The rush to understand new socio-economic contexts created by the wide adoption of AI is justified by its far-ranging consequences, spanning almost every walk of life. Yet, the public sector's predicament is a tragic double bind: its obligations to protect citizens from potential algorithmic harms are at odds with the temptation to increase its own efficiency - or in other words - to govern algorithms, while governing algorithms. Whether such dual role is even possible, has been a matter of debate, the challenge stemming from algorithms' intrinsic properties, that make them distinct from other digital solutions, long embraced by the governments, create externalities that rule-based programming lacks. As the pressures to deploy automated decision making systems in the public sector become prevalent, this paper aims to examine how the use of AI in the public sector in relation to existing data governance regimes and national regulatory practices can be existing power asymmetries. To this end, investigating the legal and policy instruments associated with the use of AI for strenghtening the immigration process control system in Canada; "optimising" the employment services" in Poland, and personalising the digital service experience in Finland, the paper advocates for the need of a common framework to evaluate the potential impact of the use of AI in the public sector. In this regard, it discusses the specific effects of automated decision support systems on public services and the growing expectations for governments to play a more prevalent role in the digital society and to ensure that the potential of technology is harnessed, while negative effects are controlled and possibly avoided. This is of particular importance in light of the current COVID-19 emergency crisis where AI and the underpinning regulatory framework of data ecosystems, have become crucial policy issues as more and more innovations are based on large scale data collections from digital devices, and the real-time accessibility of information and services, contact and relationships between institutions and citizens could strengthen - or undermine - trust in governance systems and democracy.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7164913PMC
http://dx.doi.org/10.1016/j.telpol.2020.101976DOI Listing

Publication Analysis

Top Keywords

public sector
16
automated decision
8
systems public
8
public
5
governance public
4
sector
4
sector three
4
three tales
4
tales frontiers
4
frontiers automated
4

Similar Publications

Introduction: In Senegal, the Routine Health Information System (RHIS) captures the majority of data from the Ministry of Health and Social Action (MHSA) public structures and very little health data from the private sector and other ministerial departments. Quality data strengthens the validity and reliability of research results. Common areas of data quality include accuracy, completeness, consistency, credibility, and timeliness.

View Article and Find Full Text PDF

Evaluating stakeholder coordination and partnerships for NTD elimination in Taraba state, Nigeria: a multi-level analysis.

BMC Infect Dis

January 2025

Pan-African Community Initiative on Education and Health (PACIEH), Ekulu West GRA, No. 8 Somto Anugwom Close, Enugu, Enugu State, 400102, Nigeria.

Introduction: Nigeria has a significant burden of NTDs with more than 120 million people at risk of the dominant NTDs namely Lymphatic Filariasis, Onchocerciasis, and Schistosomiasis. Control efforts have involved the four levels of governance with programs focused on vector control, preventive chemotherapy, water, sanitation and health education. However, the coordination across these levels and with multiple stakeholders remains unclear especially in states like Taraba that have received significant funding from local non-governmental organisations.

View Article and Find Full Text PDF

Collaborative initiatives of the drone industry and healthcare sector are becoming a pivotal step in restructuring healthcare service delivery in India. This paper documents knowledge and perceptions of healthcare workers from various districts of Manipur and Nagaland towards the use of drones for medical supply in the region. The study utilized 27 in-depth interviews with healthcare workers to collect qualitative data, which was then analyzed using NVivo 14 for thematic and content analysis.

View Article and Find Full Text PDF

ObjectiveCOVID-19 affected health care globally. The aim of this study was to investigate the impact of COVID-19 on both public and private emergency departments (EDs).MethodsThis was a retrospective cohort study of ED presentations made to three private and two public hospital EDs located in one region in Queensland.

View Article and Find Full Text PDF

Gold and stocks, which are conventionally regarded as a safe haven and risk assets, respectively, exhibit complex interrelationships, with significant implications for financial risk management. This paper builds on the sentiment categorization proposed by Liang et al. (2020) to distinguish between private and public sector sentiment.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!