Paying for the Greater Good?—What Information Matters for Beijing Consumers’ Willingness to Pay for Plant-Based Meat?
Abstract
:1. Introduction
2. Materials and Methods
2.1. Experimental Design
2.1.1. Basic Design
2.1.2. Information Intervention
2.1.3. Data Collection and Quality Control
2.2. Analytical Framework
2.2.1. The Mixed-Logit Setup
2.2.2. Incorporating Information Effects
3. Results
3.1. Distribution of Answers
3.2. Estimation Results of Mixed Logit Models
4. Discussion
4.1. Findings and Implications
4.2. Limitations and Suggestions for Future Research
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Model 1 | Model 2 | |||||||
---|---|---|---|---|---|---|---|---|
Mean of Parameter | SD of Parameter | Mean of Parameter | SD of Parameter | |||||
Attribute: meat patty | ||||||||
Plant-based Meat | −0.303 *** | (0.093) | 1.829 *** | (0.098) | −0.606 *** | (0.187) | 1.832 *** | (0.098) |
Attribute: flavor | ||||||||
Pork flavor | −0.381 *** | (0.069) | 0.909 *** | (0.084) | −0.261 * | (0.145) | 0.927 *** | (0.085) |
Beef flavor | 0.237 *** | (0.072) | 1.144 *** | (0.076) | 0.422 *** | (0.146) | 1.158 *** | (0.077) |
Reference category: chicken flavor | ||||||||
Attribute: flavor: sodium content | ||||||||
Sodium_100_mg | 0.341 *** | (0.069) | 0.844 *** | (0.073) | 0.200 | (0.142) | 0.831 *** | (0.073) |
Sodium_250_mg | 0.209 *** | (0.066) | 0.564 *** | (0.095) | 0.148 | (0.134) | 0.579 *** | (0.094) |
Sodium_400_mg | 0.106 | (0.067) | 0.365 *** | (0.126) | −0.137 | (0.139) | 0.341 *** | (0.128) |
(Reference category: Sodium_550_mg) | ||||||||
Attribute: energy | ||||||||
Cal_250_kcal | 0.292 *** | (0.067) | 0.738 *** | (0.069) | 0.425 *** | (0.152) | 0.744 *** | (0.069) |
Cal_350_kcal | 0.069 | (0.059) | 0.022 | (0.174) | 0.059 | (0.136) | 0.048 | (0.169) |
Cal_450_kcal | −0.032 | (0.060) | 0.003 | (0.287) | 0.025 | (0.116) | 0.030 | (0.272) |
Reference category: Cal_550_kcal | ||||||||
Interactions between attributes and information treatments | ||||||||
Plant-based Meat × Environmental information | 0.312 | (0.262) | ||||||
Plant-based Meat × Nutrition information | 0.574 ** | (0.264) | ||||||
Plant-based Meat × Food safety information | 0.371 | (0.263) | ||||||
Pork flavor × Environmental information | 0.017 | (0.201) | ||||||
Pork flavor × Nutrition information | −0.291 | (0.193) | ||||||
Pork flavor × Food safety information | −0.225 | (0.200) | ||||||
Beef flavor × Environmental information | 0.075 | (0.210) | ||||||
Beef flavor × Nutrition information | −0.365 * | (0.206) | ||||||
Beef flavor × Food safety information | −0.573 *** | (0.209) | ||||||
Sodium_100_mg × Environmental information | −0.058 | (0.194) | ||||||
Sodium_100_mg × Nutrition information | 0.488 ** | (0.195) | ||||||
Sodium_100_mg × Food safety information | 0.091 | (0.194) | ||||||
Sodium_250_mg × Environmental information | 0.066 | (0.201) | ||||||
Sodium_250_mg × Nutrition information | 0.155 | (0.180) | ||||||
Sodium_250_mg × Food safety information | −0.072 | (0.187) | ||||||
Sodium_400_mg × Environmental information | 0.392 ** | (0.199) | ||||||
Sodium_400_mg × Nutrition information | 0.518 *** | (0.193) | ||||||
Sodium_400_mg × Food safety information | 0.177 | (0.194) | ||||||
Cal_250_kcal × Environmental information | −0.162 | (0.210) | ||||||
Cal_250_kcal × Nutrition information | −0.026 | (0.205) | ||||||
Cal_250_kcal × Food safety information | −0.147 | (0.199) | ||||||
Cal_350_kcal × Environmental information | 0.042 | (0.198) | ||||||
Cal_350_kcal × Nutrition information | −0.155 | (0.171) | ||||||
Cal_350_kcal × Food safety information | 0.179 | (0.180) | ||||||
Cal_450_kcal × Environmental information | 0.067 | (0.166) | ||||||
Cal_450_kcal × Nutrition information | −0.168 | (0.163) | ||||||
Cal_450_kcal × Food safety information | −0.109 | (0.172) | ||||||
Price | −0.047 *** | (0.002) | −0.047 *** | (0.002) | ||||
Alternative Specific Constant | −2.018 *** | (0.097) | −2.018 *** | (0.104) | ||||
Log likelihood | −5588.500 | −5567.021 | ||||||
AIC | 11,217.0 | 11,228.0 | ||||||
McFadden R2 | 0.175 | 0.178 | ||||||
Number of observations | 4208 | 4208 |
Control | Treatment 1-Environmental Information | Treatment 2-Nutrition Information | Treatment 3-Food Safety Information | ||||||
---|---|---|---|---|---|---|---|---|---|
Attribute: meat patty | |||||||||
Plant-based Meat | Mean | −0.539 ** | (0.210) | −0.362 * | (0.185) | −0.078 | (0.199) | −0.232 | (0.186) |
SD | 1.935 *** | (0.205) | 1.534 *** | (0.168) | 2.010 *** | (0.220) | 1.814 *** | (0.196) | |
Attribute: flavor | |||||||||
Pork flavor | Mean | −0.442 ** | (0.174) | −0.255 | (0.155) | −0.554 *** | (0.136) | −0.523 *** | (0.145) |
SD | 1.172 *** | (0.181) | 0.916 *** | (0.169) | 0.969 *** | (0.162) | 0.768 *** | (0.17) | |
Beef flavor | Mean | 0.401 ** | (0.156) | 0.561 *** | (0.172) | 0.068 | (0.142) | −0.100 | (0.151) |
SD | 1.224 *** | (0.157) | 1.353 *** | (0.168) | 1.00 *** | (0.147) | 1.071 *** | (0.154) | |
(Reference group: Chicken flavor) | |||||||||
Attribute: flavor: sodium content | |||||||||
Sodium_100_mg | Mean | 0.285 * | (0.160) | 0.237 | (0.170) | 0.460 ** | (0.18) | 0.267 * | (0.139) |
SD | 0.745 *** | (0.158) | 0.995 *** | (0.146) | 1.011 *** | (0.158) | 0.552 *** | (0.152) | |
Sodium_250_mg | Mean | 0.224 | (0.151) | 0.201 | (0.171) | 0.284 ** | (0.134) | 0.014 | (0.158) |
SD | 0.394 * | (0.215) | 0.720 *** | (0.185) | 0.427 ** | (0.188) | 0.661 *** | (0.147) | |
Sodium_400_mg | Mean | −0.047 | (0.151) | 0.362 ** | (0.165) | 0.241 | (0.170) | −0.070 | (0.169) |
SD | 0.046 | (0.369) | 0.595 *** | (0.195) | 0.384 | (0.235) | 0.748 *** | (0.176) | |
(Reference group: Sodium_550_mg) | |||||||||
Attribute: energy | |||||||||
Cal_250_kcal | Mean | 0.377 ** | (0.165) | 0.269 | (0.169) | 0.353 ** | (0.153) | 0.387 *** | (0.122) |
SD | 0.913 *** | (0.155) | 0.874 *** | (0.147) | 0.761 *** | (0.154) | 0.438 *** | (0.165) | |
Cal_350_kcal | Mean | 0.106 | (0.148) | 0.121 | (0.167) | −0.108 | (0.126) | 0.288 ** | (0.123) |
SD | 0.133 | (0.293) | 0.062 | (0.159) | 0.626 *** | (0.160) | 0.100 | (0.185) | |
Cal_450_kcal | Mean | −0.037 | (0.121) | 0.138 | (0.152) | −0.161 | (0.116) | −0.020 | (0.143) |
SD | 0.122 | (0.311) | 0.446 ** | (0.225) | 0.062 | (0.205) | 0.243 | (0.293) | |
(Reference group: Cal_550_kcal) | |||||||||
Price | −0.056 *** | (0.005) | −0.042 *** | (0.005) | −0.036 *** | (0.005) | −0.053 *** | (0.005) | |
Alternative Specific Constant | −2.337 *** | (0.193) | −1.744 *** | (0.285) | −1.876 *** | (0.204) | −2.052 *** | (0.200) | |
Log likelihood | −1330.611 | −1378.758 | −1420.812 | −1411.905 | |||||
AIC | 2701.2 | 2797.5 | 2881.6 | 2863.8 | |||||
McFadden R2 | 0.211 | 0.189 | 0.158 | 0.169 | |||||
Number of observations | 1048 | 1056 | 1048 | 1056 |
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Treatments | Information Contents |
---|---|
Environmental information | Message 1: The livestock industry is a major contributor to global greenhouse gas emissions. Promoting a shift to a more sustainable global food system by reducing meat consumption and switching to plant-based diets will help reduce greenhouse gas emissions, save water and land resources, and promote environmental sustainability. Message 2: Currently, data on the benefits of plant-based products in reducing greenhouse gas emissions, lowering land and water consumption, and alleviating environmental burdens are limited. |
Nutrition information | Message 1: Plant-based meat is rich in vitamins and can provide the same protein, minerals, and other nutrients as can those contained in animal meat. Plant-based meat is also rich in dietary fiber and overcomes many disadvantages of animal meat, such as excessive saturated fatty acids and high cholesterol. According to Dietary Guidelines for Americans (2020–2025), the daily energy needs are 1600–2400 kcal for an adult female and 2000–3000 kcal for an adult male. Message 2: Compared with animal meat, plant-based meat lacks several essential nutrients, such as iron, zinc, and vitamin B12. Moreover, additional salt and other food additives need to be added for plant-based meat to mimic the flavor of animal meat. Consequently, the sodium content in plant-based meat tends to be higher than in animal meat. According to the Dietary Guidelines for Americans (2020–2025), the daily sodium intake should not exceed 2300 mg, and should be further reduced for people under the age of 14. |
Food safety information | Message 1: Consuming plant-based meat may avoid the risk of contracting diseases associated with animal meat consumption, such as mad cow disease and foot-and-mouth disease. Moreover, plant-based meat products are made without antibiotics and hormones. Message 2: There are relatively limited data and research on the safety of consuming plant-based meat products, such as microbial pollution, heavy metals residues, pesticide residues, etc. There is also a lack of data on the safety assessment of certain specific ingredients used in plant-based meat products. |
Characteristics | Description | Percentage |
---|---|---|
Gender | Male | 38.59 |
Female | 61.41 | |
Age | 20 or under | 10.65 |
21–25 | 15.59 | |
26–30 | 27.19 | |
31–35 | 20.72 | |
36–40 | 12.17 | |
41–45 | 6.08 | |
46–50 | 4.18 | |
51–55 | 0.95 | |
56–60 | 1.71 | |
61 or older | 0.76 | |
Education | Primary school | 0.38 |
Junior high school | 1.90 | |
(Vocational) high school | 6.46 | |
College/university | 69.77 | |
Master’s degree or higher | 21.48 | |
Monthly income (RMB) | ≤4999 | 9.89 |
5000–9999 | 24.14 | |
10,000–19,999 | 36.31 | |
20,000–49,999 | 24.14 | |
50,000–99,999 | 3.42 | |
≥100,000 | 2.09 |
Statements | Mean (%) | SD |
---|---|---|
A. Statements regarding plant-based meat | ||
(a) It is safe to consume plant-based meat. | 5.01 | 1.49 |
(b) Plant-based meat is toxic and/or carcinogenic. | 2.54 | 1.54 |
(c) Plant-based meat has higher nutritional values. | 3.67 | 1.67 |
(d) Plant-based meat contains more additives. | 4.14 | 1.71 |
(e) Plant-based meat helps reduce CO2 emissions and mitigate climate change. | 4.59 | 1.79 |
(f) The long-term impacts of plant-based meat consumption on the environment and human health are uncontrollable. | 3.49 | 1.73 |
(g) I would rather avoid bad eating habits than choose plant-based meat foods. | 3.33 | 1.92 |
B. Knowledge about plant-based meat | % Correct answers | |
(a) At present, the raw materials of plant-based meat mainly include soybeans, wheat, and peas. (True) | 75.29% | |
(b) Vegetarian chicken is a plant-based meat product. (False) a | 12.36% | |
(c) The research and development of plant-based meat-related products is prohibited in China. (False) | 58.37% | |
(d) Some brands of burgers have started using plant-based meat products. (True) | 53.04% | |
(e) Currently, there are plant-based meat dumplings, plant-based meat sausages, plant-based meatballs, and other products on the market. (True) | 62.93% |
Model 1 | Model 2 | |||||||
---|---|---|---|---|---|---|---|---|
Mean of Parameter | SD of Parameter | Mean of Parameter | SD of Parameter | |||||
Attribute: meat patty | ||||||||
Plant-based meat | −0.303 *** | (0.093) | 1.829 *** | (0.098) | −0.606 *** | (0.187) | 1.832 *** | (0.098) |
Attribute: flavor | ||||||||
Pork flavor | −0.381 *** | (0.069) | 0.909 *** | (0.084) | −0.261 * | (0.145) | 0.927 *** | (0.085) |
Beef flavor | 0.237 *** | (0.072) | 1.144 *** | (0.076) | 0.422 *** | (0.146) | 1.158 *** | (0.077) |
(Reference category: Chicken flavor) | ||||||||
Attribute: sodium content | ||||||||
Sodium_100_mg | 0.341 *** | (0.069) | 0.844 *** | (0.073) | 0.200 | (0.142) | 0.831 *** | (0.073) |
Sodium_250_mg | 0.209 *** | (0.066) | 0.564 *** | (0.095) | 0.148 | (0.134) | 0.579 *** | (0.094) |
Sodium_400_mg | 0.106 | (0.067) | 0.365 *** | (0.126) | −0.137 | (0.139) | 0.341 *** | (0.128) |
(Reference category: Sodium_550_mg) | ||||||||
Attribute: energy | ||||||||
Cal_250_kcal | 0.292 *** | (0.067) | 0.738 *** | (0.069) | 0.425 *** | (0.152) | 0.744 *** | (0.069) |
Cal_350_kcal | 0.069 | (0.059) | 0.022 | (0.174) | 0.059 | (0.136) | 0.048 | (0.169) |
Cal_450_kcal | −0.032 | (0.060) | 0.003 | (0.287) | 0.025 | (0.116) | 0.030 | (0.272) |
(Reference category: Cal_550_kcal) | ||||||||
Interactions between attributes and information treatments (statistically significant terms only) | ||||||||
Plant-based meat × Nutrition information | 0.574 ** | (0.264) | ||||||
Beef flavor × Food safety information | −0.573 *** | (0.209) | ||||||
Sodium_100_mg × Nutrition information | 0.488 ** | (0.195) | ||||||
Sodium_400_mg × Environmental information | 0.392 ** | (0.199) | ||||||
Sodium_400_mg × Nutrition information | 0.518 *** | (0.193) | ||||||
Price | −0.047 *** | (0.002) | −0.047 *** | (0.002) | ||||
Alternative specific constant | −2.018 *** | (0.097) | −2.018 *** | (0.104) | ||||
Log-likelihood | −5588.500 | −5567.021 | ||||||
AIC | 11,217.0 | 11,228.0 | ||||||
McFadden R2 | 0.175 | 0.178 | ||||||
Number of observations | 4208 | 4208 |
(1) Full Sample | (2) Control Group | (3) Nutrition Information Group | (4) Food Safety Information Group | (5) Environmental Information Group | |
---|---|---|---|---|---|
Attribute: meat patty | |||||
Plant-based Meat | −6.15 [−9.03, −3.26] | −8.84 [−14.71, −2.96] | −2.11 [−8.24, 4.03] | −6.42 [−12.21, −0.64] | −7.20 [−12.50, −1.90] |
Attribute: flavor | |||||
Pork flavor | −8.15 [−9.18, −7.11] | −7.93 [−10.05, −5.80] | −8.62 [−10.80, −6.45] | −8.50 [−10.41, −6.60] | −7.53 [−9.61, −5.45] |
Beef flavor | 5.27 [3.76, 6.77] | 7.71 [4.66, 10.76] | 4.19 [1.37, 7.02] | 1.76 [−1.02, 4.53] | 7.41 [4.19, 10.63] |
Attribute: sodium content | |||||
Sodium_100_mg | 7.63 [6.64, 8.61] | 7.32 [5.48, 9.16] | 9.52 [7.40, 11.63] | 7.86 [6.05, 9.66] | 5.82 [3.74, 7.91] |
Sodium_250_mg | 4.39 [3.91, 4.86] | 4.94 [4.05, 5.83] | 4.01 [3.05, 4.96] | 4.48 [3.42, 5.55] | 4.11 [3.18, 5.04] |
Sodium_400_mg | 2.40 [2.17, 2.63] | 2.08 [1.68, 2.48] | 2.56 [2.00, 3.04] | 2.13 [1.69, 2.57] | 2.82 [2.32, 3.31] |
Attribute: energy | |||||
Cal_250_kcal | 6.35 [5.53, 7.17] | 6.66 [4.98, 8.34] | 6.75 [5.06, 8.44] | 5.71 [4.22, 7.20] | 6.30 [4.57, 8.03] |
Cal_350_kcal | 1.47 [1.46, 1.47] | 1.47 [1.45, 1.48] | 1.47 [1.45, 1.48] | 1.47 [1.46, 1.48] | 1.46 [1.45, 1.48] |
Cal_450_kcal | −0.67 [−0.67, −0.67] | −0.67 [−0.68, −0.67] | −0.67 [−0.67, −0.67] | −0.67 [−0.67, −0.67] | −0.67 [−0.68, −0.67] |
N | 526 | 131 | 131 | 132 | 132 |
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Wang, H.; Chen, Q.; Zhu, C.; Bao, J. Paying for the Greater Good?—What Information Matters for Beijing Consumers’ Willingness to Pay for Plant-Based Meat? Foods 2022, 11, 2460. https://doi.org/10.3390/foods11162460
Wang H, Chen Q, Zhu C, Bao J. Paying for the Greater Good?—What Information Matters for Beijing Consumers’ Willingness to Pay for Plant-Based Meat? Foods. 2022; 11(16):2460. https://doi.org/10.3390/foods11162460
Chicago/Turabian StyleWang, Hongsha, Qihui Chen, Chen Zhu, and Jiale Bao. 2022. "Paying for the Greater Good?—What Information Matters for Beijing Consumers’ Willingness to Pay for Plant-Based Meat?" Foods 11, no. 16: 2460. https://doi.org/10.3390/foods11162460
APA StyleWang, H., Chen, Q., Zhu, C., & Bao, J. (2022). Paying for the Greater Good?—What Information Matters for Beijing Consumers’ Willingness to Pay for Plant-Based Meat? Foods, 11(16), 2460. https://doi.org/10.3390/foods11162460