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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 | |