Young Adults View Smartphone Tracking Technologies for COVID-19 as Acceptable: The Case of Taiwan
Abstract
:1. Introduction
1.1. Tracking Technologies
1.2. Broader Implications
1.3. Current Study
2. Materials and Methods
2.1. Overview
2.2. Participants
2.3. Design and Procedure
2.4. Data Analysis
3. Results
3.1. Data Preparation and Demographics
3.2. Impacts of COVID-19
3.3. Perceived Risk from COVID-19
3.4. Perceived Benefits from Tracking
3.5. Perceptions of Tracking Technologies
3.6. Acceptability of Tracking Technologies
4. Discussion
4.1. Policy Implications
4.2. Broader Implications
4.3. Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Resilience and World View
Appendix A.1. Resilience
Appendix A.2. World View
Item | Question | Label |
---|---|---|
Wview 1 | An economic system based on free markets unrestrained by government interference automatically works best to meet human needs. | Free market |
Wview 2 | The free market system may be efficient for resource allocation but it is limited in its capacity to promote social justice. | Social justice |
Wview 3 | The government should interfere with the lives of citizens as little as possible. | Small government |
Appendix A.3. Results
Appendix B. Scenario Descriptions
Appendix B.1. Chinese Version (Translated; as Presented in the Experiment)
“流行病COVID-19 已經迅速地威脅了全球人類的健康。為了減少對醫療保健系統、經濟的影響,並挽救許多生命,「如何限制病毒傳播」是當前最重要的議題。台灣政府可能考慮使用智慧型手機定位追蹤數據,用來識別和聯繫那些可能已經接觸過COVID-19患者的人。用此定位追蹤技術可以辨識出具有高風險的族群並精準地給予治療,能夠降低社區傳染的風險。但不是所有台灣人都需要參與此計畫,而是只有下載政府提供的應用程式(手機APP),並同意進行追蹤和聯繫的人,才會被包含在該計畫中。因此,下載和使用此應用程式的人越多,政府就能更加有效地限制COVID-19的傳播。而這些定位追蹤的數據將以加密格式儲存在安全的伺服器上,只有台灣政府能讀取該伺服器資料。同時,這些資料僅能用於聯繫可能暴露在COVID-19感染風險下的民眾,不會另做其他用途。”
“流行病COVID-19已經迅速地威脅了全球人類的健康。為了減少對醫療保健系統、經濟的影響,並挽救許多生命,「如何限制病毒傳播」是當前最重要的議題。台灣政府可能考慮使用電信公司提供的手機定位追蹤數據,用來識別和聯繫那些可能已經接觸過COVID-19患者的人。用此定位追蹤技術可以辨識出具有高風險的族群並精準地給予治療,能夠降低社區傳染的風險。這個計畫是強制性的,只要你有手機就會被納入計畫當中,而且無法退出。這些定位追蹤的數據將以加密格式儲存在安全的伺服器上,只有台灣政府才能讀取該伺服器資料。必要時,台灣政府可以使用該數據,找到違反隔離或封鎖命令的民眾,並且進行罰款和逮捕。同時,這些數據還將用於通知適當的公共衛生單位進行應對措施,並與可能接觸過COVID-19感染者的民眾進行聯繫,甚至可以基於此數據,制訂個人化的的隔離方式。”
“流行病COVID-19已經迅速地威脅了全球人類的健康。為了減少對醫療保健系統、經濟的影響,並挽救許多生命,「如何限制病毒傳播」是當前最重要的議題。Apple和Google已提議在既有智慧型手機上增加接觸史追蹤功能,以告知人們是否曾經接觸過COVID-19患者。這將可以讓大眾主動地自我隔離,進而減少COVID-19的社區傳播。當兩人靠近時,他們的手機就會透過藍芽連結。如果有一個人在之後被診斷為感染者,曾經與該名患者有近距離接觸的人,將會被通知,但是政府並不知道這些人是誰。使用此接觸史追蹤功能是完全自主的。被通知的人們將不會知道是誰的篩檢結果呈現陽性。”
Appendix B.2. English Version (Translated; not Presented in the Experiment)
“The COVID-19 pandemic has rapidly become a worldwide threat. Containing the virus’ spread is essential to minimize the impact on the healthcare system, the economy, and save many lives. The Taiwanese Government might consider using smartphone tracking data to identify and contact those who may have been exposed to people with COVID-19. This would help reduce community spread by identifying those most at risk and allowing health services to be appropriately targeted. Only people that downloaded a government app and agreed to be tracked and contacted would be included in the project. The more people that download and use this app the more effectively the Government would be able to contain the spread of COVID-19. Data would be stored in an encrypted format on a secure server accessible only to the Taiwanese Government. Data would only be used to contact those who might have been exposed to COVID-19.”
“The COVID-19 pandemic has rapidly become a worldwide threat. Containing the virus’ spread is essential to minimize the impact on the healthcare system, the economy, and save many lives. The Taiwanese Government might consider using phone tracking data supplied by telecommunication companies to identify and contact those who may have been exposed to people with COVID-19. This would help reduce community spread by identifying those most at risk and allowing health services to be appropriately targeted. All people using a mobile phone would be included in the project, with no possibility to opt-out. Data would be stored in an encrypted format on a secure server accessible only to the Taiwanese Government who may use the data to locate people who were violating lockdown orders and enforce them with fines and arrests where necessary. Data would also be used to inform the appropriate public health response and to contact those who might have been exposed to COVID-19, and individual quarantine orders could be made on the basis of this data.”
“The COVID-19 pandemic has rapidly become a worldwide threat. Containing the virus’ spread is essential to minimize the impact on the healthcare system, the economy, and save many lives. Apple and Google have proposed adding a contact tracing capability to existing smartphones to help inform people if they have been exposed to others with COVID-19. This would help reduce community spread of COVID-19 by allowing people to voluntarily self-isolate. When two people are near each other, their phones would connect via Bluetooth. If a person is later identified as being infected, the people they have been in close proximity to are then notified without the government knowing who they are. The use of this contact tracing capability would be completely voluntary. People who are notified would not be informed who had tested positive.”
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Telecommunication Network Tracking | GPS Tracking | Bluetooth Tracking | |
---|---|---|---|
Precision | 50 m–2 km radius due to tower density [24]. | 5 m radius, but may not work indoors [21]. | 10 m radius, can be blocked by objects [25]. |
Risks | Rough locations (e.g., work and home). | Exact locations and movements. | Phone ID is public, but anonymized. |
Benefits | Works on all devices. No app needed. | Constant tracking gives location history. | Precision reflects the radius of infection. |
Control | Flight mode on or phone off. | Turn GPS or phone off. | Turn Bluetooth or phone off. |
Access | Telco company and government.Could be mandatory. | Gov or corporate apps with the user’s permission. | Gov or corporate apps with the user’s permission. |
Item | Question | Label |
---|---|---|
Risk 1 | How severe do you think novel coronavirus (COVID-19) will be for the general population? | General harm |
Risk 2 | How harmful would it be for your health if you were to become infected with COVID-19? | Personal harm |
Risk 3 | How concerned are you that you might become infected with COVID-19? | Concern self |
Risk 4 | How concerned are you that somebody you know might become infected with COVID-19? | Concern others |
Impact 1 | Have you ever tested positive to COVID-19? | Positive self |
Impact 2 | Has somebody you know ever tested positive to COVID-19? | Positive other |
Impact 3 | How many days, if any, have you been in quarantine or self-isolation? | Lockdown days |
Impact 4 | Have you temporarily or permanently lost your job as a consequence of the COVID-19 pandemic? | Job loss |
Item | Question | Label |
---|---|---|
Bfit 1 | How confident are you that the described scenario would reduce your likelihood of contracting COVID-19? | Reduce contraction |
Bfit 2 | How confident are you that the described scenario would help you resume your normal activities more rapidly? | Resume activity |
Bfit 3 | How confident are you that the described scenario would reduce the spread of COVID-19? | Reduce spread |
Harm 1 | How difficult is it for people to decline participation? | Difficult to decline [R] |
Harm 2 | To what extent do people have ongoing control of their data? | Ongoing control |
Harm 3 | How sensitive are the data being collected? | Data sensitivity |
Harm 4 | How serious is the risk of harm from the proposed scenario? | Risk (from tracking) |
Harm5 | How secure are the data that would be collected? | Data security [R] |
Harm 6 | To what extent is the Government [Apple/Google] only collecting the data necessary to achieve the purposes of the policy? | Data necessary |
Harm 7 | How much do you trust the Government [Apple/Google] to use the tracking data only to deal with the COVID-19 pandemic? | Trust intentions |
Harm 8 | How much do you trust the Government [Apple/Google] to be able to ensure the privacy of each individual? | Trust privacy |
Assessment Item | Wave 1 | Wave 2 | Wave 3 | Wave 4 | |
---|---|---|---|---|---|
Initial Sample | 385 | 232 | 301 | 169 | |
Removals | Comprehension check | 40 | 33 | 35 | 22 |
Final sample | 345 | 199 | 266 | 147 | |
Gender (%) | Men | 50.1% | 52.8% | 50% | 53.1% |
Women | 49.6% | 46.2% | 49.6% | 46.9% | |
Other | - | 0.5% | 0.4% | - | |
Prefer not to say | 0.3% | 0.5% | - | - | |
Age (years) | Mean | 20.46 | 19.94 | 19.8 | 19.86 |
Std. Dev | 1.9 | 1.58 | 1.35 | 1.44 | |
Education (%) | Less than high school | 0.9% | 4.5% | 1.9% | 3.4% |
Graduated high school | 66.1% | 76.4% | 78.2% | 81% | |
Graduated university | 33% | 19.1% | 19.9% | 15.6% | |
Information sources | Newspaper | 62.3% | 68.8% | 62% | 59.9% |
for COVID-19 (%) | Social media | 29.9% | 23.6% | 32% | 35.4% |
Television | 5.5% | 2.5% | 2.6% | 2% | |
Friends and family | 1.2% | 4% | 3% | 2.7% | |
Other | 1.2% | 1% | 0.4% | - |
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Garrett, P.M.; Wang, Y.; White, J.P.; Hsieh, S.; Strong, C.; Lee, Y.-C.; Lewandowsky, S.; Dennis, S.; Yang, C.-T. Young Adults View Smartphone Tracking Technologies for COVID-19 as Acceptable: The Case of Taiwan. Int. J. Environ. Res. Public Health 2021, 18, 1332. https://doi.org/10.3390/ijerph18031332
Garrett PM, Wang Y, White JP, Hsieh S, Strong C, Lee Y-C, Lewandowsky S, Dennis S, Yang C-T. Young Adults View Smartphone Tracking Technologies for COVID-19 as Acceptable: The Case of Taiwan. International Journal of Environmental Research and Public Health. 2021; 18(3):1332. https://doi.org/10.3390/ijerph18031332
Chicago/Turabian StyleGarrett, Paul M., YuWen Wang, Joshua P. White, Shulan Hsieh, Carol Strong, Yi-Chan Lee, Stephan Lewandowsky, Simon Dennis, and Cheng-Ta Yang. 2021. "Young Adults View Smartphone Tracking Technologies for COVID-19 as Acceptable: The Case of Taiwan" International Journal of Environmental Research and Public Health 18, no. 3: 1332. https://doi.org/10.3390/ijerph18031332
APA StyleGarrett, P. M., Wang, Y., White, J. P., Hsieh, S., Strong, C., Lee, Y.-C., Lewandowsky, S., Dennis, S., & Yang, C.-T. (2021). Young Adults View Smartphone Tracking Technologies for COVID-19 as Acceptable: The Case of Taiwan. International Journal of Environmental Research and Public Health, 18(3), 1332. https://doi.org/10.3390/ijerph18031332