Structural Relationship Between Beef Food Quality, Trust, and Revisit Intention: The Moderating Role of Price Fairness Based on Heuristics Effect
Abstract
1. Introduction
2. Literature Review and Hypotheses Development
2.1. Revisit Intention
2.2. Trust
2.3. Food Quality and Its Sub-Dimensions
2.4. Hypotheses Development
2.5. Moderating Effect of Price Fairness Based on Heuristics
3. Method
3.1. Research Model and Description of Measurement Items
3.2. Recruitment of Survey Participants
3.3. Data Analysis
4. Results
4.1. Confirmatory Factor Analysis and Correlation Matrix
4.2. Results of Hypotheses Testing
5. Discussion
6. Conclusions
6.1. Theoretical Implications
6.2. Managerial Implications
6.3. Limitations and Directions for Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Construct | Code | Item | Reference |
---|---|---|---|
Price fairness | PF1 | The price of beef was fair. | Singh et al. [66] Do et al. [67] |
PF2 | The price of beef was reasonable. | ||
PF3 | The price of beef was acceptable. | ||
PF4 | The price of beef was affordable. | ||
Freshness | FR1 | The color of beef was important. | Jaeger et al. [69] Lin et al. [70] |
FR2 | The freshness of beef was essential. | ||
FR3 | For me, the freshness of beef was critical. | ||
FR4 | Fresh visuals of beef were imperative. | ||
Portion size | PS1 | The portion size of beef was adequate. | Cavazza et al. [73] Petit et al. [74] |
PS2 | The size of the beef was suitable for my needs. | ||
PS3 | The portion size of beef was appropriate. | ||
PS4 | The portion size of beef met my needs well. | ||
Packaging | PK1 | The packaging of beef was adequate. | Deliya & Parmar [78] Bou-Mitri et al. [80] |
PK2 | The packaging protected the beef adequately. | ||
PK3 | The packaging of beef was suitable. | ||
PK4 | The beef packaging was useful for the product. | ||
Trust | TR1 | I trust beef. | Wu & Huang [51] Min et al. [52] |
TR2 | Beef is reliable. | ||
TR3 | Beef is trustworthy to consume. | ||
TR4 | I have a credence to beef. | ||
Revisit intention | RI1 | I intend to visit the place where I bought the beef again. | Al-Sulaiti [23] Mandagi et al. [47] |
RI2 | I am going to visit the place where I purchased the beef again. | ||
RI3 | I will revisit the store where I purchased the beef. |
Item | Frequency | Percentage |
---|---|---|
Male | 130 | 31.3 |
Female | 285 | 68.7 |
20s | 60 | 14.5 |
30s | 139 | 33.5 |
40s | 146 | 35.2 |
50s | 55 | 13.3 |
Older than 60 | 15 | 3.6 |
Weekly beef eating frequency | ||
Less than 1 time | 71 | 17.1 |
1–2 times | 215 | 51.8 |
3–6 times | 116 | 28.0 |
Everyday | 13 | 3.1 |
Monthly household income | ||
Less than USD 2500 | 103 | 24.8 |
USD 2500–5000 | 145 | 34.9 |
USD 5000–7500 | 78 | 18.8 |
USD 7500–10,000 | 24 | 5.8 |
More than USD 10,000 | 65 | 15.7 |
Index | Criteria |
---|---|
Q (chi-square/degrees of freedom) | Less than 3 |
Root mean square residual (RMR) | Less than 0.05 |
Goodness-of-fit index (GFI) | Greater than 0.9 |
Normed fit index (NFI) | Greater than 0.9 |
Relative fit index (RFI) | Greater than 0.9 |
Incremental fit index (IFI) | Greater than 0.9 |
Tucker–Lewis index (TLI) | Greater than 0.9 |
Comparative fit index (CFI) | Greater than 0.9 |
Root mean square error of approximation (RMSEA) | Less than 0.05 |
Construct | Code | Loading | Mean (SD) | AVE | CR |
---|---|---|---|---|---|
Price fairness | PF1 | 0.887 | 2.83 (0.99) | 0.798 | 0.940 |
PF2 | 0.969 | ||||
PF3 | 0.893 | ||||
PF4 | 0.819 | ||||
Freshness | FR1 | 0.717 | 4.43 (0.74) | 0.587 | 0.849 |
FR2 | 0.824 | ||||
FR3 | 0.845 | ||||
FR4 | 0.667 | ||||
Portion size | PS1 | 0.887 | 3.85 (0.93) | 0.770 | 0.930 |
PS2 | 0.904 | ||||
PS3 | 0.904 | ||||
PS4 | 0.812 | ||||
Packaging | PK1 | 0.829 | 4.01 (0.82) | 0.898 | 0.963 |
PK2 | 0.893 | ||||
PK3 | 0.948 | ||||
PK4 | 0.823 | ||||
Trust | TR1 | 0.936 | 3.60 (0.96) | 0.757 | 0.925 |
TR2 | 0.924 | ||||
TR3 | 0.885 | ||||
TR4 | 0.719 | ||||
Revisit intention | RI1 | 0.939 | 4.33 (0.88) | 0.666 | 0.888 |
RI2 | 0.958 | ||||
RI3 | 0.946 |
1 | 2 | 3 | 4 | 5 | 6 | |
---|---|---|---|---|---|---|
1. Price fairness | 0.893 | |||||
2. Freshness | 0.115 * | 0.766 | ||||
3. Portion size | 0.441 * | 0.439 * | 0.877 | |||
4. Packaging | 0.296 * | 0.421 * | 0.474 * | 0.947 | ||
5. Trust | 0.336 * | 0.384 * | 0.465 * | 0.504 * | 0.870 | |
6. Revisit intention | 0.219 * | 0.543 * | 0.486 * | 0.520 * | 0.557 * | 0.874 |
Path | Beta | t Value | p-Value | Results |
---|---|---|---|---|
Price fairness → Trust | 0.125 * | 2.534 | 0.011 | H1a supported |
Price fairness → Revisit intention | −0.031 | −0.716 | 0.474 | H1b not supported |
Freshness → Trust | 0.129 * | 2.326 | 0.020 | H2a supported |
Freshness → Revisit intention | 0.336 * | 6.526 | 0.000 | H2b supported |
Portion size → Trust | 0.207 * | 3.483 | 0.000 | H3a supported |
Portion size → Revisit intention | 0.126 * | 2.403 | 0.016 | H3b supported |
Packaging → Trust | 0.326 * | 6.026 | 0.000 | H4a supported |
Packaging → Revisit intention | 0.171 * | 3.486 | 0.000 | H4b supported |
Trust → Revisit intention | 0.315 * | 6.590 | 0.000 | H5 supported |
Variables | Model 1a Beta (t Value) DV: Trust | Model 1b Beta (t Value) DV: Trust | Model 2a Beta (t Value) DV: Revisit Intention | Model 2b Beta (t Value) DV: Revisit Intention |
---|---|---|---|---|
Intecept | 1.296 (4.68) * | 0.844 (3.00) * | −0.926 (−2.07) * | −1.123 (−2.43) |
Freshness | 0.520 (8.45) * | 0.395 (6.87) * | 0.700 (6.06) * | 0.697 (6.03) * |
Trust | 0.571 (5.79) * | 0.558 (5.64) * | ||
Price fairness | 0.841 (4.56) * | 0.841 (4.55) * | ||
Freshness × Price fairness | −0.111 (−2.48) * | −0.115 (−2.55) * | ||
Trust × Price fairness | −0.083 (−2.43) * | −0.079 (−2.34) * | ||
Gender | −0.142 (−1.65) | 0.199 (2.91) * | ||
Age | 0.002 (0.06) | −0.003 (−0.09) | ||
Weekly eating frequency | 0.525 (9.39) * | 0.045 (0.92) | ||
Monthly household income | −0.017 (−0.58) | 0.016 (0.68) | ||
F-value | 71.49 * | 36.05 * | 72.16 * | 41.72 * |
R2 | 0.1476 | 0.3059 | 0.4687 | 0.4811 |
Conditional effect of the focal predictor Freshness × Price fairness | ||||
1.75 (Price fairness) | 0.504 (9.10) * | 0.495 (8.96) * | ||
3.00 (Price fairness) | 0.365 (6.33) * | 0.351 (6.07) * | ||
4.00 (Price fairness) | 0.253 (2.82) * | 0.236 (2.61) * | ||
Conditional effect of the focal predictor Trust × Price fairness | ||||
1.75 (Price fairness) | 0.425 (8.67) * | 0.418 (8.21) * | ||
3.00 (Price fairness) | 0.322 (8.21) * | 0.318 (7.51) * | ||
4.00 (Price fairness) | 0.239 (4.07) * | 0.239 (3.89) * |
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Sun, K.-A.; Moon, J. Structural Relationship Between Beef Food Quality, Trust, and Revisit Intention: The Moderating Role of Price Fairness Based on Heuristics Effect. Nutrients 2025, 17, 2155. https://doi.org/10.3390/nu17132155
Sun K-A, Moon J. Structural Relationship Between Beef Food Quality, Trust, and Revisit Intention: The Moderating Role of Price Fairness Based on Heuristics Effect. Nutrients. 2025; 17(13):2155. https://doi.org/10.3390/nu17132155
Chicago/Turabian StyleSun, Kyung-A, and Joonho Moon. 2025. "Structural Relationship Between Beef Food Quality, Trust, and Revisit Intention: The Moderating Role of Price Fairness Based on Heuristics Effect" Nutrients 17, no. 13: 2155. https://doi.org/10.3390/nu17132155
APA StyleSun, K.-A., & Moon, J. (2025). Structural Relationship Between Beef Food Quality, Trust, and Revisit Intention: The Moderating Role of Price Fairness Based on Heuristics Effect. Nutrients, 17(13), 2155. https://doi.org/10.3390/nu17132155