Machine-learning models can fail when they try to make predictions for individuals who were underrepresented in the datasets they were trained on.
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Machine-learning models can make mistakes and be difficult to use, so scientists have developed explanation methods to help users understand when and how they should trust a model's predictions.
Machine-learning models can fail when they try to make predictions for individuals who were underrepresented in the datasets they were trained on.
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