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Asia Business & Service Innovation
Original Research Article

Review Topics Driving Star Ratings in Food Delivery Apps: A Cross-Country Comparison of Baemin (Korea) and Grab (Indonesia)

Received: February 28, 2026 Revised: April 24, 2026 Accepted: May 7, 2026 Published: June 30, 2026

Abstract

This study compares the latent themes of online consumer reviews and their effects on customer satisfaction, operationalized as star ratings, between leading mobile food-delivery applications (FDAs) in two Asian markets: Baemin in the Republic of Korea and three Indonesian super-apps that all bundle ride-hailing with food delivery — Grab, Gojek, and Maxim. Because the Indonesian super-apps pool reviews across functionally distinct services, we apply a lexical-filter procedure that retains only food-delivery-related reviews (containing tokens such as makanan, pesan, grabfood, gofood; excluding ride-hailing tokens such as taksi, grabcar, gocar). Five hundred reviews per app were collected from the Apple App Store on April 29, 2026; the food-delivery share of the review channel was 38.0% for Grab, 13.0% for Gojek, and 7.0% for Maxim, indicating that the ride-hailing-anchored super-apps (Gojek, Maxim) carry far less food-delivery signal than the food-delivery-leading Grab. After filtering, the analytic samples were N = 476 for Baemin and N = 290 for the combined Indonesian food-delivery corpus. Latent Dirichlet Allocation (LDA) extracted five topics per market; star ratings were regressed on the document-topic proportions with HC3 robust standard errors, and the Indonesian model included app fixed effects to absorb baseline differences across the three platforms. Both models were statistically significant (Baemin: F(4,471) = 7.53, p < .001, adj. R² = .058; Indonesia: F(6, 283) = 6.09, p < .001, adj. R² = .094). For Baemin, delivery-time delay (B = -1.01, p = .002) and customer-service handling (B = -0.94, p = .005) emerged as significant negative drivers of star ratings. For combined Indonesia, the long wait / order cancellation topic drove ratings down significantly (B = -0.68, p = .025) once app fixed effects were controlled. Topic prevalences also differed across the three Indonesian apps in theoretically interesting ways: Maxim users voiced disproportionate concern with delivery fees and pricing (42.5% topic mass), while Grab and Gojek users emphasized waiting and cancellation. Theoretical, methodological, and managerial implications are discussed.