Genetically modified
What Demographic and Psychological Factors Predict GM Policy Support and Purchasing
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What Demographic and Psychological Factors Predict GM Policy Support and Purchasing Behavior? Multiple regression models predicting policy support I next conducted a series of multiple linear regression models in order to explain variation among the six policy preference variables described in the previous section. The objective of these analyses was to explore the relative importance of the knowledge, perceived risk, trust, and demographic variables described above in the extent to which they predict support for policies surrounding GM foods. Across all of the following regression analyses I examined correlations among my predictor variables in order to check for multi-collinearity; the correlations were below thresholds for concern. Table 7 displays the results of a series of multiple linear regression models Does not avoid Little effort Moderate effort Strong effort Policy Mean 95% CI Mean 95% CI Mean 95% CI Mean 95% CI 1 3.87 3.69-4.05 4.63 4.47-4.78 4.65 4.39-4.92 4.65 4.21-5.10 2 3.53 3.33-3.74 4.48 4.30-4.67 4.57 4.29-4.85 4.65 4.21-5.10 3 4.21 4.05-4.34 3.16 2.92-3.40 2.55 2.24-2.86 1.87 1.45-2.29 4 3.92 3.72-4.11 3.05 2.80-3.30 2.12 1.83-2.42 1.70 1.18-2.21 5 4.08 3.93-4.24 2.82 2.60-3.04 1.84 1.61-2.06 1.35 1.10-1.60 6 2.04 1.82-2.25 2.65 2.38-2.91 3.61 3.25-3.97 4.26 3.77-4.75 25 predicting each of the six policy support measures, with the most supported policies on the left and the least supported policies on the right. All predictor variables were standardized such that a one- unit increase corresponds to a one standard deviation increase in that variable. As a result, the Constant value for each model is the average level of support for that policy, in addition to being the y-intercept. “Risk” is an index of risk perceptions across five questions; raw scores were divided by the length of the scale (5 or 7) and then added together; higher values indicate higher risk perceptions. The variables “Genetics”, “Regulation”, and “Self-assessed” refer to those types of knowledge. “Genetics” is a composite of Qs 4 and 5 and “Regulation” is a composite of Qs. 2 and 3 (shown below in Table 8); respondents either answered zero, one, or two of these questions correctly. “Ideology” is a composite of respondents’ political ideology across fiscal and social issues; higher values indicate more liberal views on social and fiscal issues. Coefficients are reported for statistically significant and statistically suggestive (p < 0.10) results. 26 Table 7. Results of Multiple Linear Regression Models Predicting Support for Different Policies (1) (2) (3) (4) (5) (6) Label Mutagenesis Label GM foods Grow in Dev. World Gov’t Funding Grow in the US Ban GM foods Variable Risk 0.29** 0.39** -1.03** -0.91** -1.15** 0.81** (.000) (.000) (.000) (.000) (.000) (.000) Genetics -0.19** -0.22** 0.14* 0.12** (.002) (.001) (.039) (.006) Regulation -0.12^ -0.09* (.066) (.036) Self-assessed -0.19** -0.22** (.004) (.002) Importance 0.15* 0.19* (.046) (.019) Liberal ideology 0.14* (.028) T/F Q1 Education Income Age Constant 4.26** 4.04** 3.46** 3.19** 3.14** 2.67** Observations 267 267 267 267 267 267 R-squared 0.23 0.28 0.60 0.46 0.77 0.39 Notes. Standardized regression coefficients are reported with their associated p values in parentheses. ^p < .10, *p < .05 **p < .01 Table 8. True/False questions asked to respondents 1. GM foods are sprayed with more pesticides than crops grown conventionally 2. Foods that have been genetically modified can be labeled as USDA Organic 3. Foods that have been created through mutation breeding can be labeled Organic 4. All fresh produce contains genes that have been altered by humans 5. Genetic modification of food crops alters fewer genes than conventional breeding In general, no sociodemographic information reliably predicted support for any of the policies, controlling for the other variables. Over and above sociodemographic information, 27 perceived and actual knowledge personal importance of GMs, and risk perceptions reliably predicted support or opposition to all six policies, and all estimates are highly significant. For growing GM foods in the developing world (3) and banning GM foods (6) risk perceptions was the only variable that predicted support, over and above other measured constructs. A one standard deviation increase in risk perceptions corresponds to a one-unit decrease in support of growing GM foods in the developing world and four-fifths of a unit increase in banning the growth of GM foods in the US. The models predicting support for labeling of GM foods (2) and mutagenesis (1) performed very similarly to one another. Higher risk perceptions predicted more support for labeling and the effect was slightly larger for GM foods (adjusted r-square = 0.39 for GM vs 0.29 for mutagenesis). A lower knowledge of genetics predicted more support for both labeling policies, as did lower self-assessed knowledge. This suggests that those with more knowledge of genetics want labeling less, over and above how much they think they know about GM foods. Additionally, it suggests that those who think they know more about GM foods are also less supportive of labeling, regardless of how much they actually know. Finally, perceiving the issue of GM foods to be more important predicted higher support for labeling in general, and the effect was again slightly higher for GM foods than for mutagenesis (0.19 vs. 0.15). Given that, on average, it appears that respondents guessed on the mutation breeding question (3) it is plausible that respondents answered questions about mutagenesis similarly to questions about GM foods and, therefore, the models behaved similarly. Three variables other than risk perceptions predicted support towards government funding of GM foods. Higher levels of genetics knowledge was associated with increasing support for government funding. In addition, a more liberal political ideology predicted support for 28 government funding, controlling for all other variables. This finding is perhaps unsurprising given that liberals are viewed as more willing to support government funding in general. Finally, higher levels of knowledge of GM regulation was associated with lower levels of support for government funding, though the result is not statistically significant at the p < .05 threshold. Two of the same variables that predicted support for government funding also predicted support for growing GM crops in the United States. Again, higher levels of genetics knowledge were associated with increasing support for growing these crops and higher levels of knowledge of GM regulation predicted lower levels of support for this policy. This could be explained if having more knowledge of regulation was associated with restrictions to GM foods in general; however, it doesn’t have that association nor does more knowledge of regulation predict avoidance of GM foods, as described below. Download 0.61 Mb. Do'stlaringiz bilan baham: |
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