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Preferred Colleague Dataset: A Human-Annotated Dataset of Perceived Colleague Preference

Author

Listed:
  • Deepu Krishnareddy

    (Reutlingen University, Alteburgstraße 150, 72762 Reutlingen, Germany)

  • Bakir Hadžić

    (Reutlingen University, Alteburgstraße 150, 72762 Reutlingen, Germany)

  • Hamid Gazerpour

    (Reutlingen University, Alteburgstraße 150, 72762 Reutlingen, Germany)

  • Michael Danner

    (Autonomous Systems, Bochum University of Applied Sciences, Am Hochschulcampus 1, 44801 Bochum, Germany)

  • Zhuoqi Zeng

    (Hainan Bielefeld University of Applied Sciences, No. 1, Xizhao Road, Yangpu Economic Development Zone, Danzhou 578101, China)

  • Matthias Rätsch

    (Reutlingen University, Alteburgstraße 150, 72762 Reutlingen, Germany)

Abstract

Recruitment is a time-consuming process, and AI systems are increasingly being used to support the decision-making process. However, machine learning models used in such systems can inherit bias if the underlying training data reflects biased human preferences. It is essential to analyze and quantify these biases in order to develop fairer AI systems. To address this issue, we collected human judgments of colleague preference for 2200 face images. The face image set includes images of different ethnicities and genders, as well as both real and synthetically generated faces. The images were annotated by humans from diverse backgrounds in terms of age, gender, and ethnicity. Annotators were shown series of pairs of face images and asked to select which individual they would prefer as a colleague. We gathered responses from 451 annotators and aggregated the annotations to compute a preference score for each image. This dataset provides a basis for understanding human bias in colleague preference and can support the development of fair and unbiased AI models for use in recruitment settings.

Suggested Citation

  • Deepu Krishnareddy & Bakir Hadžić & Hamid Gazerpour & Michael Danner & Zhuoqi Zeng & Matthias Rätsch, 2026. "Preferred Colleague Dataset: A Human-Annotated Dataset of Perceived Colleague Preference," Data, MDPI, vol. 11(5), pages 1-9, May.
  • Handle: RePEc:gam:jdataj:v:11:y:2026:i:5:p:100-:d:1933508
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