| Literature DB >> 34928989 |
Noah Castelo1, Adrian F Ward2.
Abstract
Artificial intelligence (AI) has the potential to revolutionize society by automating tasks as diverse as driving cars, diagnosing diseases, and providing legal advice. The degree to which AI can improve outcomes in these and other domains depends on how comfortable people are trusting AI for these tasks, which in turn depends on lay perceptions of AI. The present research examines how these critical lay perceptions may vary as a function of conservatism. Using five survey experiments, we find that political conservatism is associated with low comfort with and trust in AI-i.e., with AI aversion. This relationship between conservatism and AI aversion is explained by the link between conservatism and risk perception; more conservative individuals perceive AI as being riskier and are therefore more averse to its adoption. Finally, we test whether a moral reframing intervention can reduce AI aversion among conservatives.Entities:
Mesh:
Year: 2021 PMID: 34928989 PMCID: PMC8687590 DOI: 10.1371/journal.pone.0261467
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1A conceptual model of Conservatism’s effects on AI aversion.
Direct and indirect effects of social conservatism on perceived risk of and comfort with AI (standardized β coefficients).
| Effect | Risk | Total | Comfort | |
|---|---|---|---|---|
| Direct | Indirect | |||
| Path |
|
|
| |
| Medical Diagnosis | .13 | -.12 | -.04 | -.67 |
| Driverless Cars | .21 | -.20 | 0.03 | -.76 |
| In General | .06 | -.14 | -.09 | -.58 |
Note: Age, gender, education, and income are included as covariates in the mediation models reported above.
† = p < .10
* = p < .05
** = p < .01.
Conservatism-Only and Conservatism + Demographics Models of Comfort with AI, Study 1.
| Model | Conservatism Only | Conservatism + Demographics | ||||
|---|---|---|---|---|---|---|
| Domain | Medical Diagnoses | Self -Driving Cars | General | Medical Diagnoses | Self-Driving Cars | General |
| Conservatism | -.12 (.05) | -.20 (.05) | -.14 (.04) | -.13 (.05) | -.19 (.05) | -.15 (.05) |
|
| ||||||
| High school | 17.13 (17.10) | 28.66 (17.49) | 34.76 (15.21) | |||
| Some college | 11.82 (18.82) | 30.53 (17.19) | 31.24 (14.95) | |||
| 2-year college | 17.96 (17.05) | 36.05 (17.43) | 38.89 (15.16) | |||
| 4-year college | 15.52 (16.75) | 32.47 (17.13) | 36.45 (14.89) | |||
| Graduate degree | 18.07 (17.27) | 33.10 (17.66) | 37.54 (15.35) | |||
| Income | -.01 (.91) | .69 (.93) | -0.53 (.81) | |||
| Age | .08 (.14) | -.23 (.14) | 0.04 (.12) | |||
| Female | -9.83 (2.97) | -10.68 (3.03) | -10.03 (2.63) | |||
| Intercept | 40.43 (3.42) | 34.51 (3.56) | 44.47 (3.09) | 36.24 (18.16) | 24.15 (18.62) | 24.38 (16.17) |
|
| .01 | .04 | .02 | .05 | .09 | .07 |
Gender (“Female”) is dummy coded with “Male” as the reference group.
Education is a dummy coded variable with “less than high school” as the reference group.
† = p < .10
* = p < .05
** = p < .01.
Conservatism-Only and Conservatism + Demographics Models of Perceived Risk of AI, Study 1.
| Model | Conservatism Only | Conservatism + Demographics | ||||
|---|---|---|---|---|---|---|
| Domain | Medical Diagnoses | Self -Driving Cars | General | Medical Diagnoses | Self-Driving Cars | General |
| Social Conservatism | .13 (.04) | .23 (.05) | .05 (.05) | .14 (.05) | .22 (.05) | .08 (.05) |
|
| ||||||
| High school | -12.47 (15.52) | -21.22 (15.91) | -25.17 (14.98) | |||
| Some college | -17.13 (15.26) | -30.32 (15.64) | -28.96 (14.72) | |||
| 2-year college | -16.77 (15.48) | -33.80 (15.86) | -31.65 (14.93) | |||
| 4-year college | -16.27 (15.20) | -28.72 (15.59) | -27.25 (14.67) | |||
| Graduate degree | -16.47 (15.67) | -32.51 (16.06) | -25.97 (15.12) | |||
| Income | -.01 (.91) | -0.46 (.85) | -0.81 (.80) | |||
| Age | -0.10 (.12) | 0.12 (.13) | -0.19 (.12) | |||
| Female | 10.97 (2.69) | 10.00 (2.75) | 7.24 (2.59) | |||
| Intercept | 67.28 (3.11) | 72.79 (3.22) | 62.12 (2.99) | 72.30 (16.48) | 82.25 (16.89) | 91.01 (15.90) |
|
| .02 | .05 | .001 | .07 | .11 | .04 |
Gender (“Female”) is dummy coded with “Male” as the reference group.
Education variables are dummy coded with “less than high school” as the reference group.
† = p < .10
* = p < .05
** = p < .01.
Fig 2Mediation model and standardized coefficients, Study 1.
Tasks used in Study 2.
| Diagnose Disease (39) | Rec. Disease Treatment (38) | Fly Plane (35) |
| Hire & Fire Employees (28) | Drive Car (26) | Drive Subway (25) |
| Drive Truck (24) | Predict Recidivism (23) | Buy Stocks (22) |
| Analyze Data (21) | Predict Stock Market (20) | Rec. Marketing Strategy (18) |
| Pred. Employee Success (17) | Give Directions (15) | Rec. Romantic Partners (14) |
| Predict Weather (9) | Write News Story (8) | Schedule Events (7) |
| Predict Elections (6) | Predict Student Success (6) | Rec Gift (2) |
| Write Song (-13) | Recommend Restaurant (-14) | Recommend Movies (-17) |
| Recommend Music (-18) | Play Piano (-18) | Evaluate Jokes (-24) |
Note: Numbers in parentheses are the tasks’ consequentialness ratings.
Rec. = Recommend; Pred. = Predict.
Fig 3The effect of conservatism on trust in AI is significant for consequential but not inconsequential tasks.
Fig 4Fairness-based arguments persuade liberals more than purity-based arguments.