Question
When is Manhattan distance potentially preferable to Euclidean distance?
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Correct Answer: B. When coordinate-wise absolute differences are more appropriate or outlier sensitivity should be reduced
Explanation:
Manhattan distance sums absolute differences rather than squared contributions.
It can be more robust in some high-dimensional settings.
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