Mitigating Bias in Algorithmic Systems - A Fish-Eye View
Creators
- 1. Open University of Cyprus
- 2. Open University of Cyprus, CYENS Centre of Excellence
- 3. University of Trento
- 4. University of Haifa
Description
Mitigating bias in algorithmic systems is a critical issue drawing attention across communities within the information and computer sciences. Given the complexity of the problem and the involvement of multiple stakeholders – including developers, end-users and third-parties – there is a need to understand the landscape of the sources of bias, and the solutions being proposed to address them. This survey provides a “fish-eye view," examining approaches across four areas of research. The literature describes three steps toward a comprehensive treatment – bias detection, fairness management and explainability management – and underscores the need to work from within the system as well as from the perspective of stakeholders in the broader context.
Files
arxiv_survey_paper.pdf
Files
(880.3 kB)
Name | Size | Download all |
---|---|---|
md5:fbba4794bdf5dfaf20f54c69f590448d
|
880.3 kB | Preview Download |