ExamGecko
Question list
Search
Search

Question 39 - D-GAI-F-01 discussion

Report
Export

In a Generative Adversarial Network (GAN), you have a network that evaluates whether the data generated by the other network is real or fake. What is this evaluating network called?

A.
Generator
Answers
A.
Generator
B.
Decoder
Answers
B.
Decoder
C.
Discriminator
Answers
C.
Discriminator
D.
Encoder
Answers
D.
Encoder
Suggested answer: C

Explanation:

In a Generative Adversarial Network (GAN), the network that evaluates whether the data generated by the other network is real or fake is called the Discriminator. The GAN architecture consists of two main components: the Generator and the Discriminator. The Generator's role is to create data that is similar to the real data, while the Discriminator's role is to evaluate the data and determine if it is real (from the actual dataset) or fake (created by the Generator). The Discriminator learns to make this distinction through training, where it is presented with both real and generated data1.

This setup creates a competitive environment where the Generator improves its ability to create realistic data, and the Discriminator improves its ability to detect fakes. This adversarial process enhances the quality of the generated data over time, making GANs powerful tools for generating new data instances that are indistinguishable from real data1.

The terms ''Decoder'' (Option OB) and ''Encoder'' (Option OD) are associated with different types of neural network architectures, such as autoencoders, and do not describe the evaluating network in a GAN. The ''Generator'' (Option OA) is the part of the GAN that creates data, not the part that evaluates it. Therefore, the correct answer is C. Discriminator, as it is the network within a GAN that is responsible for evaluating the authenticity of the generated data1.


asked 16/09/2024
Maximo Ian Canino
40 questions
User
Your answer:
0 comments
Sorted by

Leave a comment first