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Amazon MLS-C01 Exam - Topic 2 Question 131 Discussion

[Exploratory Data Analysis]A machine learning (ML) engineer is preparing a dataset for a classification model. The ML engineer notices that some continuous numeric features have a significantly greater value than most other features. A business expert explains that the features are independently informative and that the dataset is representative of the target distribution.After training, the model's inferences accuracy is lower than expected.Which preprocessing technique will result in the GREATEST increase of the model's inference accuracy?
A) Normalize the problematic features.
B) Bootstrap the problematic features.
C) Remove the problematic features.
D) Extrapolate synthetic features.

Amazon MLS-C01 Exam - Topic 2 Question 131 Discussion

Actual exam question for Amazon's MLS-C01 exam
Question #: 131
Topic #: 2
[All MLS-C01 Questions]

[Exploratory Data Analysis]

A machine learning (ML) engineer is preparing a dataset for a classification model. The ML engineer notices that some continuous numeric features have a significantly greater value than most other features. A business expert explains that the features are independently informative and that the dataset is representative of the target distribution.

After training, the model's inferences accuracy is lower than expected.

Which preprocessing technique will result in the GREATEST increase of the model's inference accuracy?

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Suggested Answer: A

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1 month ago
I remember discussing normalization in class, especially for features with large value ranges. It seems like it could help balance things out.
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