A Consumer Segmentation Study of Nutrition Information Seeking and Its Relation to Food Consumption in Beijing, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Collection
2.2. Questionnaire Design
- Interest in healthy eating: Three statements were used to evaluate the participants’ interest in healthy eating using a 5-point scale ranging from disagreement to absolute agreement. The first statement was “I believe that healthy eating is important”, the second was “I expect to know a lot about nutrition information and recommendations on a healthy diet”, and the third was “I think that if I am properly informed about the nutrition information, I could apply it to my diet” [20]. The internal reliability of the interest in healthy eating scale is also excellent, with Cronbach’s α = 0.865, n = 3.
- Nutrition knowledge: Nutrition knowledge can take two general forms: knowledge of principles and knowledge of a food’s specific nutrient content [41]. Knowledge of principles was measured using two components drawn from the Chinese Dietary Guidelines. The first component measured the participants’ awareness of a dietitian’s recommendations about vegetables and fruits, grains, fish/poultry, milk and soybean products, oil, fried food, and salty food. For these seven items, participants stated whether or not the recommendations told them to have more or less of the food. The second component contained seven statements about dietary habits and their health implications. Such statements about healthy eating patterns were generally poorly understood by the Chinese public. We asked participants to determine if they agreed or disagreed with these statements. We assumed that people with better knowledge of nutrition would be more likely to provide the right answers. For this portion of the questionnaire, correct answers received a score of one, and wrong answers received a score of 0. The total possible score for this section was 14. Specific nutrition knowledge was measured by six questions to determine how much the consumers knew about protein, cholesterol, Vitamin C, fats, and salt. Participants were asked to choose the main sources of high-quality protein and Vitamin C and to determine which food had the most cholesterol or fat. Since the excessive use of salt is an important dietary problem in China [42], we also assessed the consumers’ knowledge of the maximum amount of salt in their diets. The maximum possible score for this section was 7. As such, the total possible score for all of the questions related to nutrition knowledge was 21. Cronbach’s α = 0.511, n = 20.
- Diet-health consciousness: To measure general diet-health consciousness, one statement was used to evaluate the participants’ awareness of a healthy diet using a 5-point scale ranging from disagreement to absolute agreement with the following statement: “I think food and nutrition play an important role in maintaining health”. To measure specific diet-health consciousness, four unhealthy eating habits were included, such as excessive cholesterol intake, excessive sugar intake, excessive fat intake, and not consuming enough dietary fiber. Participants were asked to judge whether or not these habits might lead to health problems. Correct answers were given a score of 1, and wrong answers or answers where the participant stated that they did not know were given a score of 0. A total score of 9 was possible for this section. Cronbach’s α = 0.512, n = 4.
2.3. Data Analysis
3. Results
3.1. Characteristics of Nutrition Information-Seeking and Segmentation Analysis
3.2. Differences in Segments’ Food Literacy
3.3. Differences in Segments’ Attitudes to Food Attributes and Food Consumption Frequency
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Characteristics | Categories | Study Sample | Resident Population |
---|---|---|---|
Gender | Women | 52.1 | 50.0 |
Men | 47.9 | 50.0 | |
Age | 18–20 | 0.5 | |
21–30 | 20.7 | 20.6 | |
31–40 | 24.9 | 19.6 | |
41–50 | 21.5 | 16.0 | |
51–60 | 14.4 | 14.8 | |
61–70 | 12.7 | 9.1 | |
70 and more | 5.3 | 6.5 | |
Education | middle school | 12.3 | 34.3 |
high school | 15.7 | 21.2 | |
technical school | 17.8 | ||
bachelor degree | 38.8 | 37.5 | |
graduate degree | 15.9 | ||
Monthly household income | Less than 5000 | 12.3 | |
5000–10,000 | 40.4 | ||
10,000–18,000 | 27.2 | ||
18,000–30,000 | 12.3 | ||
30,000 and more | 7.8 |
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Segments | Multi-Channel Seekers (n = 124) | Mass-Media Seekers (n = 93) | Moderate Seekers (n = 126) | Uninterested Seekers (n = 109) | Total Sample (n = 452) | F(3448) | |||||
---|---|---|---|---|---|---|---|---|---|---|---|
Mean | SD | Mean | SD | Mean | SD | Mean | SD | Mean | SD | ||
internet | 3.47 b | 1.108 | 3.88 a | 0.832 | 3.91 a | 1.004 | 1.96 c | 0.838 | 3.31 | 1.240 | 99.30 *** |
TV shows | 3.89 a | 0.876 | 3.53 ab | 1.089 | 2.74 c | 0.965 | 3.37 b | 1.086 | 3.37 | 1.087 | 28.63 *** |
newspapers and radios | 3.69 a | 0.932 | 3.28 b | 0.852 | 2.14 d | 0.846 | 2.42 c | 0.955 | 2.87 | 1.102 | 77.07 *** |
government campaign | 3.21 a | 0.819 | 2.15 b | 0.722 | 1.76 c | 0.650 | 1.75 c | 0.596 | 2.24 | 0.934 | 115.94 *** |
dietitians | 2.75 a | 0.934 | 1.78 b | 0.705 | 1.63 bc | 0.678 | 1.53 c | 0.554 | 1.94 | 0.890 | 69.94 *** |
relatives and friends | 3.45 a | 0.896 | 3.53 a | 0.892 | 2.98 b | 0.925 | 2.72 c | 1.035 | 3.16 | 0.991 | 18.15 *** |
food labels | 3.99 a | 0.924 | 2.44 c | 0.800 | 3.78 b | 0.725 | 2.06 d | 0.831 | 3.15 | 1.170 | 153.54 *** |
Variables | Multi-Channel Seekers (n = 116) | Mass-Media Seekers (n = 91) | Moderate Seekers (n = 124) | Uninterested Seekers (n = 107) | Total Sample (n = 438) | F(3434) |
---|---|---|---|---|---|---|
M(SD)/% | M(SD)/% | M(SD)/% | M(SD)/% | M(SD)/% | ||
Interest in healthy eating | 13.67 a (1.928) | 12.54 bc (1.951) | 12.76 b (2.101) | 11.85 c (2.708) | 12.73 (2.284) | 13.10 *** |
Nutrition knowledge | 15.16 (2.560) | 14.80 (2.320) | 15.09 (2.505) | 14.50 (2.889) | 14.90 (2.588) | 1.54 |
Diet-health consciousness | 8.16 ab (1.087) | 8.09 ab (1.061) | 8.21 a (0.998) | 7.74 b (1.462) | 8.06 (1.173) | 3.74 ** |
Variables | Multi-Channel Seekers (n = 116) | Mass-Media Seekers (n = 91) | Moderate Seekers (n = 124) | Uninterested Seekers (n = 107) | Total Sample (n = 438) | F(3434) |
---|---|---|---|---|---|---|
M(SD)/% | M(SD)/% | M(SD)/% | M(SD)/% | M(SD)/% | ||
gender (%) | 0.27 | |||||
male | 46.55 | 48.35 | 45.97 | 51.40 | 47.95 | |
female | 53.45 | 51.65 | 54.03 | 48.60 | 52.05 | |
age (years) | 44.72 b (12.136) | 44.45 b (16.121) | 37.43 c (11.116) | 54.06 a (15.912) | 44.88 (14.997) | 27.96 *** |
age (category%) | 26.37 ** | |||||
age 18–30 | 12.09 | 25.27 | 34.68 | 12.15 | 21.23 | |
age 31–40 | 27.59 | 25.27 | 33.06 | 12.15 | 24.89 | |
age 41–50 | 32.76 | 17.58 | 20.97 | 13.08 | 21.46 | |
age 51–60 | 16.38 | 8.79 | 7.26 | 25.23 | 14.38 | |
age_60 above | 11.21 | 23.08 | 4.03 | 37.38 | 18.04 | |
education (years) | 15.18 ab (2.283) | 14.60 b (2.691) | 15.64 a (2.427) | 12.79 c (3.397) | 14.61 (2.918) | 23.58 *** |
education (category%) | 23.00 *** | |||||
middle school | 6.90 | 8.79 | 4.84 | 29.91 | 12.33 | |
high school | 9.48 | 19.78 | 9.68 | 23.36 | 15.07 | |
technical school | 28.45 | 12.09 | 13.71 | 15.89 | 17.81 | |
bachelor | 38.79 | 49.45 | 44.35 | 23.36 | 38.81 | |
graduate | 16.38 | 9.89 | 27.42 | 7.48 | 15.98 | |
special diet (%) | 52.59 a | 32.97 b | 39.52 ab | 36.45 ab | 40.87 | 3.35 ** |
nutrition-related background (%) | 10.34 a | 8.79 ab | 4.84 ab | 1.87 b | 6.39 | 2.71 ** |
food buying frequency | 4.04 (0.879) | 3.74 (0.917) | 3.79 (0.965) | 3.71 (1.108) | 3.83 (0.977) | 2.76 ** |
family size | 3.56 a (1.066) | 3.09 b (1.161) | 3.39 ab (1.187) | 3.15 b (1.235) | 3.31 (1.174) | 3.76 *** |
monthly household income (category%) | 2.51 b | 2.67 ab | 2.89 a | 2.42 b | 2.63 | 4.20 *** |
income under 5000 | 15.52 | 8.79 | 5.65 | 19.63 | 12.33 | |
income 5000–10,000 | 41.38 | 42.86 | 35.48 | 42.99 | 40.41 | |
income 10,001–18,000 | 25.86 | 28.57 | 33.06 | 20.56 | 27.17 | |
income 18,001–30,000 | 11.21 | 12.09 | 16.13 | 9.35 | 12.33 | |
income 30,000 above | 6.03 | 7.69 | 9.68 | 7.48 | 7.76 |
Variables | Multi-Channel Seekers (n = 114) | Mass-Media Seekers (n = 88) | Moderate Seekers (n = 118) | Uninterested Seekers (n = 98) | Total Sample (n = 418) | F(3414) |
---|---|---|---|---|---|---|
M(SD)/% | M(SD)/% | M(SD)/% | M(SD)/% | M(SD)/% | ||
Attitudes to food attributes (%) | ||||||
nutrition | 85.09 a | 75.00 ab | 82.20 a | 62.24 c | 76.79 | 6.26 *** |
price | 36.84 ab | 53.41 a | 34.75 b | 44.90 ab | 41.63 | 2.98 ** |
taste | 34.21 | 38.64 | 47.46 | 45.92 | 41.63 | 1.77 |
convenience | 5.26 | 14.77 | 7.63 | 12.24 | 9.57 | 2.19 * |
eating healthier | 4.31(0.863) a | 3.90(0.910) bc | 3.98(0.762) b | 3.59(1.044) c | 3.96(0.926) | 11.47 *** |
Food consumption frequency | ||||||
vegetable | 30.59(12.852) ab | 32.85(12.484) a | 29.10(13.879) b | 30.63(13.137) ab | 30.66(13.159) | 1.37 |
fruit | 11.63(9.596) b | 11.60(8.848) ab | 13.19(10.493) a | 8.27(6.340) ac | 11.28(9.205) | 5.44 *** |
fish/poultry | 2.40(2.676) | 3.71(15.006) | 1.91(1.973) | 2.01(1.905) | 2.45(7.164) | 1.26 |
milk/dairy product | 5.26 (3.935) ab | 6.01 (3.740) a | 5.49 (3.781) ab | 4.47 (3.662) b | 5.36(3.799) | 1.82 |
fast food | 0.24(0.499) | 0.40(1.583) | 0.50(1.028) | 0.42(1.164) | 0.39(1.101) | 1.08 |
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Wang, Y.; Wang, J.; Shen, Q. A Consumer Segmentation Study of Nutrition Information Seeking and Its Relation to Food Consumption in Beijing, China. Foods 2022, 11, 453. https://doi.org/10.3390/foods11030453
Wang Y, Wang J, Shen Q. A Consumer Segmentation Study of Nutrition Information Seeking and Its Relation to Food Consumption in Beijing, China. Foods. 2022; 11(3):453. https://doi.org/10.3390/foods11030453
Chicago/Turabian StyleWang, Yin, Jiayou Wang, and Qiong Shen. 2022. "A Consumer Segmentation Study of Nutrition Information Seeking and Its Relation to Food Consumption in Beijing, China" Foods 11, no. 3: 453. https://doi.org/10.3390/foods11030453
APA StyleWang, Y., Wang, J., & Shen, Q. (2022). A Consumer Segmentation Study of Nutrition Information Seeking and Its Relation to Food Consumption in Beijing, China. Foods, 11(3), 453. https://doi.org/10.3390/foods11030453