Publication | Open Access
Fairness in Proprietary Image Tagging Algorithms: A Cross-Platform Audit on People Images
39
Citations
34
References
2019
Year
EngineeringBiometricsInformation ForensicsCommunicationComputational Social ScienceImage AnalysisSocial MediaData ScienceGround TruthBiasImage TaggersFairness (Computer Systems)Language StudiesFair Data PrincipleContent AnalysisAlgorithmic BiasCross-platform AuditData PrivacyPeople ImagesComputer ScienceSocial Multimedia TaggingData Re-identificationSocial ComputingAlgorithmic FairnessHuman-computer InteractionHuman-centered Computing
There are increasing expectations that algorithms should behave in a manner that is socially just. We consider the case of image tagging APIs and their interpretations of people images. Image taggers have become indispensable in our information ecosystem, facilitating new modes of visual communication and sharing. Recently, they have become widely available as Cognitive Services. But while tagging APIs offer developers an inexpensive and convenient means to add functionality to their creations, most are opaque and proprietary. Through a cross-platform comparison of six taggers, we show that behaviors differ significantly. While some offer more interpretation on images, they may exhibit less fairness toward the depicted persons, by misuse of gender-related tags and/or making judgments on a person’s physical appearance. We also discuss the difficulties of studying fairness in situations where algorithmic systems cannot be benchmarked against a ground truth.
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