Greek Hotels’ Web Traffic: A Comparative Study Based on Search Engine Optimization Techniques and Technologies
Abstract
:1. Introduction
2. Related Work
2.1. On-Page SEO Techniques and Technologies
2.1.1. Descriptive Title Elements
2.1.2. URL Structure
2.1.3. Image Optimization and Alternative Tags
2.1.4. HREF Alternative Title Tags
2.1.5. Descriptive Meta Tags
2.1.6. Heading Tags
2.1.7. Minify Resources (HTML, CSS, and JavaScript)
2.1.8. Sitemaps and RSS Feed
2.1.9. Robots.txt
2.1.10. Mobile-Friendliness
2.1.11. Website Speed
2.1.12. Add Security with HTTPS
2.1.13. Accelerated Mobile Pages (AMP)
2.1.14. Structured Data and Rich Snippets
2.1.15. Open Graph Protocol (OGP)
2.2. Off-Page SEO Techniques
3. Materials and Methods
- Problem Formulation and Research Hypotheses. In this stage, we clearly define the necessity of earning more organic traffic using SEO techniques along with five hypotheses that must be confirmed from our descriptive analysis.
- Data Retrieval. In this stage, we describe the software developed for the purpose of this paper, and the external APIs used to collect additional information regarding our dataset.
- Data Normalization and Limitations. In this stage, we divide our dataset into three groups (Metrics, SEO Techniques, and Web Traffic) facilitating the descriptive analysis that follows. Each group is analyzed using different procedures depending on its type. Metrics and SEO Techniques were analyzed against the dependent variable Web Traffic.
- Descriptive Statistics. Using the SPSS software, we perform descriptive analysis on our dataset.
- Inferential Statistics
- T-Tests on SEO Techniques. In this stage, we perform independent t-tests on each SEO technique by using the SPSS software.
- ANOVA, Coefficients and Scatterplots on SEO Metrics. In this stage, independent ANOVA, Coefficients and Scatterplots performed on each SEO Metric by using the SPSS software.
- Understand cause-and-effect relationship of SEO Techniques and Web Traffic. In this stage, we conclude that the majority of SEO Techniques positively affect web traffic.
- Understand cause-and-effect relationship of SEO Metrics and Web Traffic. In this stage, we conclude that the majority of SEO Metrics positively affect web traffic.
3.1. Websites’ Traffic Sources and Key Performance Indicators
3.2. Sample Selection, Data Retrieval
- The Google-created Mobile-Friendly Test Tool API validates a URL against responsive techniques. It returns a list of any mobile usability issues that may affect a user visiting the page on a mobile device [55].
- Google’s PageSpeed Insights API analyses the performance of a web page and provides recommendations on how to improve various aspects of the page’s performance, including page speed, accessibility, and SEO [56].
- The Mozscape API, developed by MOZ, accepts a website’s URL as an input and returns accurate metrics such as Domain Authority [48].
- Ubersuggest, developed by Neil Patel, retrieves and returns a 360-degree view of any website’s metrics and its sources [52].
3.3. Problem Formulation and Research Hypotheses
4. Results
4.1. Data Normalization
- Group 1: Metrics are checks performed by third-party tools and are not SEO techniques. The contents of the Metrics Group are as follows: DA (integer 0 to 100), speed_test (decimal), number of keywords (integer), and number of backlinks (integer).
- Group 2: SEO Techniques are checks performed by our tool regarding the existence (or not) of SEO techniques on each website of the dataset. All metrics returned 1 if the SEO technique has been applied to the website, 0 otherwise. The contents of the SEO Techniques Group are as follows: images_alt, links_title, rss, sitemap, robots, heading1, heading2, web_ssl, meta_description, opengraph, url_seo_friendly, amp, minified_css, minified_js, title, structured_data, and responsive_test.
- To extend the results of our research, by giving readers additional insights related to SEO, we introduce two variables which are not SEO techniques but can be treated statistically in the same way. The first variable is the well-known opensource CMS WordPress. We present this variable to identify if WordPress CMS can provide better results regarding SEO and organic traffic than other web platforms. The second variable is the Yoast SEO plugin. Yoast SEO plugin is a WordPress extension that uses advanced suggestion tools to help website’s administrator improve website’s content and structure proposing changes such as keyword targeting, internal linking, structured data, sitemap, etc. We present this variable to determine if the Yoast SEO plugin can deliver better results regarding SEO and organic traffic if installed in a WordPress CMS. In Group 2, two more parameters are added, «is_yoast» and «is_wp», with a value of 1 for those websites that use them and a value of 0 for those websites that do not use them.
- Group 3: Web Traffic (organic traffic) are the monthly statistical data collected for each website. All web traffic data are integers and refer to websites’ data for the last twelve months. The contents of the Web Traffic Group are as follows: traffic_1, traffic_2, traffic_3, traffic_4, traffic_5, traffic_6, traffic_7, traffic_8, traffic_9, traffic_10, traffic_11, and traffic_12.
4.2. Limitations
4.3. Descriptive Statistics
4.4. Inferential Statistics
4.4.1. Impact of SEO Techniques Group on the Web Traffic
4.4.2. Impact of SEO Metrics Group on the Web Traffic
- Domain Authority: The regression model summary has been explained by 16.7% in variability of the web traffic, R2 = 0.167, adjusted R2 = 0.165.
- Website Speed: The regression model summary has been explained by only 0.1% in variability of the web traffic, R2 = 0.001, adjusted R2 = −0.002.
- Keywords: The regression model summary has been explained by 72.7% in variability of the web traffic, R2 = 0.727, adjusted R2 = 0.726.
- Backlinks: The regression model summary has been explained by 45.2% in the variability of the web traffic, R2 = 0.452, adjusted R2 = 0.450.
- Domain Authority: The result shows F (1, 307) = 61.738, p < 0.05, which suggests the model is highly significant. Therefore, the independent variable in this model is related to the dependent variable.
- Website Speed: The result shows F (1, 307) = 0.420, p > 0.05, which suggests the model is not statistically significant. Therefore, the independent variable in this is not related to the dependent variable.
- Keywords: The result shows F (1, 307) = 816.754, p < 0.05, which suggests the model is highly significant. Therefore, the independent variable in this is related to the dependent variable.
- Backlinks: The result shows F (1, 307) = 252.759, p < 0.05, which suggests the model is highly significant. Therefore, the independent variable in this model is related to the dependent variable.
- Domain authority: When the beta value of domain authority is increased by one-unit, web traffic will have increased by 2465.645 visitors per month. Therefore, domain authority does not have a positive impact on the web traffic null hypothesis is rejected. It can be concluded that the domain authority scores have a significant positive effect on the web traffic.
- Website speed: Since the p value of the following table is greater than 0.05, the impact of speed is not statistically significant. Therefore, the null hypothesis that speed test does not have a positive impact on the web traffic is true and can’t be rejected.
- Keywords: When the beta value of keywords is increased by one-unit, the web traffic increases by 0.224 visitors per month. Therefore, keywords do not have a positive impact on the web traffic, and thus, the null hypothesis is rejected. It can be concluded that the keywords have a significant positive effect on the web traffic.
- Backlinks: When the beta value of backlinks is increased by one-unit, the web traffic increases by 0.020 visitors per month. Therefore, backlinks do not have a positive impact on the web traffic, and thus, the null hypothesis is rejected. It can be concluded that the backlinks have a significant positive effect on the web traffic.
- Domain Authority: The following graph indicates the coordinates of domain authority and web traffic, since the web traffic has been gradually increased because of the increase in DA scores, a indicating linear relationship between domain authority and the web traffic.
- Keywords: The following graph indicates that the more keywords that have been used in the website, the more traffic it will get. Therefore, there is a strong positive linear relationship between keywords and web traffic.
- Website speed: The following shows the relationship between speed test and web traffic. It shows that the increase in speed test does not result in a proportional increase or decrease in the web traffic. Therefore, there is a constant and nonlinear relationship between these two variables.
- Backlinks: Like keywords, the following graph indicates the more backlinks that have been used in the website, the more traffic it will get. Therefore, it can be concluded that there is a strong positive linear relationship between keywords and web traffic.
4.5. Diagnostic Exploratory Model Development
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Matoševic, G.; Dobša, J.; Mladenic, D. Using Machine Learning for Web Page Classification in Search Engine Optimization. Future Internet 2021, 13, 9. [Google Scholar] [CrossRef]
- Webmaster Guidelines, Google Search Central, Google Developers. Available online: https://developers.google.com/search/docs/advanced/guidelines/webmaster-guidelines (accessed on 5 May 2022).
- Luh, C.-J.; Yang, S.-A.; Huang, T.-L.D. Estimating Google’s search engine ranking function from a search engine optimization perspective. Online Inf. Rev. 2016, 40, 239–255. [Google Scholar] [CrossRef]
- Gandour, A.; Regolini, A. Web site search engine optimization: A case study of Fragfornet. Libr. Hi Tech News 2011, 28, 6–13. [Google Scholar] [CrossRef]
- Ziakis, C.; Vlachopoulou, M.; Kyrkoudis, T.; Karagkiozidou, M. Important Factors for Improving Google Search Rank. Future Internet 2019, 11, 32. [Google Scholar] [CrossRef] [Green Version]
- Roumeliotis, K.; Tselikas, N. An effective SEO techniques and technologies guide-map. J. Web Eng. 2022, in press. [Google Scholar]
- PHP-Based Software to Retrieve Data and Process Hotels’ SEO Data. Available online: https://github.com/rkonstadinos/seo-techniques-hotels (accessed on 5 May 2022).
- Patil, V.M.; Patil, A.V. SEO: On-Page + Off-Page Analysis. In Proceedings of the International Conference on Information, Communication, Engineering and Technology (ICICET), Pune, India, 29–31 August 2018. [Google Scholar]
- Kumar, G.; Paul, R.K. Literature Review on On-Page & Off-Page SEO for Ranking Purpose. United Int. J. Res. Technol. 2020, 1, 30–34. [Google Scholar]
- Wang, F.; Li, Y.; Zhang, Y. An empirical study on the search engine optimization technique and its outcomes. In Proceedings of the 2nd International Conference on Artificial Intelligence, Management Science and Electronic Commerce (AIMSEC), Zhengzhou, China, 8–10 August 2011. [Google Scholar]
- (Meta) Title Tags + Title Length Checker [2021 SEO]–Moz. Available online: https://moz.com/learn/seo/title-tag (accessed on 5 May 2022).
- Van, T.L.; Minh, D.P.; Le Dinh, T. Identification of paths and parameters in RESTful URLs for the detection of web Attacks. In Proceedings of the 4th NAFOSTED Conference on Information and Computer Science, Hanoi, Vietnam, 24–25 November 2017. [Google Scholar]
- Zhu, C.; Wu, G. Research and Analysis of Search Engine Optimization Factors Based on Reverse Engineeing. In Proceedings of the Third International Conference on Multimedia Information Networking and Security, Shanghai, China, 4–6 November 2011. [Google Scholar]
- Roumeliotis, K.I.; Tselikas, N.D. Search Engine Optimization Techniques: The Story of an Old-Fashioned Website. In Business Intelligence and Modelling. IC-BIM 2019. Paris, France, 12–14 September 2019; Springer Book Series in Business and Economics; Springer: Cham, Switzerland, 2019. [Google Scholar]
- URL Structure [2021 SEO]–Moz SEO Learning Center. Available online: https://moz.com/learn/seo/url (accessed on 5 May 2022).
- An Image Format for the Web|WebP|Google Developers. Available online: https://developers.google.com/speed/webp (accessed on 5 May 2022).
- Hui, Z.; Shigang, Q.; Jinhua, L.; Jianli, C. Study on Website Search Engine Optimization. In Proceedings of the International Conference on Computer Science and Service System, Nanjing, China, 11–13 August 2012. [Google Scholar]
- Hernandez, C.C.; Palos-Sánchez, P.; Rios, M.A. Website Quality Assessment: A Case Study of Chinese Airlines. Indian J. Mark. 2020, 50, 42–64. [Google Scholar] [CrossRef]
- Roumeliotis, K.I.; Tselikas, N.D. Evaluating Progressive Web App Accessibility for People with Disabilities. Network 2022, 2, 350–369. [Google Scholar] [CrossRef]
- Zhang, S.; Cabage, N. Does SEO Matter? Increasing Classroom Blog Visibility through Search Engine Optimization. In Proceedings of the 47th Hawaii International, Conference on System Sciences, Wailea, HI, USA, 7–10 January 2013. [Google Scholar]
- Best Practices for Creating Quality Meta Descriptions. Available online: https://developers.google.com/search/docs/advanced/appearance/snippet (accessed on 5 May 2022).
- All Standards and Drafts-W3C. Available online: https://www.w3.org/TR/ (accessed on 5 May 2022).
- Shroff, P.H.; Chaudhary, S.R. Critical rendering path optimizations to reduce the web page loading time. In Proceedings of the 2nd International Conference for Convergence in Technology (I2CT), Mumbai, India, 7–9 April 2017. [Google Scholar]
- Tran, H.; Tran, N.; Nguyen, S.; Nguyen, H.; Nguyen, T.N. Recovering Variable Names for Minified Code with Usage Contexts. In Proceedings of the IEEE/ACM 41st International Conference on Software Engineering (ICSE), Montreal, QC, Canada, 25–31 May 2019. [Google Scholar]
- Ma, D. Offering RSS Feeds: Does It Help to Gain Competitive Advantage? In Proceedings of the 42nd Hawaii International Conference on System Sciences, Waikoloa, HI, USA, 5–8 January 2009. [Google Scholar]
- Gudivada, V.N.; Rao, D.; Paris, J. Understanding Search-Engine Optimization. Computer 2015, 48, 43–52. [Google Scholar] [CrossRef]
- Mobile-Friendly Test Tool. Available online: https://search.google.com/test/mobile-friendly (accessed on 5 May 2022).
- MdSaidul, H.; Abeer, A.; Angelika, M.; Prasad, P.W.C.; Amr, E. Comprehensive Search Engine Optimization Model for Commercial Websites: Surgeon’s Website in Sydney. J. Softw. 2018, 13, 43–56. [Google Scholar]
- Kaur, S.; Kaur, K.; Kaur, P. An Empirical Performance Evaluation of Universities Website. Int. J. Comput. Appl. 2016, 146, 10–16. [Google Scholar] [CrossRef]
- Pingdom Website Speed Test. Available online: https://tools.pingdom.com/ (accessed on 5 May 2022).
- Google Chrome Help. Available online: https://support.google.com/chrome/answer/95617?hl=en (accessed on 5 May 2022).
- Forecast Number of Mobile Users Worldwide from 2020 to 2025. Available online: https://www.statista.com/statistics/218984/number-of-global-mobile-users-since-2010/ (accessed on 5 May 2022).
- Roumeliotis, K.I.; Tselikas, N.D. Accelerated Mobile Pages: A Comparative Study. Business Intelligence and Modelling. In Proceedings of the IC-BIM, Los Cabos, Mexico, 21–25 October 2019; Springer Proceedings in Business and Economics Book Series (SPBE). Springer: Chem, Switzerland, 2019. [Google Scholar]
- Start Building Websites with AMP. Available online: https://amp.dev/documentation/ (accessed on 5 May 2022).
- Jun, B.; Bustamante, F.; Whang, S.; Bischof, Z. AMP up your Mobile Web Experience: Characterizing the Impact of Google’s Accelerated Mobile Project. In Proceedings of the MobiCom’19: The 25th Annual International Conference on Mobile Computing and Networking, Los Cabos, Mexico, 21–25 October 2019. [Google Scholar]
- Phokeer, A. On the potential of Google AMP to promote local content in developing regions. In Proceedings of the 11th International Conference on Communication Systems & Networks (COMSNETS), Bengaluru, India, 7–11 January 2019. [Google Scholar]
- Welcome to Schema.org. Available online: https://schema.org/ (accessed on 5 May 2022).
- Guha, R.; Brickley, D.; MacBeth, S. Schema.org: Evolution of Structured Data on the Web: Big data makes common schemas even more necessary. Queue 2015, 13, 10–37. [Google Scholar] [CrossRef]
- Navarrete, R.; Lujan-Mora, S. Microdata with Schema vocabulary: Improvement search results visualization of open educational resources. In Proceedings of the 13th Iberian Conference on Information Systems and Technologies (CISTI), Caceres, Spain, 13–16 June 2018. [Google Scholar]
- Navarrete, R.; Luján-Mora, S. Use of embedded markup for semantic annotations in e-government and e-education websites. In Proceedings of the Fourth International Conference on eDemocracy & eGovernment (ICEDEG), Quito, Ecuador, 19–21 April 2017. [Google Scholar]
- The Open Graph Protocol. Available online: https://ogp.me/ (accessed on 5 May 2022).
- Sergey, B.; Lawrence, P. The anatomy of a large-scale hypertextual Web search engine. Comput. Netw. ISDN Syst. 1998, 30, 107–117. [Google Scholar]
- Krohn, S. Organic Traffic and Why It Is Important. 2016. Available online: https://www.linkedin.com/pulse/organic-traffic-why-important-krohn-online-traffic-generation (accessed on 5 May 2022).
- Jeffers, J. Is Direct Traffic an Indicator of Brand Strength? 2019. Available online: https://www.portent.com/blog/analytics/is-direct-traffic-an-indicator-of-brand-strength.htm (accessed on 5 May 2022).
- Gokhan, E.; Coskun, B. The Role of Search Engine Optimization on Keeping the User on the Site. Procedia Comput. Sci. 2014, 36, 335–342. [Google Scholar]
- SEO in eCommerce: Everything You Need to Improve 2019. Available online: https://www.cloudoe.gr/en/article/seo-in-ecommerce-everything-you-need-to-improve (accessed on 5 May 2022).
- Saura, J.R.; Palos-Sánchez, P.; Cerdá Suárez, L.M. Understanding the Digital Marketing Environment with KPIs and Web Analytics. Future Internet 2017, 9, 76. [Google Scholar] [CrossRef] [Green Version]
- Mozscape API. Available online: https://moz.com/products/api (accessed on 5 May 2022).
- Sakas, D.P.; Giannakopoulos, N.T. Harvesting Crowdsourcing Platforms’ Traffic in Favour of Air Forwarders’ Brand Name and Sustainability. Sustainability 2021, 13, 8222. [Google Scholar] [CrossRef]
- What Is Organic Search? Everything You Need to Know. 2021. Available online: https://ahrefs.com/blog/organic-search/ (accessed on 5 May 2022).
- Organic Keywords: SEO for Beginners. Available online: https://www.semrush.com/blog/organic-keywords/ (accessed on 5 May 2022).
- Ubersuggest. Available online: https://neilpatel.com/ubersuggest/ (accessed on 5 May 2022).
- Google Maps Platform. Available online: https://developers.google.com/maps (accessed on 5 May 2022).
- Command Line Tool and Library for Transferring Data with URLs. Available online: https://curl.se/ (accessed on 5 May 2022).
- Mobile-Friendly Test Tool. Available online: https://support.google.com/webmasters/answer/6352293?hl=en (accessed on 5 May 2022).
- Pagespeedapi Runpagespeed. Available online: https://developers.google.com/speed/docs/insights/v4/reference/pagespeedapi/runpagespeed (accessed on 5 May 2022).
- IBM SPSS 27. Available online: https://www.ibm.com/support/pages/downloading-ibm-spss-statistics-27 (accessed on 5 May 2022).
- Hotels Dataset Excel. Available online: https://github.com/rkonstadinos/seo-techniques-hotels/blob/main/hotels.xlsx (accessed on 5 May 2022).
- Ahrens, J.P. Visualization and Data Analysis at the Exascale; Los Alamos National Laboratory: Los Alamos, NM, USA, 2011. [CrossRef]
- Zikmund, W.G.; D’Alessandro, S.; Winzar, H.; Lowe, B.; Babin, B. Marketing Research: Cengage Learning, 4th Asia-Pacific ed.; Victoria Cengage Learning: South Melbourne, VIC, Australia, 2017; ISBN 9780170369824. [Google Scholar]
- Shrestha, S.K. Brand Loyalty of Baby Diaper Products. Manag. Dyn. 2018, 21, 79–88. [Google Scholar] [CrossRef]
- Park, H.M. Univariate Analysis and Normality Test Using SAS, Stata, and SPSS; The University Information Technology Services (UITS) Center for Statistical and Mathematical Computing; Indiana University: Bloomington, IN, USA, 2018. [Google Scholar]
- Measures of Skewness and Kurtosis. Available online: https://www.itl.nist.gov/div898/handbook/eda/section3/eda35b.htm (accessed on 5 May 2022).
- Ali, E.; Hacer, C. Literature Search Consisting of the Areas of Six Sigma’s Usage. Procedia-Soc. Behav. Sci. 2015, 195, 695–704. [Google Scholar]
- Tabachnick, B.G.; Fidell, L.S.; Ullman, J.B. Using Multivariate Statistics, 7th ed.; Pearson Boston: Boston, MA, USA, 2019; ISBN-13: 9780135350904. [Google Scholar]
- Dukkipati, P.R.V. Probability and Statistics for Scientists and Engineers; New Academic Science Ltd.: London, UK, 2011; Volume 27, p. 1, ISBN-13: 978-1906574833. [Google Scholar]
- Asadoorian, M.O.; Kantarelis, D. Essentials of Inferential Statistics, 4th ed.; University Press of America: Lanham, MD, USA, 2004; ISBN-13: 978-0761830306. [Google Scholar]
- p-Value. Available online: https://www.investopedia.com/terms/p/p-value.asp (accessed on 5 May 2022).
- What a p-Value Tells You about Statistical Significance. Available online: https://www.simplypsychology.org/p-value.html (accessed on 5 May 2022).
- The Ultimate IBM SPSS Statistics Guides. Available online: https://statistics.laerd.com (accessed on 5 May 2022).
- Clogg, C.C.; Petkova, E.; Haritou, A. Statistical methods for comparing regression coefficients between models. Am. J. Sociol. 1995, 100, 1261–1293. [Google Scholar] [CrossRef]
- Standardized Beta Coefficient: Definition & Example. Available online: https://www.statisticshowto.com/standardized-beta-coefficient/ (accessed on 5 May 2022).
- Ceci, M.; Hollmén, J.; Todorovski, L.; Vens, C.; Džeroski, S. (Eds.) Machine Learning and Knowledge Discovery in Databases. ECML PKDD 2017. Lecture Notes in Computer Science; Springer: Cham, Switzerland, 2017. [Google Scholar]
- Keim, D.A.; Hao, M.C.; Dayal, U.; Janetzko, H.; Bak, P. Generalized Scatter Plots. Inf. Vis. 2010, 9, 301–311. [Google Scholar] [CrossRef] [Green Version]
- Sakas, D.P.; Giannakopoulos, N.T. Big Data Contribution in Desktop and Mobile Devices Comparison, Regarding Airlines’ Digital Brand Name Effect. Big Data Cogn. Comput. 2021, 5, 48. [Google Scholar] [CrossRef]
- Gray, S.A.; Gray, S.; Cox, L.J.; Henly-Shepard, S. Mental Modeler: A Fuzzy-Logic Cognitive Mapping Modeling Tool for Adaptive Environmental Management. In Proceedings of the 46th Hawaii International Conference on System Sciences, Wailea, HI, USA, 7–10 January 2013. [Google Scholar]
- Salmeron, J.L. Supporting Decision Makers with Fuzzy Cognitive Maps. Research-Technology Management 2009, 52, 53–59. [Google Scholar] [CrossRef]
KPIs (Unit) | Description |
---|---|
Organic Traffic/Month (number of organic visitors per month) | Organic search refers to the non-paid search results from a search engine. These results cannot be bought or influenced by advertisers, so they are the ones the search engine considers most relevant to the user’s search query [50]. Organic traffic is described by the number of unique visitors per unit of time resulting from users’ queries on search engines. |
Domain Authority—DA (score in the range [0–100], integer) | DA score can be used when comparing websites or tracking the “ranking strength” of a website over time [48]. Websites with higher DA are more likely to rank higher in SERPs than those with lower DA. Search engines do not use the DA metric to rank web pages to the search results. DA is a simulation metric made by Moz’s SEO experts to model search engines’ algorithms behavior [6,11]. |
Website Speed (seconds) | Website speed refers to how quickly a browser can load fully functional web pages from a given website. |
Organic Keywords (number of keywords) | Organic keywords are keywords used in SEO to attract “free” traffic. When a user types a keyword on the search engines, it returns as a result websites which rank for this specific keyword [51]. SEO experts are constantly trying to detect high-traffic keywords that users prefer to search on search engines. The keywords are selected based on the website’s niche. By creating landing pages, and using copywriting and on-page SEO techniques, SEO experts attempt to rank the website to specific keyword queries on search results. The more keywords rank for, the higher organic traffic received. SEO software tools, such as Ubersuggest [52], are used by SEO experts to monitor in which exactly keywords the website is ranking for and in which specific ranking position. |
Backlinks (number of backlinks) | Backlinks are links that the considered page receives from other page(s). According to Google’s founders, anchored links are links to a website containing the target keyword of the destination website. Anchors often provide more accurate descriptions of Web pages than the pages themselves [42]. Backlinks help secure a higher SERP ranking [26]. Backlinks affect mostly the position of a website followed by relevant content [5]. |
N | Minimum | Maximum | Mean | Std. Deviation | Skewness | Kurtosis | |||
---|---|---|---|---|---|---|---|---|---|
Statistic | Statistic | Statistic | Statistic | Statistic | Statistic | Std. Error | Statistic | Std. Error | |
Web Traffic | 309 | 2 | 1,058,500.00 | 7939.3091 | 69,130.01356 | 13.320 | 0.139 | 188.769 | 0.276 |
Domain Authority | 309 | 3 | 90 | 28.81 | 11.472 | 0.907 | 0.139 | 4.153 | 0.276 |
Website Speed | 309 | 0.4 | 15.4 | 3.501 | 2.5462 | 1.781 | 0.139 | 3.589 | 0.276 |
Organic Keywords | 309 | 0 | 2,898,545 | 27,009.03 | 263,236.714 | 10.153 | 0.139 | 102.411 | 0.276 |
Backlinks | 309 | 3 | 32,965,989.00 | 218,197.9773 | 2,315,388.35 | 12.246 | 0.139 | 157.348 | 0.276 |
Technique | Mean (Number of Visitors per Month) | Standard Deviation (Number of Visitors per Month) | t-Value | p-Value | ||
---|---|---|---|---|---|---|
Yes (n = 193) | No (n = 116) | Yes (n = 193) | No (n = 116) | |||
Meta Description | 8739.23 | 6608.39 | 77,063.28 | 53,677.81 | −0.262 | 0.02 |
Technique | Mean (Number of Visitors per Month) | Standard Deviation (Number of Visitors per Month) | t-Value | p-Value | ||
---|---|---|---|---|---|---|
Yes (n = 196) | No (n = 131) | Yes (n = 196) | No (n = 131) | |||
Robots.txt | 6094.49 | 11,139.16 | 42,905.73 | 99,602.74 | 0.617 | 0.04 |
Technique | Mean (Number of Visitors per Month) | Standard Deviation (Number of Visitors per Month) | t-Value | p-Value | Valuable | ||
---|---|---|---|---|---|---|---|
Yes | No | Yes | No | ||||
Meta Description | 8739.23 | 6608.39 | 77,063.28 | 53,677.81 | −0.262 | 0.02 | 1 |
Image Alt | 16,867.69 | 1791.89 | 107,719.97 | 4978.16 | −1.892 | 0.03 | 1 |
SEO friendly URL | 7964.38 | 215.42 | 69,241.10 | 0 | −0.112 | 0.01 | 1 |
Minified CSS | 19,867.59 | 2315.97 | 121,203.18 | 7434.48 | −2.094 | 0.00 | 1 |
Title | 10,237.10 | 1883.92 | 81,027.66 | 6470.74 | −0.948 | 0.00 | 1 |
Structured data | 13,017.17 | 5092.62 | 101,275.80 | 41,495.26 | −0.967 | 0.00 | 1 |
Responsive | 11,117.37 | 1764.77 | 84,892.54 | 5268.46 | −1.127 | 0.02 | 1 |
Heading1 | 9941.26 | 4105.36 | 84,441.15 | 16,683.35 | −0.704 | 0.04 | 1 |
Heading2 | 9711.04 | 6061.27 | 84,777.06 | 47,439.21 | −0.463 | 0.00 | 1 |
SSL | 8324.65 | 386.56 | 70,855.70 | 563.44 | −0.433 | 0.01 | 1 |
Open graph | 9066.93 | 6680.37 | 83,100.83 | 49,322.96 | −0.303 | 0.02 | 1 |
Link Title | 11,925.11 | 6877.51 | 71,897.13 | 68,486.96 | −0.522 | 0.00 | 1 |
RSS | 29,721.21 | 2690.65 | 154,236.56 | 11,543.47 | −2.74 | 0.00 | 1 |
Robots | 6094.49 | 11,139.16 | 42,905.73 | 99,602.74 | 0.617 | 0.04 | 0 |
Minified JS | 23,685.24 | 2251.34 | 132,989.81 | 7181.28 | −2.425 | 0.00 | 1 |
Is WordPress | 2697.31 | 13,568.29 | 12,955.12 | 98,506.26 | 1.383 | 0.168 | 0 |
Is Yoast | 2762.92 | 9511.88 | 7731.00 | 78,792.80 | 0.725 | 0.469 | 0 |
Metric | Model | R | R Square | Adjusted R Square | Std. Error of the Estimate |
---|---|---|---|---|---|
Domain Authority | 1 | 0.409 | 0.167 | 0.165 | 63,180.47283 |
Website Speed | 1 | 0.037 | 0.001 | −0.002 | 69,195.23812 |
Organic Keywords | 1 | 0.853 | 0.727 | 0.726 | 36,191.48936 |
Backlinks | 1 | 0.672 | 0.452 | 0.450 | 51,279.24795 |
Model | Sum of Squares | df | Mean Square | F | p-Value | |
---|---|---|---|---|---|---|
Domain Authority | Regression | 246,445,253,450.713 | 1 | 246,445,253,450.713 | 61.738 | 0.000 |
Residual | 1,225,474,049,215.856 | 307 | 3,991,772,147.283 | |||
Total | 1,471,919,302,666.569 | 308 | ||||
Website Speed | Regression | 2,009,142,195.171 | 1 | 2,009,142,195.171 | 0.420 | 0.518 |
Residual | 1,469,910,160,471.398 | 307 | 4,787,980,978.734 | |||
Total | 1,471,919,302,666.569 | 308 | ||||
Organic Keywords | Regression | 1,069,803,364,626.086 | 1 | 1,069,803,364,626.086 | 816.754 | 0.000 |
Residual | 402,115,938,040.483 | 307 | 1,309,823,902.412 | |||
Total | 1,471,919,302,666.569 | 308 | ||||
Backlinks | Regression | 664,643,992,835.479 | 1 | 664,643,992,835.479 | 252.759 | 0.000 |
Residual | 807,275,309,831.090 | 307 | 2,629,561,269.808 | |||
Total | 1,471,919,302,666.569 | 308 |
Model | B | Std. Error | Beta | t | p-Value |
---|---|---|---|---|---|
(Constant) | 63,093.600 | 9728.574 | 6.485 | 0.000 | |
Domain Authority | 2465.645 | 313.800 | 0.409 | 7.857 | 0.000 |
(Constant) | 4427.210 | 6700.015 | 0.661 | 0.509 | |
Website Speed | 1003.086 | 1548.492 | 0.037 | 0.648 | 0.518 |
(Constant) | 1892.320 | 2069.706 | 0.914 | 0.361 | |
Organic Keywords | 0.224 | 0.008 | 0.853 | 28.579 | 0.000 |
(Constant) | 3561.608 | 2930.141 | 1.216 | 0.225 | |
Backlinks | 0.020 | 0.001 | 0.672 | 15.898 | 0.000 |
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Roumeliotis, K.I.; Tselikas, N.D.; Tryfonopoulos, C. Greek Hotels’ Web Traffic: A Comparative Study Based on Search Engine Optimization Techniques and Technologies. Digital 2022, 2, 379-400. https://doi.org/10.3390/digital2030021
Roumeliotis KI, Tselikas ND, Tryfonopoulos C. Greek Hotels’ Web Traffic: A Comparative Study Based on Search Engine Optimization Techniques and Technologies. Digital. 2022; 2(3):379-400. https://doi.org/10.3390/digital2030021
Chicago/Turabian StyleRoumeliotis, Konstantinos I., Nikolaos D. Tselikas, and Christos Tryfonopoulos. 2022. "Greek Hotels’ Web Traffic: A Comparative Study Based on Search Engine Optimization Techniques and Technologies" Digital 2, no. 3: 379-400. https://doi.org/10.3390/digital2030021
APA StyleRoumeliotis, K. I., Tselikas, N. D., & Tryfonopoulos, C. (2022). Greek Hotels’ Web Traffic: A Comparative Study Based on Search Engine Optimization Techniques and Technologies. Digital, 2(3), 379-400. https://doi.org/10.3390/digital2030021