Determine applicability: Consider this question if there is a possibility of creating a dataset for developing AI algorithms or models in the public sector or of collecting data in addition to the dataset in the future and determine if the requirement has been satisfied.
• When collecting and cleansing data, promote data comprehension by providing information about the data after cleansing with raw data, and provide the necessary information in collecting additional data by defining training data and metadata.
• Specifically, there must be explanations about the protected attributes that greatly affect the trustworthiness of AI in the public sector. Therefore, when performing labeling work, labelers must be guided with precautions and how to use special tools for labeling.