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.

In competitive learning, node with highest activation is the winner, is it true?

A. yes
B. no
Answer» B. no
2.

Generally how many kinds of pattern storage network exist?

A. 2
B. 3
C. 4
D. 5
Answer» C. 4
3.

What is the nature of weights in plain hebbian learning?

A. convergent
B. divergent
C. may be convergent or divergent
D. none of the mentioned
Answer» C. may be convergent or divergent
4.

The weight change in plain hebbian learning is?

A. 0
B. 1
C. 0 or 1
D. none of the mentioned
Answer» E.
5.

GENERALLY_HOW_MANY_KINDS_OF_PATTERN_STORAGE_NETWORK_EXIST??$

A. 2
B. 3
C. 4
D. 5
Answer» C. 4
6.

In competitive learning, node with highest activation is the winner, is it true?$

A. yes
B. no
Answer» B. no
7.

what kind of feedbacks are given in competitive layer?

A. self excitatory to self and others
B. inhibitory to self and others
C. self excitatory to self and inhibitory to others
D. inhibitory to self and excitatory to others
Answer» D. inhibitory to self and excitatory to others
8.

What is the other name of feedback layer in competitive neural networks?

A. feedback layer
B. feed layer
C. competitive layer
D. no such name exist
Answer» D. no such name exist
9.

What is ojas rule?

A. finds a unit weight vector
B. maximises the mean squared output
C. minimises the mean squared output
D. none of the mentioned
Answer» E.
10.

By normalizing the weight at every stage can we prevent divergence?

A. yes
B. no
Answer» B. no
11.

How can divergence be prevented?

A. using hopfield criteria
B. sangers rule
C. ojas rule
D. sangers or ojas rule
Answer» E.
12.

What is the nature of weights in plain hebbian learning?

A. convergent
B. divergent
C. may be convergent or divergent
D. none of the mentioned
Answer» C. may be convergent or divergent
13.

The weight change in plain hebbian learning is?

A. 0
B. 1
C. 0 or 1
D. none of the mentioned
Answer» E.
14.

An instar can respond to a set of input vectors even if its not trained to capture the behaviour of the set?

A. yes
B. no
Answer» B. no