Table 2. List of the attributes after merging.
#Attributes#Attributes#Attributes
1Nice Scenery/natural attractions25Good opportunity for increase knowledge49Fun environment
2Good settings of the wineries26Interesting fairs, exhibits, festivals50A sense of escapism
3Great vineyard landscapes27Interesting sports facilities/activities51A sense of discovery
4Nice beaches28Interesting tourist sites/activities52A sense of nostalgia
5Interesting history/customs/culture29Interesting national parks/wilderness/outdoor activities53A sense of freedom
6Interesting cultural activities30Interesting historic sites/museums54A sense of happiness
7Interesting cities/Towns/villages31Variety of offers/discounts/sales55A sense of calmness/peaceful
8Rich wine culture32Good level of safety56Restful/relaxing environment
9Good availability of tourist information33Good level of cleanliness57Good quality of life
10Good shopping facilities34Nice climate58Familiar/Friendly atmosphere
11Good value for money35Unpolluted environment59Good availability of wineries
12Rich gastronomy36Pleasant odors/scents 60Wineries that are visitor friendly
13Interesting local products/cottage industries37Good Price levels61Availability of purchasing good wine
14Attractive nightlife and entertainment38Good level of economic development/affluence62Opportunity to taste lots of wine
15Good quality of accommodation/restaurants39Acceptable extent of commercialization63High quality wines
16Suitable atmosphere/facilities for leisure and recreation40It’s easy to communicate with locals64Interesting wineries
17Comfortable local infrastructure/transportation41Politically stable65Interesting wine tasting experiences
18Nice architecture/buildings42Easily accessible66Interesting wine Styles
19An acceptable proximity of the region to a main city43Hospitable/friendly/receptive67Great wine tourism destination
20Good fame/reputation44Crowded 68Winery staff is knowledgeable about wine
21Family oriented environment45Urbanized69Wine quality is good
22Adult oriented environment46Exciting environment70Wines are good value for money
23Good quality of service47Pleasant environment
24Good opportunity for adventure48Interest arousing environment
Table 3. Demographic data of the sample.
Table 3. Demographic data of the sample.
Demographic characteristics of the sampleShare in total responses
Visitors and non-visitors
No85%
Yes15%
Involvement in wine tourismShare in total responses
No9%
Yes91%
AgeShare in total responses
18–24 years41%
25–34 years38%
35–44 years13%
45–54 years4%
55–64 years3%
Age 65 or older1%
GenderShare in total responses
Female60%
I don’t wish to answer2%
Male38%
Highest degree or level of education completedShare in total responses
Bachelor’s degree39%
High school graduate13%
I don’t wish to answer1%
Less than high school3%
Master’s degree30%
Ph.D.4%
Some college, no degree10%
OccupationShare in total responses
Employee39%
I don’t wish to answer1%
Intern1%
Self-employed7%
Student51%
Unemployed1%
Marital statusShare in total responses
Divorced1%
I don’t wish to answer1%
In a relationship35%
Married17%
Single43%
Widowed1%
NationalitiesShare in total responses
Hungarian18%
British17%
American12%
German4%
Indian4%
Dutch3%
Italian3%
Other38%
Table 4. KMO and Bartlett’s tests.
Table 4. KMO and Bartlett’s tests.
Kaiser–Meyer–Olkin Measure of Sampling Adequacy0.967
Bartlett’s Test of SphericityApprox. chi-square24,721.075
df2415
Sig.0.000
Table 5. Results of factor analysis and reliability test (Cronbach’s Alpha).
Table 5. Results of factor analysis and reliability test (Cronbach’s Alpha).
FactorNumber of ItemsCronbach’s Alpha
Wine and wine tourism120.975
Atmosphere/environment160.971
Security/cleanliness/economic situation/prices90.944
Tourism facilities120.942
Natural and cultural attractions120.952
Comfort and infrastructure90.932
Table 6. Retained attributes that are part of six factors as a result of factor analysis.
Table 6. Retained attributes that are part of six factors as a result of factor analysis.
Item-Total Statistics
Scale Mean If Item DeletedScale Variance If Item DeletedCorrected Item-Total CorrelationSquared Multiple CorrelationCronbach’s Alpha If Item Deleted
(1) Winery staff is knowledgeable about wine45.29675.1500.8200.7380.974
(1) Wine quality is good44.84676.9570.8370.8020.974
(1) Wines are good value for money44.99670.9330.8600.7860.973
(1) Great wine tourism destination44.78679.7220.8230.7190.974
(1) Good availability of wineries45.17664.2230.8790.8070.973
(1) Wineries that are visitor friendly45.26665.1200.8640.8020.973
(1) Availability of purchasing good wine45.05664.2400.8690.8000.973
(1) Opportunity to taste lots of wine44.95659.9900.9000.8500.972
(1) High quality wines44.98665.3230.8820.8230.973
(1) Interesting wineries44.92661.5530.8990.8670.972
(1) Interesting wine tasting experiences45.19661.6700.8840.8370.973
(1) Interesting wine Styles45.21666.2390.8520.7980.973
(2) Nice architecture/buildings62.50921.2540.7410.5630.970
(2) Easily accessible63.14938.2900.6560.5610.971
(2) Hospitable/friendly/receptive62.57916.8320.7600.6860.969
(2) Exciting environment62.53903.6910.8550.8120.968
(2) Pleasant environment62.36904.6810.8590.8220.968
(2) Interest arousing environment62.53900.6070.8630.8340.968
(2) Fun environment62.99903.4210.8470.7940.968
(2) A sense of escapism62.53901.6370.8150.7500.969
(2) A sense of discovery62.26906.7240.8000.7230.969
(2) A sense of nostalgy63.24916.7430.7250.5590.970
(2) A sense of freedom62.86898.7520.8590.7820.968
(2) A sense of happiness62.74899.1130.8720.8150.968
(2) A sense of calmness/peace62.53904.5860.8370.7460.968
(2) Restful/relaxing environment62.55899.7020.8690.8070.968
(2) Good quality of life63.22910.7640.7890.7050.969
(2) Familiar/Friendly atmosphere63.02908.0230.7800.7250.969
(3) Variety of offers/discounts/sales30.30232.5190.6980.5420.941
(3) Good level of safety29.92229.0910.8110.7230.935
(3) Good level of cleanliness29.84226.8380.8550.7810.932
(3) Nice climate29.00237.2020.7100.5590.940
(3) Unpolluted environment29.79228.7530.7960.7090.936
(3) Pleasant odors/scents29.89226.8640.7980.6470.936
(3) Good Price levels29.52228.9510.7650.6500.937
(3) Good level of economic development/affluence30.10231.7780.8020.7080.935
(3) Acceptable extent of commercialization29.87228.4550.7900.6850.936
(4) Nice beaches37.33440.2210.5530.3460.943
(4) Good availability of tourist information37.08415.5090.7930.7370.934
(4) Good shopping facilities37.46417.9530.7870.7340.934
(4) Family oriented environment37.15424.9570.7290.6260.936
(4) Adult oriented environment36.69423.4110.7100.5820.937
(4) Good quality of service36.83413.7500.8350.7350.932
(4) Interesting fairs, exhibits, festivals36.79418.5360.7460.6640.936
(4) Interesting sports facilities/activities37.32418.5890.8010.7220.934
(4) It’s easy to communicate with locals37.27430.6090.7200.5650.937
(4) Politically stable37.33436.5050.6760.5110.938
(4) Crowded37.66437.5930.7150.5830.937
(4) Urbanized37.28434.0530.7340.6450.936
(5) Nice Scenery/natural attractions48.41525.0300.7850.6850.947
(5) Good settings of the wineries49.33520.1880.7540.7720.948
(5) Great vineyard landscapes49.06517.3200.7870.8080.947
(5) Interesting history/customs/culture48.41522.4450.8130.7470.947
(5) Interesting cultural activities48.80522.1900.7840.6790.947
(5) Interesting cities/Towns/villages48.57521.4250.8050.7340.947
(5) Rich wine culture49.10522.8110.7210.6070.950
(5) Good opportunity for adventure48.66528.4890.7760.6840.948
(5) Good opportunity for increasing my knowledge48.59529.9590.7280.5870.949
(5) Interesting tourist sites/activities48.67526.3550.7920.6970.947
(5) Interesting national parks/wilderness/outdoor activities48.91531.2270.7080.6420.950
(5) Interesting historic sites/museums48.71524.2920.7850.7320.947
(6) Good value for money31.53229.0850.6850.5570.929
(6) Rich gastronomy31.26227.8070.7310.5780.926
(6) Interesting local products/cottage industries31.16224.6540.7610.5970.924
(6) Attractive nightlife and entertainment32.08227.1250.7570.6550.924
(6) Good quality of accommodation/restaurants31.56221.6680.8550.7590.918
(6) Suitable atmosphere/facilities for leisure and recreation31.38226.6680.7740.6400.923
(6) Comfortable local infrastructure/transportation32.09229.0660.7560.6320.924
(6) An acceptable proximity of the wine regions to a main city31.76223.6470.7770.6200.923
(6) Good fame/reputation31.56238.7190.6420.4780.931
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Sekhniashvili, G.; Bujdosó, Z. Developing a Wine Tourism Destination Image Measurement Scale. Sustainability 2023, 15, 8549. https://doi.org/10.3390/su15118549

AMA Style

Sekhniashvili G, Bujdosó Z. Developing a Wine Tourism Destination Image Measurement Scale. Sustainability. 2023; 15(11):8549. https://doi.org/10.3390/su15118549

Chicago/Turabian Style

Sekhniashvili, Gvantsa, and Zoltán Bujdosó. 2023. "Developing a Wine Tourism Destination Image Measurement Scale" Sustainability 15, no. 11: 8549. https://doi.org/10.3390/su15118549

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