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This section includes 12 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. |
For noisy input vectors, Hebb methodology of learning can be employed? |
A. | yes |
B. | no |
Answer» C. | |
2. |
Number of output cases depends on what factor? |
A. | number of inputs |
B. | number of distinct classes |
C. | total number of classes |
D. | none of the mentioned |
Answer» C. total number of classes | |
3. |
In determination of weights by learning, for noisy input vectors what kind of learning should be employed? |
A. | hebb learning law |
B. | widrow learning law |
C. | hoff learning law |
D. | no learning law |
Answer» E. | |
4. |
NUMBER_OF_OUTPUT_CASES_DEPENDS_ON_WHAT_FACTOR??$ |
A. | number of inputs |
B. | number of distinct classes |
C. | total number of classes |
D. | none of the mentioned |
Answer» C. total number of classes | |
5. |
For_noisy_input_vectors,_Hebb_methodology_of_learning_can_be_employed?$ |
A. | yes |
B. | no |
Answer» C. | |
6. |
By using only linear processing units in output layer, can a artificial neural network capture association if input patterns is greater then dimensionality of input vectors? |
A. | yes |
B. | no |
Answer» C. | |
7. |
Can a artificial neural network capture association if input patterns is greater then dimensionality of input vectors? |
A. | yes |
B. | no |
Answer» B. no | |
8. |
what are affine transformations? |
A. | addition of bias term (-1) which results in arbitrary rotation, scaling, translation of input pattern. |
B. | addition of bias term (+1) which results in arbitrary rotation, scaling, translation of input pattern. |
C. | addition of bias term (-1) or (+1) which results in arbitrary rotation, scaling, translation of input pattern. |
D. | none of the mentioned |
Answer» B. addition of bias term (+1) which results in arbitrary rotation, scaling, translation of input pattern. | |
9. |
What is the features that cannot be accomplished earlier without affine transformations? |
A. | arbitrary rotation |
B. | scaling |
C. | translation |
D. | all of the mentioned |
Answer» D. all of the mentioned | |
10. |
What are the features that can be accomplished using affine transformations? |
A. | arbitrary rotation |
B. | scaling |
C. | translation |
D. | all of the mentioned |
Answer» E. | |
11. |
In determination of weights by learning, for linear input vectors what kind of learning should be employed? |
A. | hebb learning law |
B. | widrow learning law |
C. | hoff learning law |
D. | no learning law |
Answer» C. hoff learning law | |
12. |
In determination of weights by learning, for orthogonal input vectors what kind of learning should be employed? |
A. | hebb learning law |
B. | widrow learning law |
C. | hoff learning law |
D. | no learning law |
Answer» B. widrow learning law | |