Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Kuba, Magdalena
and
Staszewska, Ewa
2022.
Profilowanie pomocy dla bezrobotnych – dotychczasowe doświadczenia i nowe wyzwania z perspektywy praw człowieka.
Studia z zakresu Prawa Pracy i Polityki Społecznej,
Vol. 29,
Issue. 2,
p.
173.
Beiró, Mariano G.
and
Kalimeri, Kyriaki
2022.
Fairness in vulnerable attribute prediction on social media.
Data Mining and Knowledge Discovery,
Vol. 36,
Issue. 6,
p.
2194.
Liutkevičius, Markko
and
Yahia, Sadok Ben
2022.
Research Roadmap for Designing a Virtual Competence Assistant for the European Labour Market.
Procedia Computer Science,
Vol. 207,
Issue. ,
p.
2404.
CONSIDINE, MARK
MCGANN, MICHAEL
BALL, SARAH
and
NGUYEN, PHUC
2022.
Can Robots Understand Welfare? Exploring Machine Bureaucracies in Welfare-to-Work.
Journal of Social Policy,
Vol. 51,
Issue. 3,
p.
519.
HENMAN, PAUL W. FAY
2022.
Digital Social Policy: Past, Present, Future.
Journal of Social Policy,
Vol. 51,
Issue. 3,
p.
535.
Scott, Kristen M.
Wang, Sonja Mei
Miceli, Milagros
Delobelle, Pieter
Sztandar-Sztanderska, Karolina
and
Berendt, Bettina
2022.
Algorithmic Tools in Public Employment Services: Towards a Jobseeker-Centric Perspective.
p.
2138.
Carney, Terry
2023.
<i>Money, Power, and AI</i>.
p.
95.
Dreyling, Richard Michael
Tammet, Tanel
and
Pappel, Ingrid
2023.
Future Data and Security Engineering. Big Data, Security and Privacy, Smart City and Industry 4.0 Applications.
Vol. 1925,
Issue. ,
p.
341.
Bach, Ruben L.
Kern, Christoph
Mautner, Hannah
and
Kreuter, Frauke
2023.
The impact of modeling decisions in statistical profiling.
Data & Policy,
Vol. 5,
Issue. ,
Ball, Sarah
McGann, Michael
Nguyen, Phuc
and
Considine, Mark
2023.
Emerging modes of digitalisation in the delivery of welfare‐to‐work: Implications for street‐level discretion.
Social Policy & Administration,
Vol. 57,
Issue. 7,
p.
1166.
Malik, Ashish
Budhwar, Pawan
and
Kazmi, Bahar Ali
2023.
Artificial intelligence (AI)-assisted HRM: Towards an extended strategic framework.
Human Resource Management Review,
Vol. 33,
Issue. 1,
p.
100940.
Gallagher, Patrick
and
Griffin, Ray
2023.
(in) Accuracy in Algorithmic Profiling of the Unemployed – An Exploratory Review of Reporting Standards.
Social Policy and Society,
p.
1.
Haug, Kristian Bloch
2023.
Structuring the scattered literature on algorithmic profiling in the case of unemployment through a systematic literature review.
International Journal of Sociology and Social Policy,
Vol. 43,
Issue. 5/6,
p.
454.
Grill, Gabriel
Fischer, Fabian
and
Cech, Florian
2023.
Bias as Boundary Object: Unpacking The Politics Of An Austerity Algorithm Using Bias Frameworks.
p.
1838.
Sansone, Dario
and
Zhu, Anna
2023.
Using Machine Learning to Create an Early Warning System for Welfare Recipients*.
Oxford Bulletin of Economics and Statistics,
Vol. 85,
Issue. 5,
p.
959.
Berdahl, Carl Thomas
Baker, Lawrence
Mann, Sean
Osoba, Osonde
and
Girosi, Federico
2023.
Strategies to Improve the Impact of Artificial Intelligence on Health Equity: Scoping Review.
JMIR AI,
Vol. 2,
Issue. ,
p.
e42936.
2023.
<i>Money, Power, and AI</i>.
p.
93.
Dossche, Wouter
Vansteenkiste, Sarah
Baesens, Bart
and
Lemahieu, Wilfried
2024.
Interpretable and Accurate Identification of Job Seekers at Risk of Long-Term Unemployment: Explainable ML-Based Profiling.
SN Computer Science,
Vol. 5,
Issue. 5,
Liutkevičius, Markko
Samaranayaka, Piyumi
Nõmmik, Sander
Yahia, Sadok Ben
and
Weck, Marina
2024.
In Pursuit of AI Excellence in Public Employment Services: Identifying the Requirements.
TalTech Journal of European Studies,
Vol. 14,
Issue. 2,
p.
167.
Zezulka, Sebastian
and
Genin, Konstantin
2024.
From the Fair Distribution of Predictions to the Fair Distribution of Social Goods: Evaluating the Impact of Fair Machine Learning on Long-Term Unemployment.
p.
1984.