One type of error that can result from feature nets is over-regularization. Is over-regularization a significant problem?
A) Yes, because it leads to many errors.
B) Yes; not many errors occur, but they are really devastating.
C) No; these errors are infrequent and usually unproblematic.
D) No; these errors occur often, but are small and easily corrected.
Correct Answer:
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