Statistical Evaluation of BIS-11 and DAQ Tools in the Field of Traffic Psychology
Abstract
:1. Introduction
- High self-confidence: In [14], it was shown that young drivers who show too much confidence in driving pose a higher risk.
- o
- Driving over the speed limit;
- o
- Overtaking;
- o
- Drunk driving and driving on drugs;
- o
- Not using seat belts;
- o
- Using mobile phones.
- Errors of perception and assessment;
- Distraction;
- Falling asleep or blacking out.
2. Materials and Methods
2.1. Psychological Tools
- The BIS-11 (Barratt Impulsiveness Scale) is designed to assess three separable dispositions: (1) attentional impulsiveness, defined as the (in-)ability to concentrate or focus attention; (2) motor impulsiveness, or the tendency to act without thinking; and (3) non-planning impulsiveness, or the lack of future planning and forethought [36]. The original wording of the whole BIS-11 questionnaire is in Appendix A.
- The DAQ, also known as the MDAQ (The Manchester Driver Attitude Questionnaire), detects whether a driver is prone to drunk driving, close-following, dangerous overtaking, and speeding [37]. The original wording of the whole BIS-11 questionnaire is in Appendix B.
2.2. Sample Size
- Confidence level: Usually 95%, and therefore we used this typical value.
- Confidence interval: In statistics, this is a type of interval estimation for an unknown parameter. We chose a value of 5.
- Population: The total number of statistical units of the basic set. In this case, this was the number of drivers in the selected age category (253,859).
2.3. Correlation Analysis
- Its values are from a fixed interval, most often 〈−1; 1〉 or 〈0; 1〉;
- As the degree of dependence increases, their absolute values must also increase;
- They must be independent of the variable units.
- variables X and Y are not linearly dependent;
- there is a direct linear relationship between the variables X and Y;
- there is an indirect linear relationship between the variables X and Y.
- A correlation in the absolute value below 0.1 is trivial;
- A correlation in the range of 0.1 to 0.3 is small;
- In the interval of 0.3 to 0.5, the correlation is medium;
- At values above 0.5, the correlation is high;
- A correlation of 0.7 to 0.9 is very high;
- A correlation in the range of 0.9 to 1.0 is almost perfect.
2.4. Research Hypotheses and Questions
- What characteristics does each tool reveal?
- Which pairs or groups of characteristics have the closest relations?
- How should research in this area continue?
- Which tool is most appropriate to test the hypothesis?
- Are the results similar to other studies?
3. Results
3.1. BIS-11 Results
- Motor impulsiveness, which positively predicts the intention of a driver to commit a traffic violation;
- Non-planning impulsiveness, which positively predicts the intention of a driver to commit a traffic violation;
- Cognitive impulsiveness, which positively predicts the intention of a driver to commit a traffic violation.
3.2. DAQ Results
4. Discussion
- Which tool is most appropriate to test the hypothesis?
- Are the results similar to other studies?
- Factor 1 “Attention” r = −0.003
- Factor 2 “Cognitive instability” r = 0.071
- Factor 3 “Motor impulsiveness” r = 0.025
- Factor 4 “Perseverance” r = 0.059
- Factor 5 “Self-control” r = 0.041
- Factor 6 “Cognitive complexity” r = −0.074
- Factor 1 “Drunk driving” r = −0.029
- Factor 2 “Close-following” r = 0.042
- Factor 3 “Dangerous overtaking” r = 0.114; p < 0.05
- Factor 4 “Speeding” r = 0.181; p < 0.01
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
1—Rarely/Never, 2—Occasionally, 3—Often, 4—Always/Always | 1 | 2 | 3 | 4 | |
1. | I plan tasks carefully. | ◯ | ◯ | ◯ | ◯ |
2. | I do things without thinking. | ◯ | ◯ | ◯ | ◯ |
3. | I make up my mind quickly. | ◯ | ◯ | ◯ | ◯ |
4. | I am happy-go-lucky. | ◯ | ◯ | ◯ | ◯ |
5. | I do not “pay attention”. | ◯ | ◯ | ◯ | ◯ |
6. | I have “racing” thoughts. | ◯ | ◯ | ◯ | ◯ |
7. | I plan trips well ahead of time. | ◯ | ◯ | ◯ | ◯ |
8. | I am self-controlled. | ◯ | ◯ | ◯ | ◯ |
9. | I concentrate easily. | ◯ | ◯ | ◯ | ◯ |
10. | I save regularly. | ◯ | ◯ | ◯ | ◯ |
11. | I “squirm” at plays or lectures. | ◯ | ◯ | ◯ | ◯ |
12. | I am a careful thinker. | ◯ | ◯ | ◯ | ◯ |
13. | I plan for job security. | ◯ | ◯ | ◯ | ◯ |
14. | I say things without thinking. | ◯ | ◯ | ◯ | ◯ |
15. | I like to think about complex problems. | ◯ | ◯ | ◯ | ◯ |
16. | I change jobs. | ◯ | ◯ | ◯ | ◯ |
17. | I act “on impulse”. | ◯ | ◯ | ◯ | ◯ |
18. | I get easily bored when solving thought problems. | ◯ | ◯ | ◯ | ◯ |
19. | I act on the spur of the moment. | ◯ | ◯ | ◯ | ◯ |
20. | I am a steady thinker. | ◯ | ◯ | ◯ | ◯ |
21. | I change residences. | ◯ | ◯ | ◯ | ◯ |
22. | I buy things on impulse. | ◯ | ◯ | ◯ | ◯ |
23. | I can only think about one thing at a time. | ◯ | ◯ | ◯ | ◯ |
24. | I change hobbies. | ◯ | ◯ | ◯ | ◯ |
25. | I spend or charge more than I earn. | ◯ | ◯ | ◯ | ◯ |
26. | I often have extraneous thoughts when thinking. | ◯ | ◯ | ◯ | ◯ |
27. | I am more interested in the present than the future. | ◯ | ◯ | ◯ | ◯ |
28. | I am restless at the theater or lectures. | ◯ | ◯ | ◯ | ◯ |
29. | I like puzzles. | ◯ | ◯ | ◯ | ◯ |
30. | I am future oriented. | ◯ | ◯ | ◯ | ◯ |
Appendix B
1—Strongly disagree, 5—Strongly agree | 1 | 2 | 3 | 4 | 5 | |
1. | On the whole, people are not aware of the dangers involved in close following. | ◯ | ◯ | ◯ | ◯ | ◯ |
2. | It is hard to have a good time if everyone else is drinking but you have to limit yourself because you are driving. | ◯ | ◯ | ◯ | ◯ | ◯ |
3. | I would be happier if speed limit regulations were more strictly applied | ◯ | ◯ | ◯ | ◯ | ◯ |
4. | The aim of the police should be to stop as many drink drivers as possible. | ◯ | ◯ | ◯ | ◯ | ◯ |
5. | I think it is OK to overtake in risky circumstances as long as you drive within your own capabilities. | ◯ | ◯ | ◯ | ◯ | ◯ |
6. | Even one drink makes you drive less safely. | ◯ | ◯ | ◯ | ◯ | ◯ |
7. | I would be happier if close following regulations were more strictly applied. | ◯ | ◯ | ◯ | ◯ | ◯ |
8. | People stopped by the police for speeding are unlucky because lots of people do it. | ◯ | ◯ | ◯ | ◯ | ◯ |
9. | I know exactly what risks I can take when I overtake. | ◯ | ◯ | ◯ | ◯ | ◯ |
10. | Some people can drive safe after drinking three pots of beer. | ◯ | ◯ | ◯ | ◯ | ◯ |
11. | Close following is not really a serious road safety problem. | ◯ | ◯ | ◯ | ◯ | ◯ |
12. | I think the police should start breath analyzing a lot more drivers around pub closing times. | ◯ | ◯ | ◯ | ◯ | ◯ |
13. | Speed limits are often set too low, with the result that many drivers ignore them. | ◯ | ◯ | ◯ | ◯ | ◯ |
14. | Some drivers can be perfectly safe overtaking in situations which would be risky for others. | ◯ | ◯ | ◯ | ◯ | ◯ |
15. | Harsher penalties should be introduced for drivers who drive too close to the car in front. | ◯ | ◯ | ◯ | ◯ | ◯ |
16. | The aim of the police should be to stop as many people as possible overtaking in risky circumstances | ◯ | ◯ | ◯ | ◯ | ◯ |
17. | Some people can drive safe with only a small gap. | ◯ | ◯ | ◯ | ◯ | ◯ |
18. | I know exactly how fast I can drive and still drive safely. | ◯ | ◯ | ◯ | ◯ | ◯ |
19. | Dangerous overtaking is not really a serious road safety problem. | ◯ | ◯ | ◯ | ◯ | ◯ |
20. | Sometimes you have to drive in excess of the speed limit in order to keep up with the flow of traffic. | ◯ | ◯ | ◯ | ◯ | ◯ |
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Type | Numbers of Traffic Accidents (-) | |||||
2014 | 2015 | 2016 | 2017 | 2018 | 2019 | |
Minor injuries | 1437 | 1444 | 1563 | 1329 | 1405 | 1259 |
Major injuries | 284 | 242 | 250 | 261 | 291 | 242 |
Fatalities | 58 | 62 | 63 | 51 | 43 | 53 |
Total | 1779 | 1748 | 1876 | 1641 | 1739 | 1554 |
Type | Numbers of Traffic Accidents (%) | |||||
2014 | 2015 | 2016 | 2017 | 2018 | 2019 | |
Minor injuries | 33 | 32 | 34 | 30 | 33 | 30 |
Major injuries | 34 | 29 | 31 | 30 | 30 | 30 |
Fatalities | 30 | 30 | 36 | 27 | 26 | 28 |
Factor | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | |
---|---|---|---|---|---|---|---|---|---|---|---|
BIS-11 (Attentional) | a | 1 | |||||||||
b | |||||||||||
BIS-11 (Motor) | a | 0.508 ** | 1 | ||||||||
b | 0.262 ** | ||||||||||
BIS-11 (Non-Planning) | a | 0.359 ** | 0.513 ** | 1 | |||||||
b | 0.078 | 0.326 ** | |||||||||
Attention | a | 0.861 ** | 0.370 ** | 0.341 ** | 1 | ||||||
b | 0.797 ** | 0.249 ** | 0.089 | ||||||||
Cognitive instability | a | 0.763 ** | 0.473 ** | 0.233 ** | 0.328 ** | 1 | |||||
b | 0.728 ** | 0.173 * | 0.062 | 0.198 * | |||||||
Motor impulsiveness | a | 0.441 ** | 0.897 ** | 0.446 ** | 0.303 ** | 0.434 ** | 1 | ||||
b | 0.201 * | 0.899 * | 0.261 ** | 0.190 * | 0.131 | ||||||
Perseverance | a | 0.343 ** | 0.624 ** | 0.345 ** | 0.282 ** | 0.279 ** | 0.215 ** | 1 | |||
b | 0.274 ** | 0.607 ** | 0.193 * | 0.218 * | 0.215 * | 0.229 ** | |||||
Self-control | a | 0.414 ** | 0.498 ** | 0.871 ** | 0.411 ** | 0.247 ** | 0.436 ** | 0.330 ** | 1 | ||
b | 0.040 | 0.291 ** | 0.917 ** | 0.018 | 0.046 * | 0.268 ** | 0.147 | ||||
Cognitive complexity | a | 0.136 ** | 0.320 ** | 0.757 ** | 0.107 * | 0.117 * | 0.275 ** | 0.222 ** | 0.338 ** | 1 | |
b | 0.041 | 0.169 * | 0.449 ** | 0.076 | 0.018 | 0.095 | 0.176* | 0.920 | |||
BIS-11 (Total) | a | 0.738 ** | 0.847 ** | 0.810 ** | 0.621 ** | 0.581 ** | 0.748 ** | 0.549 ** | 0.764 ** | 0.536 ** | 1 |
b | 0.569 ** | 0.812 ** | 0.654 ** | 0.482 ** | 0.410 ** | 0.723 ** | 0.523 ** | 0.580 ** | ? |
Factor | Comparable Study | Own Research | ||
---|---|---|---|---|
M | SD | M | SD | |
Drunk driving (DD) | 3.71 | 0.41 | 4.01 | 0.76 |
Close-following (CF) | 3.36 | 0.40 | 3.71 | 0.67 |
Dangerous overtaking (DO) | 3.27 | 0.48 | 3.04 | 0.71 |
Speeding (R) | 2.76 | 0.49 | 2.70 | 0.69 |
Factor | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | |
---|---|---|---|---|---|---|---|---|---|---|---|
DAQ (DO) dangerous overtaking | a | 1 | |||||||||
b | |||||||||||
DAQ (R) speeding | a | 0.459 ** | 1 | ||||||||
b | 0.100 * | ||||||||||
DAQ (CF) close-following | a | 0.329 ** | 0.196 ** | 1 | |||||||
b | 0.370 ** | 0.270 ** | |||||||||
DAQ (DD) drunk driving | a | 0.184 ** | 0.024 | 0.441 ** | 1 | ||||||
b | 0.210 ** | 0.210 ** | 0.260 ** | ||||||||
Age | a | 0.039 | 0.040 | 0.149 ** | 0.040 | 1 | |||||
b | 0.111 * | −0.050 | 0.200 ** | 0.040 | |||||||
Practice (years) | a | 0.050 | 0.082 | 0.092 | 0.007 | 0.769 ** | 1 | ||||
b | 0.600 | −0.090 | 0.140 ** | 0.030 | 0.830 ** | ||||||
Driving hours per week | a | 0.103 * | 0.050 | 0.020 | −0.062 | 0.041 | 0.166 ** | 1 | |||
b | −0.050 | 0.010 | −0.020 | −0.040 | 0.100 * | 0.110 * | |||||
Driving dist. per week | a | 0.075 | 0.111 * | 0.019 | −0.022 | 0.021 | 0.146 ** | 0.496 ** | 1 | ||
b | −0.020 | 0.050 | 0.010 | −0.100 * | 0.070 | 0.100 * | 0.560 ** | ||||
Number of traff. accidents | a | 0.081 | 0.134 ** | 0.060 | −0.026 | 0.135 ** | 0.188 ** | 0.147 ** | 0.160 ** | 1 | |
b | −0.080 | 0.000 | −0.030 | 0.010 | −0.060 | −0.070 | 0.080 | 0.060 | |||
Fines | a | 0.092 | 0.176 ** | 0.046 | 0.040 | 0.257 ** | 0.311 ** | 0.184 * | 0.204 ** | 0.264 ** | 1 |
b | −0.020 | 0.100 * | −0.040 | −0.010 | 0.000 | −0.040 | 0.610 | 0.140 * | 0.210 ** |
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Čulík, K.; Kalašová, A. Statistical Evaluation of BIS-11 and DAQ Tools in the Field of Traffic Psychology. Mathematics 2021, 9, 433. https://doi.org/10.3390/math9040433
Čulík K, Kalašová A. Statistical Evaluation of BIS-11 and DAQ Tools in the Field of Traffic Psychology. Mathematics. 2021; 9(4):433. https://doi.org/10.3390/math9040433
Chicago/Turabian StyleČulík, Kristián, and Alica Kalašová. 2021. "Statistical Evaluation of BIS-11 and DAQ Tools in the Field of Traffic Psychology" Mathematics 9, no. 4: 433. https://doi.org/10.3390/math9040433
APA StyleČulík, K., & Kalašová, A. (2021). Statistical Evaluation of BIS-11 and DAQ Tools in the Field of Traffic Psychology. Mathematics, 9(4), 433. https://doi.org/10.3390/math9040433