Effect of Smartphone Dependency on Smartphone Use While Driving
Abstract
:1. Introduction
2. Survey
2.1. Demographic Characteristics
2.2. Using a Smartphone While Driving
2.3. Perceived Risk from Using a Smartphone While Driving
2.4. Smartphone Dependency
3. Statistical Analysis
3.1. Quantifying Smartphone Dependency
3.2. Effect of Demographic Factors on Smartphone Dependency and Use of Smartphones
3.3. Effect of Smartphone Dependency and the Use of Smartphones While Driving
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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(a) Demographic and Driver Characteristics | ||||||
---|---|---|---|---|---|---|
Gender | M | F | ||||
69% | 31% | |||||
Age | 20s | 30s | 40s | 50< | ||
21% | 36% | 31% | 12% | |||
Average driving time per drive | Less than 1 h | 1~3 h | More than 3 h | |||
56% | 38% | 6% | ||||
Driving frequency within 1 month (1–30 integer value) | Mean: 19.5 SD: 8.3 | |||||
Experience of traffic enforcement (Most recent year) | Yes | No | ||||
82% | 18% | |||||
Experience of a traffic accident (Most recent 3 years) | Yes | No | ||||
74% | 26% | |||||
(b) Experience of smartphone use | ||||||
Have experience in talking on hand-held smartphone (Most recent 10 drives) | Yes | No | ||||
71.5% | 28.5% | |||||
Have experience in manipulating smartphone (Most recent 10 drives) | Yes | No | ||||
56.1% | 43.9% | |||||
Have experience in not wearing a seatbelt (Most recent 10 drives) | Yes | No | ||||
25.1% | 74.9% | |||||
(c) Perceived risk of using a smartphone while driving | ||||||
Perceived collision risk 1 to 7 Likert scales (1= Not at all risky to 7 = Extremely risky) | ||||||
Perceived enforcement risk 1 to 7 Likert scales (1= Not at all risky to 7 = Extremely risky) | ||||||
(d) Smartphone dependency | ||||||
I become more and more dependent on my smartphone | ||||||
I am nervous without my smartphone | ||||||
I am nervous when there are no messages for a long time | ||||||
Playing with my smartphone makes time fly | ||||||
I feel bored without my smartphone | ||||||
I feel isolated without my smartphone | ||||||
I cannot bear to be without my smartphone | ||||||
Items about Smartphone Dependency | Factor Loading | Standard Error | Critical Region | Standardized Loadings |
---|---|---|---|---|
I am becoming more and more dependent on my smartphone | 1.00 | - | - | 0.596 |
I am nervous without my smartphone | 1.15 *** | 0.071 | 16.16 | 0.656 |
I am nervous when there are no messages for a long time | 0.99 *** | 0.067 | 14.88 | 0.587 |
Playing with my smartphone makes time fly | 1.10 *** | 0.068 | 16.07 | 0.651 |
I feel bored without my smartphone | 1.54 *** | 0.082 | 18.84 | 0.831 |
I feel isolated without my smartphone | 1.51 *** | 0.081 | 18.67 | 0.818 |
I cannot bear to be without my smartphone | 1.24 *** | 0.074 | 16.75 | 0.69 |
Indices | Estimated Value | Result |
---|---|---|
Cronbach’s alpha | 0.91 | Accept |
Construct Reliability | 0.86 | Accept |
Average Variance Extracted (AVE) | 0.48 | Roughly acceptable |
Variable | d.f. | Sum of Squares | Mean Square | F-Value | p-Value |
---|---|---|---|---|---|
Gender | 1 | 4.96 | 4.9615 | 5.6497 | 0.02 |
Age | 3 | 5.41 | 1.8022 | 2.0522 | 0.10 |
Gender × Age | 3 | 2.50 | 0.8344 | 0.9501 | 0.42 |
Residuals | 940 | 825.50 | 0.8782 | - | - |
Groups | 20s | 30s | 40s |
---|---|---|---|
30s | 0.807 | - | - |
40s | 0.868 | 0.933 | - |
Over 50 | 0.027 * | 0.028 * | 0.026 * |
Demographics | Proportion of Participants (Calling) | Proportion of Participants (Manipulating) | |||
---|---|---|---|---|---|
Not Experienced (Recent 10 Drives) | Have Experience (Recent 10 Drives) | Not Experienced (Recent 10 drives) | Have Experience (Recent 10 Drives) | ||
Age | 20s | 35.4% | 64.6% | 29.8% | 70.2% |
30s | 26.5% | 73.5% | 39.2% | 60.8% | |
40s | 28.9% | 71.1% | 51.0% | 49.0% | |
Over 50 | 21.2% | 78.8% | 63.7% | 36.3% | |
Gender | Female | 28.6% | 71.4% | 43.2% | 56.8% |
Male | 28.4% | 71.6% | 44.2% | 55.8% |
Variables | Calling | Manipulating | ||||
---|---|---|---|---|---|---|
d.f. | p-Value | d.f. | p-Value | |||
Gender | 1 | 0.00 | 1 | 1 | 0.05 | 0.830 |
Age | 3 | 8.14 | 0.043 * | 3 | 43.12 | <0.001 * |
Description | Calling | Manipulating | ||||
---|---|---|---|---|---|---|
Coeffi- Cients | p-Value | 95% C.I. of Odds Ratio | Coeffi- Cients | p-Value | 95% C.I. of Odds Ratio | |
Constant | 0.008 | 0.978 | (0.58, 1.75) | 0.847 * | 0.007 | (1.26, 4.33) |
Gender (0: Female 1: Male) | −0.041 | 0.805 | (0.70, 1.33) | −0.159 | 0.314 | (0.63, 1.16) |
Age group in 30s (Reference: 20s) | 0.394 | 0.051 | (1.00, 2.21) | −0.489 * | 0.016 | (0.41, 0.91) |
Age group in 40s (Reference: 20s) | 0.265 | 0.204 | (0.87, 1.96) | −0.994 * | 0.000 | (0.25, 0.56) |
Age group more than 50 (Reference: 20s) | 0.864 * | 0.003 | (1.34, 4.19) | −1.351 * | 0.000 | (0.15, 0.44) |
Driving frequency within 1 month | 0.030 * | 0.001 | (1.01, 1.05) | 0.030 * | 0.001 | (1.01, 1.05) |
1–3 h driving time group (Reference: less than 1 h) | 0.060 | 0.706 | (0.78, 1.45) | 0.407 * | 0.008 | (1.11, 2.03) |
More than 3 h driving time group (Reference: less than 1 h) | 0.308 | 0.382 | (0.68, 2.72) | 0.937 * | 0.006 | (1.31, 4.98) |
High perceived collision risk (Reference: low risk) | −0.227 | 0.160 | (0.58, 1.09) | −0.477 * | 0.013 | (0.43, 0.90) |
Medium perceived enforcement risk (Reference: low risk) | −0.124 | 0.499 | (0.79, 1.12) | −0.438 * | 0.011 | (0.46, 0.91) |
High perceived enforcement risk (Reference: low risk) | −0.035 | 0.868 | (0.64, 1.46) | −0.480 * | 0.015 | (0.42, 0.91) |
Smartphone dependency | 0.310 * | 0.000 | (1.16, 1.60) | 0.502 * | 0.000 | (1.41, 1.93) |
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Yeo, J.; Park, S.-H. Effect of Smartphone Dependency on Smartphone Use While Driving. Sustainability 2021, 13, 5604. https://doi.org/10.3390/su13105604
Yeo J, Park S-H. Effect of Smartphone Dependency on Smartphone Use While Driving. Sustainability. 2021; 13(10):5604. https://doi.org/10.3390/su13105604
Chicago/Turabian StyleYeo, Jiho, and Shin-Hyoung Park. 2021. "Effect of Smartphone Dependency on Smartphone Use While Driving" Sustainability 13, no. 10: 5604. https://doi.org/10.3390/su13105604
APA StyleYeo, J., & Park, S. -H. (2021). Effect of Smartphone Dependency on Smartphone Use While Driving. Sustainability, 13(10), 5604. https://doi.org/10.3390/su13105604