Willingness of Participation in an Application-Based Digital Data Collection among Different Social Groups and Smartphone User Clusters
Abstract
:1. Introduction
Factors Determining Willingness to Participate
2. Materials and Methods
3. Results
4. Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
DV: Willingness to Participate | |||||
---|---|---|---|---|---|
Model 1 | Model 2 | Model 3 | Model 4 | Model 5 | |
Vignette-level variables | |||||
Organiser of the research (ref: private company) | |||||
Scientific research institute | 0.07 (−0.11) | 0.08 (−0.1) | −0.14 (−0.22) | 0.04 (−0.12) | −0.02 (−0.13) |
Decision-maker | −0.42 *** (−0.11) | −0.41 *** (−0.1) | −0.47 (−0.24) | −0.55 *** (−0.12) | −0.58 *** (−0.12) |
Data collected (ref: spatial movement) | |||||
Mobile usage | −0.28 (−0.17) | −0.18 (−0.16) | −0.15 (−0.19) | −0.06 (−0.18) | −0.23 (−0.19) |
Communication habits | −0.37 * (−0.18) | −0.26 (−0.17) | −0.2 (−0.2) | −0.19 (−0.19) | −0.36 (−0.2) |
Movement and usage | −0.23 (−0.16) | −0.18 (−0.15) | −0.15 (−0.18) | −0.08 (−0.17) | −0.17 (−0.18) |
Movement and comm. habits | 0.04 (−0.18) | 0.08 (−0.17) | 0.15 (−0.2) | 0.18 (−0.19) | 0.07 (−0.21) |
Mobile usage and comm. habits | −0.18 (−0.17) | −0.1 (−0.16) | 0.03 (−0.19) | 0.04 (−0.18) | −0.07 (−0.19) |
Movement, usage and comm. habits | −0.1 (−0.18) | −0.07 (−0.17) | −0.12 (−0.2) | −0.09 (−0.19) | −0.1 (−0.21) |
Length of the research (Ref: one month) | |||||
Six-month duration | −1.29 *** (−0.09) | −1.19 *** (−0.09) | −1.39 *** (−0.1) | −1.33 *** (−0.1) | −1.48 *** (−0.11) |
Incentive (ref: after downloading the app) | |||||
After the end of the research EUR 15 | 0.09 (−0.11) | 0.03 (−0.15) | −0.01 (−0.13) | −0.28 (−0.21) | −0.01 (−0.13) |
Both after downloading the app and at the end of the research EUR 15-EUR15 | 0.68 *** (−0.11) | 0.71 *** (−0.16) | 0.66 *** (−0.13) | 0.44 (−0.25) | 0.73 *** (−0.13) |
Interruption and control (ref: user can interrupt the data collection) | |||||
User cannot interrupt the data collection | −0.98 *** (−0.16) | −1.01 *** (−0.11) | −1.13 *** (−0.13) | −1.09 *** (−0.12) | −1.16 *** (−0.23) |
User can interrupt the data collection and has control over their data | 0.33 (−0.18) | 0.21 * (−0.1) | 0.31 * (−0.12) | 0.32 ** (−0.12) | 0.19 (−0.31) |
Respondent level socio-demographic variables | |||||
Age 40–59 (ref: 18–39) | −1.42 ** (−0.49) | −1.37 ** (−0.48) | −0.89 (−0.62) | 0.01 (−0.51) | −0.16 (−0.52) |
Age 60+ | −2.52 ** (−0.82) | 1.9491 | −0.83 (−0.9) | 0.17 (−0.79) | −0.18 (−0.81) |
Gender (ref: men) | −0.44 (−0.45) | −0.57 (−0.46) | −0.39 (−0.51) | −0.35 (−0.45) | 0.22 (−0.45) |
Town (ref: capital) | 1.13 * (−0.52) | 0.77 (−0.52) | 0.77 (−0.63) | 0.78 (−0.54) | 1.12 * (−0.55) |
Village | 1.22 * (−0.6) | 0.85 (−0.6) | 0.67 (−0.75) | 0.51 (−0.62) | 1.11 (−0.63) |
Skilled–retired (ref: skilled–employed) | 0.56 (−0.92) | −0.1 (−0.86) | −2.15 (−1.49) | −0.43 (−1.26) | −0.3 (−1.43) |
Skilled–unemployed | −0.72 (−1.08) | −1.33 (−0.98) | −0.68 (−0.98) | −0.02 (−0.83) | 0.24 (−0.9) |
Skilled–other inactive | −1.2 (−0.77) | −1.02 (−0.7) | −1.93 * (−0.84) | −0.53 (−0.77) | −1.29 (−0.82) |
Unskilled–employed | −0.65(−0.67) | −0.04 (−0.59) | −0.37 (−0.79) | −0.64 (−0.66) | −0.45 (−0.79) |
Unskilled–unemployed | 0.34 (−1.52) | 0.95 (−1.33) | −0.11 (−1.73) | −0.69 (−1.49) | 0.03 (−1.59) |
Unskilled–retired | −1.19 (−1.18) | −1.04 (−1.06) | −1.35 (−1.3) | −1.36 (−1.11) | −1.52 (−1.12) |
Unskilled–other inactive | 0.49 (−1.17) | 0.39 (−1.05) | −0.84 (−1.42) | −0.37 (−1.21) | −1.44 (−1.21) |
Typology of smartphone use (ref: social media and entertainment) | |||||
Broad non-social-media users | −0.29 (−0.9) | −0.06 (−0.75) | 0.15 (−0.81) | ||
Basic general users | −0.4 (−0.79) | −0.68 (−0.65) | −0.34 (−0.71) | ||
Camera users | −3.83 *** (−1.13) | −3.99 *** (−0.95) | −4.37 *** (−0.99) | ||
Advanced users | 1.75 * (−0.7) | 1.29 * (−0.57) | 1.54 * (−0.63) | ||
Cross-level interaction terms | |||||
Skilled–unemployed * User cannot interrupt the data collection | −0.5 (−0.54) | ||||
Skilled–retired * User cannot interrupt the data collection | −1.13 ** (−0.43) | ||||
Skilled–other inactive * User cannot interrupt the data collection | −0.21 (−0.37) | ||||
Unskilled–employed * User cannot interrupt the data collection | 1.09 ** (−0.36) | ||||
Unskilled–unemployed * User cannot interrupt the data collection | 1.26 (−0.83) | ||||
Unskilled–retired * User cannot interrupt the data collection | 0.38 (−0.62) | ||||
Unskilled–other inactive * User cannot interrupt the data collection | −0.11 (−0.61) | ||||
Skilled–unemployed * User can interrupt the data collection and has control over their data | −0.73 (−0.59) | ||||
Skilled–retired * User can interrupt the data collection and has control over their data | −1.29 ** (−0.44) | ||||
Skilled–other inactive * User can interrupt the data collection and has control over their data | −0.02 (−0.41) | ||||
Unskilled–employed * User can interrupt the data collection and has control over their data | 0.56 (−0.4) | ||||
Unskilled–unemployed * User can interrupt the data collection and has control over their data | 0.69 (−0.98) | ||||
Unskilled–retired * User can interrupt the data collection and has control over their data | 0.27 (−0.64) | ||||
Unskilled–other inactive * User can interrupt the data collection and has control over their data | 0.84 (−0.7) | ||||
Skilled–unemployed * After the end of the research | 0.98 (−0.51) | ||||
Skilled–retired * After the end of the research | −0.18 (−0.37) | ||||
Skilled–other inactive * After the end of the research | −0.16 (−0.33) | ||||
Unskilled–employed * After the end of the research | −0.08 (−0.33) | ||||
Unskilled–unemployed * After the end of the research | 0.3 (−0.84) | ||||
Unskilled–retired * After the end of the research | 0.13 (−0.54) | ||||
Unskilled–other inactive * After the end of the research | 0.63 (−0.53) | ||||
Skilled–unemployed * Both after downloading the app and at the end of the research | −0.05 (−0.52) | ||||
Skilled–retired * Both after downloading the app and at the end of the research | 0.3002 | ||||
Skilled–other inactive * Both after downloading the app and at the end of the research | −0.26 (−0.36) | ||||
Unskilled–employed * Both after downloading the app and at the end of the research | 0.13 (−0.35) | ||||
Unskilled–unemployed * Both after downloading the app and at the end of the research | 0.02 (−0.74) | ||||
Unskilled–retired * Both after downloading the app and at the end of the research | 0.43 (−0.63) | ||||
Unskilled–other inactive * Both after downloading the app and at the end of the research | 0.55 (−0.59) | ||||
Scientific research institute * Broad non-social-media users | 0.85 * (−0.4) | ||||
Decision-maker * Broad non-social-media users | 0.09 (−0.45) | ||||
Scientific research institute * Basic general users | 0.33 (−0.36) | ||||
Decision-maker * Basic general users | −0.16 (−0.41) | ||||
Scientific research institute * Camera users | −0.08 (−0.61) | ||||
Decision-maker * Camera users | −0.78 (−0.69) | ||||
Scientific research institute * Advanced users | 0.02 (−0.35) | ||||
Decision-maker * Advanced users | −0.06 (−0.38) | ||||
Broad non-social-media users * After the end of the research | 0.22 (−0.39) | ||||
Basic general users * After the end of the research | 0.35 (−0.34) | ||||
Camera users * After the end of the research | 0.04 (−0.6) | ||||
Advanced users * After the end of the research | 0.43 (−0.32) | ||||
Broad non-social-media users * Both after downloading the app and at the end of the research | −0.52 (−0.47) | ||||
Basic general users * Both after downloading the app and at the end of the research | −0.02 (−0.44) | ||||
Camera users * Both after downloading the app and at the end of the research | −0.83 (−0.71) | ||||
Advanced users * Both after downloading the app and at the end of the research | 1.05 * (−0.41) | ||||
Broad non-social-media users * User cannot interrupt the data collection | −0.42 (−0.45) | ||||
Basic general users * User cannot interrupt the data collection | −0.23 (−0.39) | ||||
Camera users * User cannot interrupt the data collection | 0.73 (−0.69) | ||||
Advanced users * User cannot interrupt the data collection | 0.48 (−0.37) | ||||
Broad non-social-media users * User can interrupt the data collection and has control over their data | −0.04 (−0.59) | ||||
Basic general users * User can interrupt the data collection and has control over their data | −0.44 (−0.53) | ||||
Camera users * User can interrupt the data collection and has control over their data | −1.38 (−0.83) | ||||
Advanced users * User can interrupt the data collection and has control over their data | 1.10 * (−0.5) | ||||
AIC | 6720.69 | 6792.82 | 5236.79 | 5253.7 | 5198.44 |
BIC | 7052.36 | 7124.49 | 5543.22 | 5560.14 | 5504.88 |
Observations | 10,000 | 10,000 | 7820 | 7820 | 7820 |
Groups (respondents) | 1000 | 1000 | 782 | 782 | 782 |
- (1)
- The 15 different activities for which one can use a smartphone.
Yes | No | DK | |
---|---|---|---|
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
| 1 | 2 | 8 |
- (2)
- The average self-estimated daily duration of smartphone screen time.
Very Bad | Excellent | DK | Refusal | |||
1 | 2 | 3 | 4 | 5 | 8 | 9 |
- (3)
- Self-reported smartphone use skills.
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Age | |||||||
18–39 | 40–59 | 60+ | |||||
42.9 | 39.4 | 17.7 | |||||
Gender | |||||||
Male | Female | ||||||
48.2 | 51.8 | ||||||
Settlement | |||||||
Capital | City | Village | |||||
21.2 | 52.1 | 26.7 | |||||
Education and Labour Market Activity | |||||||
Skilled and employed | Skilled and unemployed | Skilled and retired | Skilled and other | Unskilled and employed | Unskilled and unemployed | Unskilled and retired | Unskilled and other |
42.9 | 3.4 | 9.5 | 8.6 | 20.2 | 3.5 | 6.5 | 5.4 |
Smartphone User Clusters | |||||||
Social media and entertainment users | Broad non-social-media users | Basic general users | Camera users | Advanced users | |||
31.2 | 12.0 | 18.7 | 9.1 | 29.0 | |||
Willingness to Participate | |||||||
No | Yes | ||||||
47.2 | 52.8 |
Smartphone User Cluster | |||||
---|---|---|---|---|---|
Age | Social Media and Entertainment Users | Broad Non-Social-Media Users | Basic General Users | Camera Users | Advanced Users |
18–39 | 34.4 | 8.0 | 8.0 | 2.0 | 47.5 |
40–59 | 32.6 | 14.3 | 21.6 | 9.1 | 22.3 |
60+ | 21.9 | 14.8 | 32.9 | 22.6 | 7.7 |
Smartphone User Cluster | |||||
Education and Labour Market Activity | Social Media and Entertainment Users | Broad Non-Social-Media Users | Basic General Users | Camera Users | Advanced Users |
Skilled and employed | 30.3 | 13.8 | 15.5 | 6.3 | 34.0 |
Skilled and unemployed | 14.3 | 33.3 | 23.8 | 9.5 | 19.0 |
Skilled and retired | 21.9 | 15.6 | 33.3 | 19.8 | 9.4 |
Skilled and other inactive | 41.2 | 2.5 | 6.2 | 0.0 | 50.0 |
Unskilled and employed | 40.4 | 9.1 | 18.2 | 11.1 | 21.2 |
Unskilled and unemployed | 46.7 | 13.3 | 13.3 | 0.0 | 26.7 |
Unskilled and retired | 19.4 | 2.8 | 47.2 | 27.8 | 2.8 |
Unskilled and other inactive | 34.8 | 4.3 | 13.0 | 13.0 | 34.8 |
DV: Willingness to Participate | |||
---|---|---|---|
Model 1 | Model 2 | Model 3 | |
Vignette-level variables | |||
Organiser of the research (ref: private company) | |||
Scientific research institute | 0.07 (−0.09) | 0.07 (−0.1) | 0.02 (−0.12) |
Decision-maker | −0.39 *** (−0.09) | −0.39 *** (−0.1) | −0.52 *** (−0.11) |
Data collected (ref: spatial movement) | |||
Mobile usage | −0.19 (−0.14) | −0.19 (−0.16) | −0.11 (−0.18) |
Communication habits | −0.26 (−0.14) | −0.27 (−0.16) | −0.21 (−0.19) |
Movement and usage | −0.19 (−0.13) | −0.19 (−0.15) | −0.12 (−0.17) |
Movement and comm. habits | 0.08 (−0.15) | 0.08 (−0.17) | 0.15 (−0.19) |
Mobile usage and comm. habits | −0.08 (−0.14) | −0.08 (−0.16) | 0.04 (−0.18) |
Movement, usage and comm. habits | −0.07 (−0.14) | −0.07 (−0.16) | −0.09 (−0.19) |
Length of the research (Ref: one month) | |||
Six-month duration | −1.15 *** (−0.07) | −1.16 *** (−0.08) | −1.31 *** (−0.1) |
Incentive (ref: after downloading the app) | |||
After the end of the research EUR 15 | 0.08 (−0.09) | 0.08 (−0.1) | 0.01 (−0.12) |
Both after downloading the app and at the end of the research EUR 15-EUR 15 | 0.61 *** (−0.09) | 0.61 *** (−0.1) | 0.63 *** (−0.12) |
Interruption and control (ref: user can interrupt the data collection) | |||
User cannot interrupt the data collection | −0.98 *** (−0.09) | −0.99 *** (−0.1) | −1.08 *** (−0.12) |
User can interrupt the data collection and has control over their data | 0.20 * (−0.09) | 0.2 (−0.1) | 0.29 * (−0.12) |
Respondent level socio-demographic variables | |||
Age 40–59 (ref: 18–39) | −1.52 *** (−0.46) | −0.44 (−0.56) | |
Age 60+ | −2.76 *** (−0.76) | −0.77 (−0.89) | |
Gender (ref: men) | 0.3321 | −0.4 (−0.48) | |
Town (ref: capital) | 0.85 (−0.51) | 0.96 (−0.59) | |
Village | 1.02 (−0.6) | 0.97 (−0.69) | |
Skilled–retired (ref: skilled–employed) | −0.01 (−0.84) | −1.17 (−1.41) | |
Skilled–unemployed | −0.98 (−0.99) | −0.35 (−0.95) | |
Skilled–other inactive | −1.18 (−0.7) | −1.47 (−0.82) | |
Unskilled–employed | −0.05 (−0.6) | −0.18 (−0.73) | |
Unskilled–unemployed | 1.14 (−1.33) | 0.27 (−1.65) | |
Unskilled–retired | −0.63 (−1.06) | −0.5 (−1.25) | |
Unskilled–other inactive | 0.71 (−1.07) | −0.57 (−1.35) | |
Typology of smartphone use (ref: Social media and entertainment) | |||
Broad non-social-media users | 0.02 (−0.79) | ||
Basic general users | −0.42 (−0.69) | ||
Camera users | −3.69 *** (−0.94) | ||
Advanced users | 1.66 ** (−0.6) | ||
AIC | 6783.87 | 6773.36 | 5247.53 |
BIC | 6892.03 | 6968.04 | 5463.43 |
Observations | 10,000 | 10,000 | 7820 |
Groups (respondents) | 1000 | 1000 | 782 |
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Máté, Á.; Rakovics, Z.; Rudas, S.; Wallis, L.; Ságvári, B.; Huszár, Á.; Koltai, J. Willingness of Participation in an Application-Based Digital Data Collection among Different Social Groups and Smartphone User Clusters. Sensors 2023, 23, 4571. https://doi.org/10.3390/s23094571
Máté Á, Rakovics Z, Rudas S, Wallis L, Ságvári B, Huszár Á, Koltai J. Willingness of Participation in an Application-Based Digital Data Collection among Different Social Groups and Smartphone User Clusters. Sensors. 2023; 23(9):4571. https://doi.org/10.3390/s23094571
Chicago/Turabian StyleMáté, Ákos, Zsófia Rakovics, Szilvia Rudas, Levente Wallis, Bence Ságvári, Ákos Huszár, and Júlia Koltai. 2023. "Willingness of Participation in an Application-Based Digital Data Collection among Different Social Groups and Smartphone User Clusters" Sensors 23, no. 9: 4571. https://doi.org/10.3390/s23094571
APA StyleMáté, Á., Rakovics, Z., Rudas, S., Wallis, L., Ságvári, B., Huszár, Á., & Koltai, J. (2023). Willingness of Participation in an Application-Based Digital Data Collection among Different Social Groups and Smartphone User Clusters. Sensors, 23(9), 4571. https://doi.org/10.3390/s23094571