Empirical Analysis of Social Media Interaction Metrics and Their Impact
on Startup Engagement
Dublin Core
Title
Empirical Analysis of Social Media Interaction Metrics and Their Impact
on Startup Engagement
on Startup Engagement
Subject
Social Media, Startup Engagement, Digital Marketing, Likes, Comments, Shares, Random Forest, Regression Analysis
Description
In the digital economy, social media serves as a crucial platform for startups to build relationships with audiences and strengthen brand presence.
However, the specific effects of different types of user interactions—likes, comments, and shares—on startup engagement remain insufficiently
quantified. This study provides an empirical analysis of how social media interaction metrics influence engagement using secondary data from
the publicly available Social Media Engagement Metrics dataset on Kaggle. Employing a quantitative design, the study integrates descriptive
statistics, Pearson correlation, Random Forest, and multiple linear regression to examine both linear and non-linear relationships. Results show
that likes, comments, and shares collectively affect engagement rates, with Random Forest identifying likes as the most influential feature.
However, regression results indicate that shares exert a statistically significant but negative effect on engagement, suggesting complex behavioral
patterns behind user interactions. Visual analyses—including histograms, boxplots, and heatmaps—support data normality and highlight variation
in post performance. The findings emphasize the importance of visually engaging content and interactive captions to enhance user engagement.
This study contributes to digital marketing research by combining methodological rigor with actionable insights, offering data-driven
recommendations for startups aiming to optimize their social media strategies
However, the specific effects of different types of user interactions—likes, comments, and shares—on startup engagement remain insufficiently
quantified. This study provides an empirical analysis of how social media interaction metrics influence engagement using secondary data from
the publicly available Social Media Engagement Metrics dataset on Kaggle. Employing a quantitative design, the study integrates descriptive
statistics, Pearson correlation, Random Forest, and multiple linear regression to examine both linear and non-linear relationships. Results show
that likes, comments, and shares collectively affect engagement rates, with Random Forest identifying likes as the most influential feature.
However, regression results indicate that shares exert a statistically significant but negative effect on engagement, suggesting complex behavioral
patterns behind user interactions. Visual analyses—including histograms, boxplots, and heatmaps—support data normality and highlight variation
in post performance. The findings emphasize the importance of visually engaging content and interactive captions to enhance user engagement.
This study contributes to digital marketing research by combining methodological rigor with actionable insights, offering data-driven
recommendations for startups aiming to optimize their social media strategies
Creator
rif Mu’amar Wahid1,*, Ika Maulita2
Source
https://ijiis.org/index.php/IJIIS/article/view/272/168
Publisher
Universitas Jenderal Soedirman, Indonesia
Date
september 2025
Contributor
Fajar bagus W
Format
PDF
Language
English
Type
Text
Files
Collection
Citation
rif Mu’amar Wahid1,*, Ika Maulita2, “Empirical Analysis of Social Media Interaction Metrics and Their Impact
on Startup Engagement,” Repository Horizon University Indonesia, accessed January 1, 2026, https://repository.horizon.ac.id/items/show/9736.
on Startup Engagement,” Repository Horizon University Indonesia, accessed January 1, 2026, https://repository.horizon.ac.id/items/show/9736.