Jump to content
 







Main menu
   


Navigation  



Main page
Contents
Current events
Random article
About Wikipedia
Contact us
Donate
 




Contribute  



Help
Learn to edit
Community portal
Recent changes
Upload file
 








Search  

































Create account

Log in
 









Create account
 Log in
 




Pages for logged out editors learn more  



Contributions
Talk
 



















Contents

   



(Top)
 


1 Types  





2 Reasons for data collaboratives  





3 Incentives for private sector participation  





4 Examples  





5 Risks, challenges, and ethical considerations  



5.1  Risks  





5.2  Mitigating privacy protection issues  





5.3  Mitigating power asymmetries  







6 See also  





7 References  














Data collaboratives






Bahasa Indonesia
 

Edit links
 









Article
Talk
 

















Read
Edit
View history
 








Tools
   


Actions  



Read
Edit
View history
 




General  



What links here
Related changes
Upload file
Special pages
Permanent link
Page information
Cite this page
Get shortened URL
Download QR code
Wikidata item
 




Print/export  



Download as PDF
Printable version
 
















Appearance
   

 






From Wikipedia, the free encyclopedia
 


Data collaboratives (sometimes called “corporate data philanthropy”)[1] are a form of collaboration in which participants from different sectors—including private companies, research institutions, and government agencies—can exchange data and data expertise to help solve public problems.[2][3]

Types[edit]

Data collaboratives can take many forms. They can be organized as:[4]

Reasons for data collaboratives[edit]

The big data boom has demonstrated the power of data to inform and design public projects in an accountable and iterative manner.[8] However, unequal access to certain data across sectors limits the ability of groups to find, access, or be made aware of valuable information, hindering social innovation.[9] Data collaboratives create networks that bridge access and knowledge gaps by bringing different sectors together to share data to address social challenges.[6]

The GovLab argues data collaboratives wherein a private sector data holder shares data with other groups tend to be motivated by a desire for:[4]

Data collaboratives can help respond to service delivery and emergency preparedness and disaster response problems. Robert Kirkpatrick, Director of UN Global Pulse noted that “the lack of innovation [in these sectors have] resulted in a failure to protect the public from what turns out to be preventable harms.”[10]

Incentives for private sector participation[edit]

According to The GovLab, data collaboratives can provide five main benefits for public problems:[4]

Examples[edit]

From 2017 to 2019, the percentage of companies entering data-related partnerships rose from 21% to 40%.[16] A growing share of business competitors are also deciding to connect their data—jumping from 7% to 17%.[6] In a 2019 report, the World Economic Forum and McKinsey estimated that connecting data across institutional and geographic boundaries could create roughly $3 trillion annually in economic value by 2020.[6]

The following is an illustrative (but not exhaustive) list of some data collaboratives:

Risks, challenges, and ethical considerations[edit]

Data collaboratives have significant challenges related to data security, data privacy, commercial risk, reputational concerns and regulatory uncertainty.[29] In addition, there exist concerns about the lack of trust among individuals, institutions and governments.[6]

Risks[edit]

Mitigating privacy protection issues[edit]

Privacy preserving computation (PPC) presents data in forms that can be shared, analyzed, and operated on by multiple stakeholders without the raw information. To do so, PPC seeks to control the environment within which the data is operated on (Trusted Execution Environment) and strips the data of identifying traits (Differential Privacy).[30] Protecting the data via Homomorphic Encryption techniques, PPC allows users to execute operations and see their outcomes without exposing the source data.[6] Through secure Multi-Party Computation, different groups can combine data to work in a decentralized and collaborative manner.[6]

PPC techniques are already being leveraged by governments and large corporations. In 2015, the Estonian government worked with the private firm, Sharemind, to analyze tax and education records through Multi-Party Computation for the Private Statistics Project. An external audit by the European Commission PRACTICE project found that the Private Statistics Project did not expose any personal data.[6]

In 2019, Google released its Private Join and Compute protocol to open-source, allowing users to use Homomorphic Encryption and Multi-Party Computation.[6] In the same year, ten pharmaceutical companies formed the Melloddy consortium to use blockchain technology to train a drug discovery algorithm via shared data.[6]

Mitigating power asymmetries[edit]

Power imbalances can occur when stronger parties manipulate, exclude, or pressure weaker members of the data collaborative. From a classical viewpoint, power refers to the influence a person or group has over another.[31] Examining collaborative governance, Dave Egan, Evan E. Hjerpe, and Jesse Abrams suggest a three-phased approach to power: power over refers to the ability to control the behavior of others, power for looks at the ability to authorize the participation of stakeholders, and power to considers the ability to measure another entity’s ability to realize its goals.[32]

Power imbalances can arise from disparities in authority, resources, legitimacy or trust between parties.[6] The more actors in the data collaborative or more incentives of data use, the increased likelihood for conflicting interests. Oftentimes, data is viewed as an organizational asset, and opening it up to new uses by others means relinquishing control over the data and ceding this autonomy to the collaborative, resulting in the “control and generativity challenge.”[33] Data stewards can help reduce the power imbalances by reducing bias influences, follow operating procedures, and provide issue resolution and remediation.[34]

See also[edit]

References[edit]

  1. ^ Taddeo, Mariarosaria (2017). "Data philanthropy and individual rights". Minds and Machines. 27 (1): 1–5. doi:10.1007/s11023-017-9429-2. S2CID 38297827.
  • ^ Verhulst, Stefaan; Sangokoya, David (22 April 2015). "Data Collaboratives: Exchanging Data to Improve People's Lives". The Governance Lab.
  • ^ a b Young, Andrew; Verhulst, Stefaan (2020). "Data Collaboratives". In Harris, Phil; Bitonti, Alberto; Fleisher, Craig S.; Skorkjær Binderkrantz, Anne (eds.). The Palgrave Encyclopedia of Interest Groups, Lobbying and Public Affairs. Palgrave Macmillan, Cham.
  • ^ a b c Verhulst, Stefaan; Young, Andrew; Srinivasan, Prianka. "An Introduction to Data Collaboratives: Creating Public Value By Exchanging Data" (PDF).
  • ^ a b Verhulst, Stefaan G.; Young, Andrew; Winowatan, Michelle; Zahuranec, Andrew J. (October 2019). "Leveraging Data for Public Good: A Descriptive Analysis and Typology of Existing Practices" (PDF). The Governance Lab.
  • ^ a b c d e f g h i j k l m n o p q r s Ibid.
  • ^ "Economic Graph Research". LinkedIn.
  • ^ OECD (2019). The Path to Becoming a Data-Driven Public Sector. Paris: OECD Digital Government Studies, OECD Publishing.
  • ^ Susha, Iryna; Janssen, Marijn; Verhulst, Stefaan (2017). "Data collaboratives as "bazaars"? A review of coordination problems and mechanisms to match demand for data with supply". Transforming Government: People, Process and Policy. 11 (1): 157–172. doi:10.1108/TG-01-2017-0007. S2CID 195968470.
  • ^ Kirkpatrick, Robert (18 March 2019). "Unpacking the Issue of Missed Use and Misuse of Data". UN Global Pulse.
  • ^ Goldman, Hunter (30 December 2014). "Big Data Offers New Opportunities for Community Resilience". The Rockefeller Foundation.
  • ^ Young, Andrew; Verhulst, Stefaan (January 2016). "Battling Ebola in Sierra Leone: Data Sharing to Improve Crisis Response". ODI Impact.
  • ^ "All of Us". All of US.
  • ^ Adler, Natalia; Cattuto, Ciro; Kalimeri, Kyriaki; Paolotti, Daniela; Tizzoni, Michele; Verhulst, Stefaan; Yom-Tov, Elad; Young, Andrew (2019). "How Search Engine Data Enhance the Understanding of Determinants of Suicide in India and Inform Prevention: Observational Study". Journal of Medical Internet Research. 21 (1): e10179. doi:10.2196/10179. PMC 6682304. PMID 30609976.
  • ^ "Thrombotic events and death in inpatient-identified COVID-19" (PDF). Sentinel. 14 December 2020.
  • ^ Hoffman, William; Bick, Raphael; Boral, Austin; Henke, Nicolaus; Olukoya, Didunoluwa; Rifai, Khaled; Roth, Marcus; Youldon, Tom (30 May 2019). "Collaborating for the common good: Navigating public-private data partnerships". McKinsey & Company.
  • ^ "AI4BetterHearts - A Cardiovascular Data Collaborative". Novartis.
  • ^ "Chicago Data Collaborative". Chicago Data Collaborative.
  • ^ "Counter-Trafficking Data Collaborative (CTDC)". www.ctdatacollaborative.org.
  • ^ "Offline Intelligence & Measurement - Increase Return on Ad Spend". Cuebiq.
  • ^ "Data for Good". CubeIQ.
  • ^ "Data Collaborative for Justice". Data Collaborative for Justice.
  • ^ "Data for health and sustainable development". Health Data Collaborative.
  • ^ "What is INDIGO?". Governance Outcomes Lab.
  • ^ "Reclaim your data destiny | InfoSum". www.infosum.com.
  • ^ "Mobility Data Collaborative".
  • ^ "Mobility Data Collaborative Publishes Best Practices for Data Terminology and Governance". SAE International. 5 May 2020.
  • ^ "Home". Water Data Collaborative.
  • ^ "Data Collaboration for the Common Good: Enabling Trust and Innovation Through Public-Private Partnerships" (PDF). World Economic Forum. April 2019.
  • ^ "Maximize collaboration through secure data sharing" (PDF). Accenture. 2019.
  • ^ Weber, Max (1947). Henderson, A.M.; Parsons, T. (eds.). The Theory of Social and Economic Organization. New York: Oxford University Press.
  • ^ Orth, Patricia B.; Cheng, Antony S. (2018). "Who's in Charge? The Role of Power in Collaborative Governance and Forest Management". Humboldt Journal of Social Relations. 1 (40): 191–210. doi:10.55671/0160-4341.1068. S2CID 55822373.
  • ^ Klievink, Bram; van der Voort, Haiko; Veeneman, Wijnand (2018). "Creating value through data collaboratives: Balancing innovation and control". Information Polity. 23 (4): 379–397. doi:10.3233/IP-180070. S2CID 58005713.
  • ^ Downing, Kathy (26 May 2016). "Importance of Data Stewards in Information Governance". Journal of AHIMA Website.

  • Retrieved from "https://en.wikipedia.org/w/index.php?title=Data_collaboratives&oldid=1172863612"

    Categories: 
    Data
    Sharing
    Data management
    Data publishing
    Open access (publishing)
    Open data
    Open science
     



    This page was last edited on 29 August 2023, at 20:19 (UTC).

    Text is available under the Creative Commons Attribution-ShareAlike License 4.0; additional terms may apply. By using this site, you agree to the Terms of Use and Privacy Policy. Wikipedia® is a registered trademark of the Wikimedia Foundation, Inc., a non-profit organization.



    Privacy policy

    About Wikipedia

    Disclaimers

    Contact Wikipedia

    Code of Conduct

    Developers

    Statistics

    Cookie statement

    Mobile view



    Wikimedia Foundation
    Powered by MediaWiki