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  • 06-2aHave you made a thorough analysis when selecting the protected attributes?
    • If there is no thorough analysis when selecting protected attributes, it can result in low performance of the AI model. Therefore, upon identifying attributes that affect the model’s inference result, change some of the data in the given dataset to observe and analyze the progress of changes in the result of the AI model.

    • As for the regression and classification model based on machine learning, use tools that visualize the progress of the inference result according to data shifts (e.g. Google’s What-If Tool) to learn the level of impact of the configured protected attributes on unfair result and how these attributes affect the performance.

    • The problems of bias and protected attributes may not yet be a major consideration because the maximization of algorithm performance is being prioritized along with the continuous development of healthcare AI. Minority problems in data such as “small data” or “particular diseases” are significant in the healthcare sector, and the focus is instead on collecting rare data that include lesions and other data in good quality as many as possible. In spite of this, the possibility of bias exists at all times like general AI, necessitating a review on the possibility of theoretical bias and measures to remove biases by setting protected attributes. The following are examples of bias in medical data—the common topic under discussions.