Multiple Choice
We have built and tested two supervised learner modelsM1 and M2. We compare the test set accuracy of the models using the classical hypothesis testing paradigm using a 95% confidence setting.
The computed value of P is 2.53. What can we say about this result?
A) Model M1 performs significantly better than M2.
B) Model M2 performs significantly better than M1.
C) Both models perform at the same level of accuracy.
D) The models differ significantly in their performance.
E) More than one of a,b,c or d is correct.
Correct Answer:

Verified
Correct Answer:
Verified
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