Author
Listed:
- Zulkarnain
(Universitas Riau, Faculty of Economics and Business)
- Abd. Rasyid Syamsuri
(Universitas Riau, Faculty of Economics and Business)
- Gatot Wijiyanto
(Universitas Riau, Faculty of Economics and Business)
- Samsir Samsir
(Universitas Riau, Faculty of Economics and Business)
Abstract
The growth of app-based food delivery services in Indonesia shows a positive trend, including in the city of Pekanbaru, which has high internet penetration. ShopeeFood, as one of the players in this market, faces challenges in maintaining customer satisfaction, which is influenced by food quality, driver service quality, and perceived value. This study aims to analyze the effect of food quality and driver service quality on customer satisfaction by including perceived value as a mediating variable. This study uses an explanatory research method with a quantitative approach. Data were collected through questionnaires distributed to 210 respondents in 15 subdistricts in the city of Pekanbaru, then analyzed using Structural Equation Modeling–Partial Least Squares (SEM-PLS) with SmartPLS 4. The results showed that all constructs met the validity and reliability tests, and the model met the discriminant validity criteria. The analysis results re-veal that food quality and driver service quality have a positive and significant effect on customer satisfaction, both directly and through perceived value. Food quality is a dominant factor in influencing perceived value, while driver service has a greater effect on satisfaction directly. The R2 value of 0.720 indicates the model’s substantial predictive ability. This study suggests that ShopeeFood should improve food quality, driver professionalism, and perceived value enhancement strategies to strengthen customer satisfaction and loyalty in Pekanbaru.
Suggested Citation
Zulkarnain & Abd. Rasyid Syamsuri & Gatot Wijiyanto & Samsir Samsir, 2026.
"Mediation of Perceived Value in Influencing Customer Satisfaction at Shopee Food in Pekanbaru City,"
Advances in Economics, Business and Management Research, in: Jessica Olifia & Dewi Junita & Aprizal Putra & Susi Lestari & Sarah Ulfah Al Amany & Syafri Naldi (ed.), Proceedings of the 7th International Conference on Applied Economics and Social Science (ICAESS 2025), pages 523-539,
Springer.
Handle:
RePEc:spr:advbcp:978-94-6463-990-2_35
DOI: 10.2991/978-94-6463-990-2_35
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