Bias mitigation for machine learning classifiers: A comprehensive survey
This article provides a comprehensive survey of bias mitigation methods for achieving
fairness in Machine Learning (ML) models. We collect a total of 341 publications concerning …
fairness in Machine Learning (ML) models. We collect a total of 341 publications concerning …
Black-box access is insufficient for rigorous ai audits
External audits of AI systems are increasingly recognized as a key mechanism for AI
governance. The effectiveness of an audit, however, depends on the degree of access …
governance. The effectiveness of an audit, however, depends on the degree of access …
Fairness issues, current approaches, and challenges in machine learning models
With the increasing influence of machine learning algorithms in decision-making processes,
concerns about fairness have gained significant attention. This area now offers significant …
concerns about fairness have gained significant attention. This area now offers significant …
A comprehensive empirical study of bias mitigation methods for machine learning classifiers
Software bias is an increasingly important operational concern for software engineers. We
present a large-scale, comprehensive empirical study of 17 representative bias mitigation …
present a large-scale, comprehensive empirical study of 17 representative bias mitigation …
Cctest: Testing and repairing code completion systems
Code completion, a highly valuable topic in the software development domain, has been
increasingly promoted for use by recent advances in large language models (LLMs). To …
increasingly promoted for use by recent advances in large language models (LLMs). To …
A survey on intersectional fairness in machine learning: Notions, mitigation, and challenges
The widespread adoption of Machine Learning systems, especially in more decision-critical
applications such as criminal sentencing and bank loans, has led to increased concerns …
applications such as criminal sentencing and bank loans, has led to increased concerns …
Latent imitator: Generating natural individual discriminatory instances for black-box fairness testing
Machine learning (ML) systems have achieved remarkable performance across a wide area
of applications. However, they frequently exhibit unfair behaviors in sensitive application …
of applications. However, they frequently exhibit unfair behaviors in sensitive application …
Towards fair machine learning software: Understanding and addressing model bias through counterfactual thinking
The increasing use of Machine Learning (ML) software can lead to unfair and unethical
decisions, thus fairness bugs in software are becoming a growing concern. Addressing …
decisions, thus fairness bugs in software are becoming a growing concern. Addressing …
[HTML][HTML] Multi-objective search for gender-fair and semantically correct word embeddings
Fairness is a crucial non-functional requirement of modern software systems that rely on the
use of Artificial Intelligence (AI) to make decisions regarding our daily lives in application …
use of Artificial Intelligence (AI) to make decisions regarding our daily lives in application …
Fairness Improvement with Multiple Protected Attributes: How Far Are We?
Existing research mostly improves the fairness of Machine Learning (ML) software regarding
a single protected attribute at a time, but this is unrealistic given that many users have …
a single protected attribute at a time, but this is unrealistic given that many users have …