If historical sales data shows a specific region was ignored by the sales team, what will a model trained on this data accurately predict for that region?
Answer
Low sales for that region
Historical data reflects past decisions, including biases. A model trained on data where a region was ignored will accurately predict low sales for that region, not because the potential is absent, but because the data failed to capture it.

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