Stakeholder’s Risk Perceptions of Wild Pigs: Is There a Gender Difference?
Abstract
1. Introduction
2. Materials and Methods
Measurement
3. Results
Response Rate and Sample Characteristics
4. Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
Appendix A
Description | Men n = 827 | Women n = 225 | Test for Gender Differences |
---|---|---|---|
Landlord | 33.01% | 54.22% | 3) = 41.8563 |
Tenant Farmer | 8.59% | 1.33% | p = 0.000 |
Owner/Operator | 54.90% | 43.11% | |
Land Manager | 3.51% | 1.33% |
Description | Men | Women | Test for Gender Differences |
---|---|---|---|
Hogs currently present | n = 822 | n = 226 | |
No | 52.07% | 65.49% | 2) = 36.6238 |
Yes | 37.96% | 17.26% | p = 0.000 |
Unsure | 9.98% | 17.26% | |
Past presence | n = 787 | n = 222 | |
No | 59.21% | 60.36% | (2) = 33.1789 |
Yes | 28.97% | 14.86% | p = 0.000 |
Unsure | 11.82% | 14.67% | |
Hog damage | n = 820 | n = 223 | |
No | 48.66% | 64.13% | (2) = 63.8351 |
Yes | 45.24% | 18.83% | p = 0.000 |
Unsure | 6.10% | 17.04% | |
Hog damage past 3 years | n = 631 | n = 135 | |
Declined | 17.91% | 19.26% | (2) = 10.8166 |
The same | 50.40% | 62.96% | p = 0.004 |
Increased | 31.70% | 17.78% | |
Loss in land/lease value | n = 619 | n = 128 | |
No | 60.42% | 70.31% | (2) = 15.5517 |
Yes | 23.10% | 7.81% | p = 0.000 |
Unsure | 16.48% | 21.88% | |
Number of hogs past 3 years | n = 605 | n = 109 | |
Declined | 17.52% | 17.43% | 2) = 11.8973 |
The same | 41.49% | 57.80% | p = 0.003 |
Increased | 40.99% | 24.77% |
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Production Activities | Interfere with farming operations |
Take time away from activities that would be spent in managing farm operations | |
Have caused damage to my crops in the past year | |
Reduce production of agricultural crops | |
Health and Safety | Have made me concerned for the safety for myself or a family member |
Have made me concerned for the safety of my pets | |
Have injured myself or a family member | |
Disease Transmission | Transmit diseases harmful to humans |
Transmit diseases harmful to wildlife | |
Transmit diseases harmful to farm animals | |
Resources | Negatively impact wildlife |
Negatively impact air quality | |
Negatively impact soil quality | |
Negatively impact water quality | |
Management | Are being properly managed by STATE wildlife officials |
Are being properly managed by FEDERAL wildlife officials |
Description | Male Respondents | Female Respondents | Test for Gender Differences |
---|---|---|---|
Age | n = 817 | n = 224 | 5) = 62.2112 |
25–34 | 1.35 | 0.00 | p = 0.000 |
35–44 | 4.77 | 2.23 | |
45–54 | 12.85 | 3.57 | |
55–64 | 27.29 | 13.84 | |
65–74 | 27.78 | 32.14 | |
75 and older | 25.95 | 48.21 | |
Race | n = 812 | n = 220 | 5) = 2.0341 |
White | 94.70 | 95.91 | p = 0.844 |
Hispanic | 0.25 | 0.45 | |
Asian or Pacific Islander | 0.37 | 0.00 | |
Native American | 0.99 | 0.45 | |
African American | 2.83 | 2.73 | |
Other | 0.86 | 0.45 | |
Annual household income | n = 647 | n = 172 | 7) = 79.7726 |
Less than $20,000 | 6.96 | 27.33 | p = 0.000 |
$20,000–$39,999 | 12.52 | 20.35 | |
$40,000–$59,999 | 14.99 | 14.53 | |
$60,000–$79,999 | 15.61 | 10.47 | |
$80,000–$99,999 | 10.51 | 8.72 | |
$100,000–$124,999 | 10.97 | 9.30 | |
$125,000–$150,000 | 7.88 | 2.91 | |
Great than $150,000 | 20.56 | 6.40 | |
Highest level of education | n = 820 | n = 220 | 4) = 12.6971 |
Some high school or less | 4.39 | 8.18 | p = 0.013 |
High school graduate | 32.32 | 36.36 | |
Some college | 25.12 | 23.64 | |
College graduate | 25.85 | 16.82 | |
Graduate degree | 12.32 | 15.00 | |
Farm size | n = 823 | n = 223 | 8) = 62.6700 |
1–29 acres | 10.81 | 23.32 | p = 0.000 |
30–79 acres | 17.62 | 26.46 | |
80–139 acres | 12.88 | 17.49 | |
140–249 acres | 13.37 | 13.45 | |
250–349 acres | 8.38 | 5.38 | |
350–499 acres | 5.95 | 3.59 | |
500–699 acres | 6.32 | 2.69 | |
700–999 acres | 6.20 | 2.69 | |
1000 or more acres | 18.47 | 4.93 | |
Number of years in farming | n = 816 | n = 220 | 5) = 18.3457 |
0–9 years | 5.39 | 5.45 | p = 0.003 |
10–19 years | 16.42 | 13.64 | |
20–29 years | 15.69 | 20.91 | |
30–39 years | 20.10 | 14.55 | |
40–49 years | 18.87 | 11.82 | |
50 or more years | 23.53 | 33.64 |
Description | Male Respondents n = 681 | Female Respondents n = 162 | Test on Gender Differences |
---|---|---|---|
Extremely Negative (1) | 55.65% | 48.77% | 1.0629 |
Somewhat Negative (2) | 21.44% | 16.05% | p = 0.026 |
Neutral (3) | 16.59% | 26.54% | |
Somewhat Positive (4) | 3.23% | 4.32% | |
Extremely Positive (5) | 3.08% | 4.32% |
Moderators | Degrees of Freedom | Sum Sq. | Mean Sq. | F Value | Pr (>F) |
---|---|---|---|---|---|
Gender | 1 | 6.6 | 6.557 | 6.247 | 0.01250 * |
Education | 1 | 9.0 | 8.956 | 8.569 | 0.00354 ** |
Race/Ethnicity | 1 | 17.4 | 17.395 | 16.642 | 5.09 × 10−5 *** |
Income | 1 | 7.5 | 7.461 | 7.138 | 0.00744 ** |
Ownership Status | 1 | 1.9 | 1.855 | 1.775 | 0.18327 |
Age | 1 | 0.1 | 0.122 | 0.116 | 0.73315 |
Residuals | 638 | 666.9 | 1.045 |
A | ||||||
---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | ||
Strongly Disagree | Somewhat Disagree | Neither Disagree nor Agree | Somewhat Agree | Strongly Agree | Mean | |
Production Activities | ||||||
Interfere with my farming operations. n = 517 | 13.35% | 4.84% | 23.60% | 22.24% | 35.98% | 3.63 |
Take time away from activities that would be spent in managing farm operations. n = 522 | 14.94% | 4.21% | 27.20% | 25.10% | 28.54% | 3.48 |
Have caused damage to my crops in the past year. n = 526 | 20.34% | 3.61% | 20.72% | 17.68% | 37.64% | 3.48 |
Reduce production of agricultural crops. n = 554 | 4.69% | 1.44% | 11.73% | 23.29% | 58.84% | 4.30 |
Health and Safety | ||||||
Have made me concerned for the safety for myself or a family member. n = 552 | 15.40% | 9.60% | 31.70% | 24.26% | 18.84% | 3.22 |
Have made me concerned for the safety of my pets. n = 537 | 16.39% | 10.24% | 38.92% | 18.81% | 15.64% | 3.07 |
Have injured myself or a family member. n = 512 | 47.07% | 8.01% | 40.82 | 1.95% | 2.15% | 2.04 |
Disease Transmission | ||||||
Transmit diseases harmful to humans. n = 560 | 4.64% | 5.18% | 35.54% | 27.32% | 27.32% | 3.68 |
Transmit diseases harmful to wildlife. n = 562 | 4.80% | 3.91% | 32.56% | 28.11% | 30.60% | 3.76 |
Transmit disease harmful to farm animals. n = 564 | 4.79% | 4.08% | 31.91% | 29.43% | 29.79% | 3.75 |
Resources | ||||||
Negatively impact wildlife habitat. n = 564 | 7.80% | 4.08% | 13.65% | 20.74% | 53.72% | 4.08 |
Negatively impact air quality. n = 523 | 12.24% | 8.60% | 47.80% | 17.59% | 13.77% | 3.12 |
Negatively impacts soil quality. n = 540 | 9.63% | 5.37% | 29.26% | 26.67% | 29.07% | 3.60 |
Negatively impact water quality. n = 527 | 8.16% | 3.98% | 28.84% | 26.19% | 32.83% | 3.72 |
Management | ||||||
Are being properly managed by STATE wildlife officials. n = 574 | 39.72% | 18.47% | 28.40% | 8.71% | 4.70% | 2.20 |
Are being properly managed by FEDERAL wildlife officials. n = 571 | 42.03% | 18.04% | 29.25% | 6.30% | 4.38% | 2.13 |
B | ||||||
---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | ||
Strongly Disagree | Somewhat Disagree | Neither Disagree nor Agree | Somewhat Agree | Strongly Agree | Mean | |
Production Activities | ||||||
Interfere with my farming operations. n = 92 | 26.09% | 3.26% | 31.52% | 13.04% | 26.09% | 3.09 |
Take time away from activities that would be spent in managing farm operations. n = 95 | 28.42% | 1.05% | 34.74% | 11.58% | 24.21% | 3.02 |
Have caused damage to my crops in the past year. n = 93 | 29.03% | 9.68% | 34.41% | 7.53% | 19.35% | 2.78 |
Reduce production of agricultural crops. n = 101 | 10.89% | 2.97% | 16.83% | 18.81% | 50.50% | 3.95 |
Health and Safety | ||||||
Have made me concerned for the safety for myself or a family member. n = 99 | 19.19% | 6.06% | 34.34% | 22.22% | 18.18% | 3.14 |
Have made me concerned for the safety of my pets. n = 99 | 20.20% | 5.05% | 40.40% | 17.17% | 17.17% | 3.06 |
Have injured myself or a family member. n = 92 | 46.74% | 6.52% | 42.39% | 1.09% | 3.26% | 2.07 |
Disease Transmission | ||||||
Transmit diseases harmful to humans. n = 101 | 11.88% | 6.93% | 38.61% | 15.84% | 16.73% | 3.39 |
Transmit diseases harmful to wildlife. n = 100 | 13% | 3% | 39% | 17% | 28% | 3.44 |
Transmit disease harmful to farm animals. n = 101 | 12.87% | 3.96% | 38.61% | 18.81% | 25.74% | 3.41 |
Resources | ||||||
Negatively impact wildlife habitat. n = 103 | 13.59% | 0.97% | 18.45% | 20.39% | 46.60% | 3.85 |
Negatively impact air quality. n = 95 | 12.63% | 4.21% | 50.53% | 15.79% | 16.84% | 3.2 |
Negatively impacts soil quality. n = 102 | 14.71% | 4.90% | 29.41% | 18.63% | 32.35% | 3.49 |
Negatively impact water quality. n = 105 | 13.33% | 2.86% | 29.52% | 15.24% | 39.05% | 3.64 |
Management | ||||||
Are being properly managed by STATE wildlife officials. n = 104 | 30.77% | 13.46% | 49.04% | 3.85% | 2.88% | 2.34 |
Are being properly managed by FEDERAL wildlife officials. n = 103 | 34.95% | 12.62% | 47.57% | 1.94% | 2.91% | 2.25 |
Chi-Square p-Value | T-Test p-Value | |
---|---|---|
Production Activities | ||
Interfere with my farming operations. | 2.905 × 10−3 *** | 2.072 × 10−3 *** |
Take time away from activities that would be spent in managing farm operations. | 6.968 × 10−4 *** | 6.14 × 10−3 *** |
Have caused damage to my crops in the past year. | 1.084 × 10−5 *** | 3.47 × 10−5 *** |
Reduce production of agricultural crops. | 3.199 × 10−2 *** | 0.014 ** |
Health and Safety | ||
Have made me concerned for the safety for myself or a family member. | 0.682 | 0.601 |
Have made me concerned for the safety of my pets. | 0.494 | 0.943 |
Have injured myself or a family member. | 0.909 | 0.779 |
Disease Transmission | ||
Transmit diseases harmful to humans. | 1.164 × 10−2 *** | 0.035 ** |
Transmit diseases harmful to wildlife. | 5.063 × 10−3 *** | 0.022 ** |
Transmit disease harmful to farm animals. | 6.040 × 10−3 *** | 0.011 ** |
Resources | ||
Negatively impact wildlife habitat. | 0.0941 | 0.116 |
Negatively impact air quality. | 0.596 | 0.539 |
Negatively impacts soil quality. | 0.325 | 0.446 |
Negatively impact water quality. | 0.0841 | 0.592 |
Management | ||
Are being properly managed by STATE wildlife officials. | 1.105 × 10−3 *** | 0.209 |
Are being properly managed by FEDERAL wildlife officials. | 4.503 × 10−3 *** | 0.286 |
Description | p-Value |
---|---|
Production Activities | 5.17 × 10−4 *** |
Health and Safety | 0.807 |
Disease Transmission | 0.017 ** |
Resources | 0.449 |
Management | 0.231 |
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Bampasidou, M.; Kaller, M.D.; Tanger, S.M. Stakeholder’s Risk Perceptions of Wild Pigs: Is There a Gender Difference? Agriculture 2021, 11, 329. https://doi.org/10.3390/agriculture11040329
Bampasidou M, Kaller MD, Tanger SM. Stakeholder’s Risk Perceptions of Wild Pigs: Is There a Gender Difference? Agriculture. 2021; 11(4):329. https://doi.org/10.3390/agriculture11040329
Chicago/Turabian StyleBampasidou, Maria, Michael D. Kaller, and Shaun M. Tanger. 2021. "Stakeholder’s Risk Perceptions of Wild Pigs: Is There a Gender Difference?" Agriculture 11, no. 4: 329. https://doi.org/10.3390/agriculture11040329
APA StyleBampasidou, M., Kaller, M. D., & Tanger, S. M. (2021). Stakeholder’s Risk Perceptions of Wild Pigs: Is There a Gender Difference? Agriculture, 11(4), 329. https://doi.org/10.3390/agriculture11040329