Tourism Information Diffusion through SNSs: A Theoretical Investigation
Abstract
:1. Introduction
- evaluating SNSs’ efficacy in tourism destination promotion quantitatively, and;
- the mechanisms for sharing tourism information through SNS platforms from a holistic and systematic point of view [16].
- Develop a theoretical framework for defining TIDE, its components and the components’ interrelationships;
- Conduct social network connectivity analyses, including average degree, shortest path, and network centralisation, due to information diffusion processes;
- Evaluate the factors affecting visiting action to tourist destinations as a result of SNS users’ information diffusion.
2. Literature Review
2.1. Tourism Planning and Chinese Visitor Behaviour
2.2. Business Ecosystems
2.3. Diarising Travel in Social Media
2.4. Information Diffusion in Tourism Research
- (1)
- The influence of network structures. Examining a network structure is vital for understanding information diffusion, which determines the function of the network system and quality of information flow between network nodes. Baggio and Cooper [8] investigated the effect of a network structure on knowledge communication and transfer along a destination network using epidemic diffusion models. They found that a fragmented network may lead to a low capacity of a destination in absorbing knowledge and low speed of knowledge diffusion along a network. Therefore, in order to make a destination competitive, it is beneficial to form clusters of stakeholders. In 2014, Baggio later found links between a structured network and a tourism destination [11];
- (2)
- The influence of nodes on a network. Individuals play different roles in distributing information along a social network. Yang and Leskovec [43] developed a linear influence model to predict how nodes influence each other and found that nodes (here, Twitter users) with the highest number of followers do not necessarily have the highest influence. The influence of individual nodes depends on the type of node and information. To date, there has been limited research done to understand the roles played by individuals in information diffusion along tourism social networks;
- (3)
- Dynamic process or diffusion mechanism. The essential Vickrey–Clarke–Groves mechanism theory explores incentivising information diffusion through accurate social interaction to achieve socially-optimal outcomes and how information spreads along social networks [44]. It is used in ICT, linguistics, psychology, mathematics, statistics and tourism. Goffman’s epidemic model [45] replicates infection between individuals, gradually diffusing, dispersing, losing its potency and eventually disappearing. A web forum’s information diffusion provides an understanding of the forces behind the diffusion of ideas and is predictive. Epidemic-like, interest wanes and ends as the topic popularity loses interest within a web forum of dialogue. Four types of spatial diffusion processes were defined by Gould [46]: relocation diffusion, expansion diffusion, contagious diffusion and hierarchical diffusion. Although they were developed for spatial diffusion, they can be used for defining information diffusion.
2.5. Information Diffusion, Online Review Helpfulness and Visiting Action Behaviour
2.6. System Theory and Tourism
3. TIDE’s Theoretical Framework
3.1. Theoretical Foundation of TIDE
- social and political interactions between origins and destinations;
- push factors driving tourists away from destinations, such as host counties’ unemployment, a lack of services and amenities, epidemics, natural disasters or poverty;
- pull factors attracting tourists, such as potential employment opportunities, unique scenery, attractive climate, and communication technologies connecting people and places.
- Influencers: trip diarists who have visited a destination and posted their experience and comments into their trip diaries. They may influence several types of followers;
- Close followers: those who post comments and who have also visited the same destinations and post a trip diary of their own experience;
- Loose followers: those who post comments without providing evidence of visiting a destination;
- Emotion sharers: those who have travelled before reading any trip diary and then comment in a trip diary of their choice but not their own. They hold less persuasive inducement than the influencers.
3.2. Definition of TIDE
3.2.1. Structure
- Hierarchical structure: arranged by destination, styled on the real-world, or top-down categorisation for easy searching, of geographical location using continent, country, state, city, town, tourism attraction;
- Flat structure: a horizontally styled organisation of parallels, maintaining flexibility, organised by an individual or forum participant. Itncludes personal information, blogs, travel itineraries, destination information, local modes of travel, accommodation, restaurants and tourist attractions, and other related activities.
- Ring network: passing from one participant to another, forming a circle;
- Tree network: passing from influencers to close followers, while close followers become influencers and pass trip diary information to other close followers to forming a tree-like structure;
- Star network: passing from influencers (hubs) to loose followers (spokes). The loose followers might not keep in contact;
- Mesh network: well-connected, communicative network, passing freely from or between influencers, close followers, loose followers and emotion sharers;
- Loosely connected network: passing intermittently from influencers, loose followers, and emotion sharers, with individual or pairs of users existing without communicating with others;
- Hybrid network: a combination of the above.
3.2.2. Processes of TIDE
Expansion Diffusion
Contagious Diffusion
3.2.3. Functions of TIDE
Information and Emotion Sharing (Self-Realisation and Self-Esteem of Travellers)
Travel Community-Interconnection and Integration of Places, Information, Travellers and Tourism Industries
Adaptation to the Environment (Dynamic Process)
3.2.4. Outcomes of TIDE
- Economic: increased exposure to tourist information through SNSs, which leads to potential tourism and encourage spending at a tourist destination;
- Social: effective channels to make new friends internationally, encourage tourists’ positive feelings and attitudes and lift travel experiences to endure through recall and memories and recollect tourism memories;
- Cultural value: better knowledge of the culture and expectations of the destination and its communities. A destination that satisfies tourists is well-recommended by the tourists though pictures, description, comments and feedback of the destination on SNSs, which defines the destination’s image and influences other tourists’ purchasing decisions [60].
4. Methodology
4.1. Study Area
4.2. Data Collection Methods
4.3. Tourism Information Diffusion Network Analysis
4.4. Modelling: Zero-Inflated Poisson (Zip) Model for Predicting Visiting Actions to Tourist Destinations Due to Tourism Information Diffusion
- Influencer’s accumulative efforts devoted to the SNS, such as time, the number of information diffusion posted, the number of times answering other people’s questions on SNSs, quantified as rank;
- Number of followers of the influencer who will view the influencer’s trip diary first, marked as fans;
- Number of words included in the trip diaries, marked as word;
- Number of pictures included in the trip diaries, marked as picture;
- Times of the trip diaries viewed, marked as view;
- Times of the trip diaries saved, marked as save;
- Times of the trip diary was placed on the top by SNS users, marked as placing on the top;
- Times of the trip diaries shared, marked as share;
- Duration since trip diaries first posted until 12 September 2017, marked as duration.
5. Results
5.1. The Characteristics of the Information Diffusion Networks
5.2. The Structure of Their Information Diffusion Network
5.3. Information Diffusion Process for Close Followers
5.4. ZIP Regression Model of Visiting Action to Tourist Destinations
6. Discussion and Conclusions: The Implication of TIDE and Its Future Uses
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Type of Diffusion Process | No. of Diffusion Links | No. of Influencers | No. of Close Followers | No. of Loose Followers | No. of Emotion Sharers | |
---|---|---|---|---|---|---|
Expansion Diffusion (close following) | 229 | 100 | 133 | / | / | |
Contagious Diffusion | Loose following | 1425 | 198 | / | 1141 | |
Emotion sharing | 65 | 49 | / | / | 55 |
Network | |||
---|---|---|---|
Close Following | Loose Following | Emotion Sharing | |
Number of Nodes | 224 | 1,339 | 101 |
Number of Edges | 229 | 1,425 | 65 |
Average degree | 2.027 | 2.128 | 1.228 |
Average shortest path | 1.204 | 1 | 1.075 |
Network centralisation | 0.072 | 0.077 | 0.0283 |
Year (No. of New Trip Diaries) | The Number of New Close Followers since Trip Diaries have Been Posted | Total New Close Followers | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
Year 0 | Year 1 | Year 2 | Year 3 | Year 4 | Year 5 | Year 6 | Year 7 | Year 8 | ||
(1–365 days) | (366–730) | (731–1095) | (1096–1460) | (1461–1825) | (1826–2190) | (2191–2555) | (2556–2920) | (2920–3285) | ||
2009 (trip diary 2) | 0 | 0 | 1 | 1 | 2 | 1 | 2 | 1 | 0 * | 8 |
2010 (trip diary 2) | 0 | 0 | 0 | 1 | 2 | 0 | 0 | 0 * | 3 | |
2011 (trip diary 3) | 1 | 4 | 9 | 1 | 2 | 1 | 0 * | 18 | ||
2012 (trip diary 7) | 3 | 8 | 3 | 2 | 0 | 0 * | 16 | |||
2013 (trip diary 12) | 18 | 6 | 3 | 4 | 0 * | 31 | ||||
2014 (trip diary 14) | 15 | 10 | 5 | 4 * | 34 | |||||
2015 (trip diary 14) | 10 | 7 | 2 * | 19 | ||||||
2016 (trip diary 32) | 29 | 9 * | 38 | |||||||
2017 (trip diary 17) | 13 * | 13 |
ZIP Model (Diffusion Effects) | |||
---|---|---|---|
Poisson Regression Model Part | Zero-Inflation Model | ||
Parameter | Estimate (SE) | Parameter | Estimate (SE) |
(Intercept) | −3.9193 (1.94 × 10−5) *** | (Intercept) | 3.0704 (0.0134) * |
Save | 0.0055 (2.01 × 10−9) *** | save | −0.0366 (0.0017) ** |
Placing on the top | 0.0012 (0.015) * | Ln_duration | −0.4085 (0.0304) * |
Rank | 0.0177 (0.0143) * | ||
Ln_duration | 0.4564 (9.60 × 10−6) *** | ||
Ln_picture | 0.2215 (0.0063) ** | ||
Log-likelihood | −351.4 on 12 Df | ||
chi-squared test | 1.417239 × 10−48 (df = 12) | ||
Zero observations | 157 |
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Liu, T.; Xia, J.; Crowe-Delaney, L. Tourism Information Diffusion through SNSs: A Theoretical Investigation. Sustainability 2020, 12, 1731. https://doi.org/10.3390/su12051731
Liu T, Xia J, Crowe-Delaney L. Tourism Information Diffusion through SNSs: A Theoretical Investigation. Sustainability. 2020; 12(5):1731. https://doi.org/10.3390/su12051731
Chicago/Turabian StyleLiu, Ting, Jianhong Xia, and Lesley Crowe-Delaney. 2020. "Tourism Information Diffusion through SNSs: A Theoretical Investigation" Sustainability 12, no. 5: 1731. https://doi.org/10.3390/su12051731
APA StyleLiu, T., Xia, J., & Crowe-Delaney, L. (2020). Tourism Information Diffusion through SNSs: A Theoretical Investigation. Sustainability, 12(5), 1731. https://doi.org/10.3390/su12051731