Publication | Open Access
Semantic Web technologies and bias in artificial intelligence: A systematic literature review
24
Citations
38
References
2022
Year
Artificial IntelligenceSemantic Web TechnologiesEngineeringSemantic TechnologyLawSemantic WebText MiningComputational Social ScienceWeb SemanticsInformation RetrievalData ScienceBiasData ResourcesFairness (Computer Systems)Language StudiesSystematic Literature ReviewBias In Natural Language ProcessingAlgorithmic BiasKnowledge DiscoveryAi BiasSemantic Web TechniqueFairness (Language Acquisition)Automated Decision-makingBias DetectionSemantic ComputingDataset BiasWeb IntelligenceAlgorithmic FairnessKnowledge ManagementTechnology
Bias in Artificial Intelligence (AI) is a critical and timely issue due to its sociological, economic and legal impact, as decisions made by biased algorithms could lead to unfair treatment of specific individuals or groups. Multiple surveys have emerged to provide a multidisciplinary view of bias or to review bias in specific areas such as social sciences, business research, criminal justice, or data mining. Given the ability of Semantic Web (SW) technologies to support multiple AI systems, we review the extent to which semantics can be a “tool” to address bias in different algorithmic scenarios. We provide an in-depth categorisation and analysis of bias assessment, representation, and mitigation approaches that use SW technologies. We discuss their potential in dealing with issues such as representing disparities of specific demographics or reducing data drifts, sparsity, and missing values. We find research works on AI bias that apply semantics mainly in information retrieval, recommendation and natural language processing applications and argue through multiple use cases that semantics can help deal with technical, sociological, and psychological challenges.
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