ExamGecko
Question list
Search
Search

List of questions

Search

Question 29 - H13-311_V3.5 discussion

Report
Export

The training error decreases as the model complexity increases.

A.
TRUE
Answers
A.
TRUE
B.
FALSE
Answers
B.
FALSE
Suggested answer: A

Explanation:

As the model complexity increases (for example, by adding more layers to a neural network or increasing the depth of a decision tree), the training error tends to decrease. This is because more complex models are able to fit the training data better, possibly even capturing noise. However, increasing complexity often leads to overfitting, where the model performs well on the training data but poorly on unseen test data.

The relationship between model complexity and performance is covered extensively in Huawei HCIA AI's discussion of overfitting and underfitting and how model generalization is affected by increasing model complexity.

HCIA AI

Machine Learning Overview: Explains model complexity and its effect on training and testing error curves.

Deep Learning Overview: Discusses the balance between model capacity, overfitting, and underfitting in deep learning architectures.

asked 26/09/2024
Haakon Schjelderup
53 questions
User
Your answer:
0 comments
Sorted by

Leave a comment first