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.

Linear neurons can be useful for application such as interpolation, is it true?

A. yes
B. no
Answer» B. no
2.

What is the objective of a pattern storage task in a network?

A. to store a given set of patterns
B. to recall a give set of patterns
C. both to store and recall
D. none of the mentioned
Answer» D. none of the mentioned
3.

If input is ‘ a(l) + e ‘ where ‘e’ is the noise introduced, then what is the output if system is interpolative in nature?

A. a(l)
B. a(l) + e
C. could be either a(l) or a(l) + e
D. e
Answer» C. could be either a(l) or a(l) + e
4.

If input is ‘ a(l) + e ‘ where ‘e’ is the noise introduced, then what is the output if system is accretive in nature?

A. a(l)
B. a(l) + e
C. could be either a(l) or a(l) + e
D. e
Answer» B. a(l) + e
5.

If input is ‘ a(l) + e ‘ where ‘e’ is the noise introduced, then what is the output in case of autoassociative feedback network?

A. a(l)
B. a(l) + e
C. could be either a(l) or a(l) + e
D. e
Answer» C. could be either a(l) or a(l) + e
6.

WHAT_IS_THE_OBJECTIVE_OF_A_PATTERN_STORAGE_TASK_IN_A_NETWORK??$

A. to store a given set of patterns
B. to recall a give set of patterns
C. both to store and recall
D. none of the mentioned
Answer» D. none of the mentioned
7.

Linear_neurons_can_be_useful_for_application_such_as_interpolation,_is_it_true?$

A. yes
B. no
Answer» B. no
8.

What property should a feedback network have, to make it useful for storing information?

A. accretive behaviour
B. interpolative behaviour
C. both accretive and interpolative behaviour
D. none of the mentioned
Answer» B. interpolative behaviour
9.

If input is ‘ a(l) + e ‘ where ‘e’ is the noise introduced, then what is the output if system is interpolative in nature?#

A. a(l)
B. a(l) + e
C. could be either a(l) or a(l) + e
D. e
Answer» C. could be either a(l) or a(l) + e
10.

If input is ‘ a(l) + e ‘ where ‘e’ is the noise introduced, then what is the output in case of autoassociative feedback network?$

A. a(l)
B. a(l) + e
C. could be either a(l) or a(l) + e
D. e
Answer» C. could be either a(l) or a(l) + e
11.

Is there any error in linear autoassociative networks?

A. yes
B. no
Answer» C.
12.

What is objective of linear autoassociative feedforward networks?

A. to associate a given pattern with itself
B. to associate a given pattern with others
C. to associate output with input
D. none of the mentioned
Answer» B. to associate a given pattern with others
13.

What is a Boltzman machine?

A. A feedback network with hidden units
B. A feedback network with hidden units and probabilistic update
C. A feed forward network with hidden units
D. A feed forward network with hidden units and probabilistic update
Answer» C. A feed forward network with hidden units
14.

How can false minima be reduced in case of error in recall in feedback neural networks?

A. by providing additional units
B. by using probabilistic update
C. can be either probabilistic update or using additional units
D. none of the mentioned
Answer» C. can be either probabilistic update or using additional units