Deck 9: Building Neural Networks With Ida

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سؤال
This type of supervised network architecture does not contain a hidden layer.

A) backpropagation
B) perceptron
C) self-organizing map
D) genetic
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سؤال
The test set accuracy of a backpropagation neural network can often be improved by

A) increasing the number of epochs used to train the network.
B) decreasing the number of hidden layer nodes.
C) increasing the learning rate.
D) decreasing the number of hidden layers.
سؤال
The total delta measures the total absolute change in network connection weights for each pass of the training data through a neural network. This value is most often used to determine the convergence of a

A) perceptron network.
B) feed-forward network.
C) backpropagation network.
D) self-organizing network.
سؤال
Two classes each of which is represented by the same pair of numeric attributes are linearly separable if

A) at least one of the pairs of attributes shows a curvilinear relationship between the classes.
B) at least one of the pairs of attributes shows a high positive correlation between the classes.
C) at least one of the pairs of attributes shows a high positive correlation between the classes.
D) a straight line partitions the instances of the two classes.
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Deck 9: Building Neural Networks With Ida
1
This type of supervised network architecture does not contain a hidden layer.

A) backpropagation
B) perceptron
C) self-organizing map
D) genetic
B
2
The test set accuracy of a backpropagation neural network can often be improved by

A) increasing the number of epochs used to train the network.
B) decreasing the number of hidden layer nodes.
C) increasing the learning rate.
D) decreasing the number of hidden layers.
A
3
The total delta measures the total absolute change in network connection weights for each pass of the training data through a neural network. This value is most often used to determine the convergence of a

A) perceptron network.
B) feed-forward network.
C) backpropagation network.
D) self-organizing network.
C
4
Two classes each of which is represented by the same pair of numeric attributes are linearly separable if

A) at least one of the pairs of attributes shows a curvilinear relationship between the classes.
B) at least one of the pairs of attributes shows a high positive correlation between the classes.
C) at least one of the pairs of attributes shows a high positive correlation between the classes.
D) a straight line partitions the instances of the two classes.
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افتح القفل للوصول البطاقات البالغ عددها 4 في هذه المجموعة.