Explore topic-wise MCQs in Neural Networks.

This section includes 14 Mcqs, each offering curated multiple-choice questions to sharpen your Neural Networks knowledge and support exam preparation. Choose a topic below to get started.

1.

Use of nonlinear units in the feedback layer of competitive network leads to concept of?

A. feature mapping
B. pattern storage
C. pattern classification
D. none of the mentioned
Answer» E.
2.

What is true for competitive learning?

A. nodes compete for inputs
B. process leads to most efficient neural representation of input space
C. typical for unsupervised learning
D. all of the mentioned
Answer» E.
3.

What is true regarding adaline learning algorithm

A. uses gradient descent to determine the weight vector that leads to minimal error
B. error is defined as MSE between neurons net input and its desired output
C. this technique allows incremental learning
D. all of the mentioned
Answer» E.
4.

In feature maps, when weights are updated for winning unit and its neighbour, which type learning it is known as?

A. karnaugt learning
B. boltzman learning
C. kohonen’s learning
D. none of the mentioned
Answer» D. none of the mentioned
5.

USE_OF_NONLINEAR_UNITS_IN_THE_FEEDBACK_LAYER_OF_COMPETITIVE_NETWORK_LEADS_TO_CONCEPT_OF??$

A. feature mapping
B. pattern storage
C. pattern classification
D. none of the mentioned
Answer» E.
6.

WHAT_IS_TRUE_FOR_COMPETITIVE_LEARNING??$

A. nodes compete for inputs
B. process leads to most efficient neural representation of input space
C. typical for unsupervised learning
D. all of the mentioned
Answer» E.
7.

What is true regarding adaline learning algorith?

A. uses gradient descent to determine the weight vector that leads to minimal error
B. error is defined as MSE between neurons net input and its desired output
C. this technique allows incremental learning
D. all of the mentioned
Answer» E.
8.

In self organizing network, how is layer connected to output layer?

A. some are connected
B. all are one to one connected
C. each input unit is connected to each output unit
D. none of the mentioned
Answer» D. none of the mentioned
9.

In feature maps, when weights are updated for winning unit and its neighbour, which type learning it is known as?

A. karnaugt learning
B. boltzman learning
C. kohonen’s learning
D. none of the mentioned
Answer» D. none of the mentioned
10.

How are weights updated in feature maps?

A. updated for winning unit only
B. updated for neighbours of winner only
C. updated for winning unit and its neighbours
D. none of the mentioned
Answer» D. none of the mentioned
11.

What is the objective of feature maps?

A. to capture the features in space of input patterns
B. to capture just the input patterns
C. update weights
D. to capture output patterns
Answer» B. to capture just the input patterns
12.

How is feature mapping network distinct from competitive learning network?

A. geometrical arrangement
B. significance attached to neighbouring units
C. nonlinear units
D. none of the mentioned
Answer» E.
13.

In pattern clustering, does physical location of a unit relative to other unit has any significance?

A. yes
B. no
C. depends on type of clustering
D. none of the mentioned
Answer» C. depends on type of clustering
14.

What kind of learning is involved in pattern clustering task?

A. supervised
B. unsupervised
C. learning with critic
D. none of the mentioned
Answer» C. learning with critic