[HTML][HTML] Fairness for machine learning software in education: A systematic map** study
The integration of machine learning (ML) systems into various sectors, notably education,
has great potential to transform business workflows and decision-making processes …
has great potential to transform business workflows and decision-making processes …
Overcoming Data Biases: Towards Enhanced Accuracy and Reliability in Machine Learning.
The pervasive integration of machine learning (ML) across various sectors has underscored
the critical challenge of addressing inherent biases in ML models. These biases not only …
the critical challenge of addressing inherent biases in ML models. These biases not only …
Automated data cleaning can hurt fairness in machine learning-based decision making
In this paper, we interrogate whether data quality issues track demographic group
membership (based on sex, race and age) and whether automated data cleaning—of the …
membership (based on sex, race and age) and whether automated data cleaning—of the …
Fairness-aware machine learning engineering: how far are we?
Abstract Machine learning is part of the daily life of people and companies worldwide.
Unfortunately, bias in machine learning algorithms risks unfairly influencing the decision …
Unfortunately, bias in machine learning algorithms risks unfairly influencing the decision …
Active learning with fairness-aware clustering for fair classification considering multiple sensitive attributes
Z Liu, X Zhang, B Jiang - Information Sciences, 2023 - Elsevier
Fairness concerns have recently been gaining increasing attention in machine learning (ML)
research and applications. ML models typically require massive data, which can be costly …
research and applications. ML models typically require massive data, which can be costly …
Maximizing fair content spread via edge suggestion in social networks
Content spread inequity is a potential unfairness issue in online social networks, disparately
impacting minority groups. In this paper, we view friendship suggestion, a common feature in …
impacting minority groups. In this paper, we view friendship suggestion, a common feature in …
Enforcing Conditional Independence for Fair Representation Learning and Causal Image Generation
Conditional independence (CI) constraints are critical for defining and evaluating fairness in
machine learning as well as for learning unconfounded or causal representations …
machine learning as well as for learning unconfounded or causal representations …
Causal inference in data analysis with applications to fairness and explanations
Causal inference is a fundamental concept that goes beyond simple correlation and model-
based prediction analysis, and is highly relevant in domains such as health, medicine, and …
based prediction analysis, and is highly relevant in domains such as health, medicine, and …
Adaptive boosting with fairness-aware reweighting technique for fair classification
X Song, Z Liu, B Jiang - Expert Systems with Applications, 2024 - Elsevier
Abstract Machine learning methods based on AdaBoost have been widely applied to
various classification problems across many mission-critical applications including …
various classification problems across many mission-critical applications including …
F3KM: Federated, Fair, and Fast k-means
This paper proposes a federated, fair, and fast k-means algorithm (F3KM) to solve the fair
clustering problem efficiently in scenarios where data cannot be shared among different …
clustering problem efficiently in scenarios where data cannot be shared among different …