With the inverted dropout technique, at test time:

  1. With the inverted dropout technique, at test time:
    •  You apply dropout (randomly eliminating units) and do not keep the 1/keep_prob factor in the calculations used in training
    •  You do not apply dropout (do not randomly eliminate units) and do not keep the 1/keep_prob factor in the calculations used in training
    •  You do not apply dropout (do not randomly eliminate units), but keep the 1/keep_prob factor in the calculations used in training.
    •  You apply dropout (randomly eliminating units) but keep the 1/keep_prob factor in the calculations used in training.

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