Benjamin Fabian

h-index25
2papers

2 Papers

LGJan 4, 2024
FairGridSearch: A Framework to Compare Fairness-Enhancing Models

Shih-Chi Ma, Tatiana Ermakova, Benjamin Fabian

Machine learning models are increasingly used in critical decision-making applications. However, these models are susceptible to replicating or even amplifying bias present in real-world data. While there are various bias mitigation methods and base estimators in the literature, selecting the optimal model for a specific application remains challenging. This paper focuses on binary classification and proposes FairGridSearch, a novel framework for comparing fairness-enhancing models. FairGridSearch enables experimentation with different model parameter combinations and recommends the best one. The study applies FairGridSearch to three popular datasets (Adult, COMPAS, and German Credit) and analyzes the impacts of metric selection, base estimator choice, and classification threshold on model fairness. The results highlight the significance of selecting appropriate accuracy and fairness metrics for model evaluation. Additionally, different base estimators and classification threshold values affect the effectiveness of bias mitigation methods and fairness stability respectively, but the effects are not consistent across all datasets. Based on these findings, future research on fairness in machine learning should consider a broader range of factors when building fair models, going beyond bias mitigation methods alone.

CRDec 20, 2017
An Analytical Perspective to Traffic Engineering in Anonymous Communication Systems

Mehran Alidoost Nia, Eduard Babulak, Benjamin Fabian et al.

Anonymous communication systems (ACS) offer privacy and anonymity through the Internet. They are mostly free tools and are popular among users all over the world. In the recent years, anonymity applications faced many problems regarding traffic engineering methods. Even though they ensure privacy under some conditions, their anonymity will be endangered by high performance processing units. To address these issues, this study is devoted to investigating traffic-engineering methods in anonymous communication systems, and proposes an analytical view of the current issues in ACS privacy and anonymity. Our study also indicates new types of solutions for these current issues with ACS.