Leading Logistics Firms’ Re-Engineering through the Optimization of the Customer’s Social Media and Website Activity
Abstract
:1. Introduction
1.1. Impact of Digitalization on Innovations and Customers’ Behavior
1.2. Digitalization and Change Management
1.3. Re-Engineering Marketing during Radical Business Transformation
1.4. Digitalization in Logistics: The Big Data Concept
1.5. Social/Web Analytics and Hypotheses Formulation
2. Materials and Methods
2.1. Statistical Analysis
2.2. Fuzzy Cognitive Map
3. Discussion
- H2 is accepted, which highlights that the bounce rate (visitors that exit the websites) has positive effects on social media visibility. This is an interesting result which highlights that users turn their focus more on social media than on logistics websites and further promotes better market segmentation, as indicated by previous research [116,117,118,119]. H3 is also accepted. This hypothesis, which is also supported by the FCM’s findings, suggests that the paid traffic in Google advertisements has negative effects on social media visibility. Therefore, logistics companies need to invest more in social media advertisements as advised from previous research in other industries [21,120].
- H4 is also accepted and supported by previous research. The results highlight that the digital brand name of corporate websites is highly affected by the website’s user activity [23,67]. However, it has no effect on the logistics app rating. This is an interesting outcome that has never been studied before, and therefore future research is welcomed.
- H5 is also accepted. This finding illustrates that social media interactivity has an imperceptible effect on the re-engineering strategy. Additionally, due to the high correlation between the paid traffic cost and the organic traffic cost, marketing managers are advised to equally reduce the amount of both social media ads and Google ads in order to produce an effective re-engineering process. This is an outcome that comes in contradiction with other industry digital entities, such as energy retail providers, and therefore logistics companies are highly suggested to use and create buyer personas so as to develop customized advertisements [121,122].
4. Conclusions
4.1. Theoretical Implications
4.2. Practical Implications
4.3. Global Implications and Market Forces
4.4. Limitations and Future Recommendations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Web Analytics KPIs | Description of the Web Analytics KPIs |
---|---|
Websites’ Organic Traffic | Organic traffic refers to people who come to the corporate site in an unpaid way [24,99]. |
Websites’ Social Media Traffic | Via links or adverts, social media networks such as Twitter redirect consumers to the corporate website [99]. |
Websites’ Paid Traffic | It refers to a web analytic that is calculated using paid procedures. When consumers click on ads in Google or other websites, customers are redirected to the logistics websites [99]. |
Websites’ Total Visitors | This web analytic monitors the number of users daily that visit a logistic website [99]. |
Websites’ Global Rank | Websites’ global rank is calculated based on the overall platform traffic, which takes into consideration the organic traffic, the social media traffic, and the total paid traffic; the smaller the global rank, the more famous the website. For example, a website in 7th place is more famous and visible than a website in the 117th place [24,99]. |
Websites’ Bounce Rate | This web analytic calculates how many visitors exit the logistic website without taking further action [99]. |
Websites’ Average Time on Site | This web analytic tracks how much time a user remains on a logistics website [99]. |
Websites’ Pages per Visit | The number of pages that a user browses in a logistics website [99]. |
Organic Traffic Cost | This web analytic calculates the cost to place organic keywords by using Google advertisements [99]. |
Paid Traffic Cost | This web analytic calculates the cost to place corporate advertisements in social media, search engines, and mobile applications [99]. |
Follower Growth | Follower growth measures the number of new followers on the corporate social media account per week [100]. |
Total Reactions, Comments, and Shares | This social media analytic indicates the number of interactions on posts that were published at a specific time [100]. |
Total Social Media Engagement | This web analytic shows an average amount of how much a fan interacts with the posts of a brand [100]. |
Logistics App Rating | App rating is a score given to a mobile app based on user comments and reviews in order to represent its overall quality, based on the users’ experience. The rating scale is 1 to 5 stars, with 5 being the highest rating [101,102]. |
Correlations | Social Media Traffic | Logistics App Rating | Total Reactions, Comments, Shares | Follower Growth |
---|---|---|---|---|
Social Media Traffic | 1 | |||
Logistics App Rating | 0.300 * | 1 | ||
Total Reactions, Comments, Shares | −0.325 * | −0.058 | 1 | |
Follower Growth | −0.301 * | 0.004 | 0.718 * | 1 |
Variables | Standardized Coefficient | R2 | F | p Value |
---|---|---|---|---|
Constant (Social Media Traffic) | − | 0.177 | 2.870 | 0.048 |
Logistics App Rating | 0.274 | 0.068 | ||
Total Reactions, Comments, Shares | −0.182 | 0.425 | ||
Follower Growth | −0.134 | 0.553 |
Correlations | Bounce Rate | Pages per Visits | Follower Growth |
---|---|---|---|
Bounce Rate | 1 | ||
Pages per Visits | −0.886 ** | 1 | |
Follower Growth | −0.321 * | 0.269 | 1 |
Variables | Standardized Coefficient | R2 | F | p Value |
---|---|---|---|---|
Constant (Bounce Rate) | − | 0.792 | 87,411 | 0.000 |
Pages per Visits Follower Growth | −0.089 −0.862 | 0.000 0.207 |
Correlations | Paid Traffic | Follower Growth | Organic Traffic | Social Media Traffic |
---|---|---|---|---|
Paid Traffic | 1 | |||
Follower Growth | −0.338 * | 1 | ||
Organic Traffic | 0.786 ** | −0.226 | 1 | |
Social Media Traffic | 0.937 ** | −0.301 * | 0.939 ** | 1 |
Variables | Standardized Coefficient | R2 | F | p Value |
---|---|---|---|---|
Constant (Paid Traffic) | − | 0.952 | 300,341 | 0.000 |
Follower Growth Organic Traffic | −0.011 −0.794 | 0.748 0.000 | ||
Social Media Traffic | 1.679 | 0.000 |
Correlations | Global Ranking | Total Visitors | Logistics Apps Rating | Social Media Traffic | Average Visit Durations |
---|---|---|---|---|---|
Global Ranking | 1 | ||||
Total Visitors | −0.569 ** | 1 | |||
Logistics Apps Rating | 0.088 | −0.123 | 1 | ||
Social Media Traffic | −0.345 * | 0.931 ** | −0.009 | 1 | |
Average Visit Duration | −521 ** | 0.994 ** | −0.064 | 0.928 ** | 1 |
Variables | Standardized Coefficient | R2 | F | p Value |
---|---|---|---|---|
Constant (Global Ranking) | − | 0.724 | 28.909 | 0.000 |
Total Visitors | −5.232 | 0.000 | ||
Logistics Apps Rating | 0.001 | 0.993 | ||
Social Media Traffic | −1.338 | 0.000 | ||
Average Visit Duration | −3.437 | 0.000 |
Correlations | Paid Traffic Cost | Organic Traffic Cost | Social Media Traffic | Social Media Engagement |
---|---|---|---|---|
Paid Traffic Cost | 1 | |||
Organic Traffic Cost | 0.908 ** | 1 | ||
Social Media Traffic | 0.177 | 0.080 | 1 | |
Social Media Engagement | −0.040 | −0.024 | −0.135 | 1 |
Variables | Standardized Coefficient | R2 | F | p Value |
---|---|---|---|---|
Constant (Paid Traffic Cost) | − | 0.713 | 31.504 | 0.000 |
Organic Traffic Cost | 0.839 | 0.000 | ||
Social Media Traffic | 0.049 | 0.000 | ||
Social Media Engagement | −007 | 0.933 |
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Sakas, D.P.; Reklitis, D.P.; Terzi, M.C. Leading Logistics Firms’ Re-Engineering through the Optimization of the Customer’s Social Media and Website Activity. Electronics 2023, 12, 2443. https://doi.org/10.3390/electronics12112443
Sakas DP, Reklitis DP, Terzi MC. Leading Logistics Firms’ Re-Engineering through the Optimization of the Customer’s Social Media and Website Activity. Electronics. 2023; 12(11):2443. https://doi.org/10.3390/electronics12112443
Chicago/Turabian StyleSakas, Damianos P., Dimitrios P. Reklitis, and Marina C. Terzi. 2023. "Leading Logistics Firms’ Re-Engineering through the Optimization of the Customer’s Social Media and Website Activity" Electronics 12, no. 11: 2443. https://doi.org/10.3390/electronics12112443
APA StyleSakas, D. P., Reklitis, D. P., & Terzi, M. C. (2023). Leading Logistics Firms’ Re-Engineering through the Optimization of the Customer’s Social Media and Website Activity. Electronics, 12(11), 2443. https://doi.org/10.3390/electronics12112443