바로가기 메뉴 본문 바로가기 주메뉴 바로가기
  • 06-3bHave you made an effort to recruit diverse data labelers?
    • It is advised to recruit multiple data labelers with a diverse and even distribution of demographic characteristics and background knowledge to reduce human bias in data labeling.

    • Select labelers considering various requirements of the related sector if the AI service under development aims to solve the duties and problems of a public institution or a specific industrial sector.

    • If you are using open-source datasets instead of collecting data yourself, inspect whether the diversity of labelers has been considered. If external experts are responsible for creating datasets, provide the requirements of qualified data labelers to ensure diversity.