Publication | Closed Access
Bias, Fairness and Accountability with Artificial Intelligence and Machine Learning Algorithms
50
Citations
21
References
2022
Year
Artificial IntelligenceEngineeringMachine LearningMachine Learning AlgorithmsAlgorithmic AccountabilityFairness In Natural Language ProcessingLawResponsible AiData ScienceFairness MetricsBiasFairness (Computer Systems)Ethic Of Artificial IntelligencePublic PolicyAlgorithmic BiasComputer ScienceFairness (Language Acquisition)Bias DetectionDataset BiasAlgorithmic FairnessCost-sensitive Machine LearningMedicineArtificial Intelligence Ethics
Summary The advent of artificial intelligence (AI) and machine learning algorithms has led to opportunities as well as challenges in their use. In this overview paper, we begin with a discussion of bias and fairness issues that arise with the use of AI techniques, with a focus on supervised machine learning algorithms. We then describe the types and sources of data bias and discuss the nature of algorithmic unfairness. In addition, we provide a review of fairness metrics in the literature, discuss their limitations, and describe de‐biasing (or mitigation) techniques in the model life cycle.
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