Deck 8: Neural Networks
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Deck 8: Neural Networks
1
During backpropagation training, the purpose of the delta rule is to make weight adjustments so as to
A) minimize the number of times the training data must pass through the network.
B) minimize the number of times the test data must pass through the network.
C) minimize the sum of absolute differences between computed and actual outputs.
D) minimize the sum of squared error differences between computed and actual output.
A) minimize the number of times the training data must pass through the network.
B) minimize the number of times the test data must pass through the network.
C) minimize the sum of absolute differences between computed and actual outputs.
D) minimize the sum of squared error differences between computed and actual output.
D
2
Genetic learning can be used to train a feed-forward network. This is accomplished by having each population element represent one possible
A) network configuration of nodes and links.
B) set of training data to be fed through the network.
C) set of network output values.
D) set of network connection weights.
A) network configuration of nodes and links.
B) set of training data to be fed through the network.
C) set of network output values.
D) set of network connection weights.
D
3
With a Kohonen network, the output layer node that wins an input instance is rewarded by having
A) a higher probability of winning the next training instance to be presented.
B) its connect weights modified to more closely match those of the input instance.
C) its connection weights modified to more closey match those of its neighbors.
D) neighoring connection weights modified to become less similar to its own connection weights.
A) a higher probability of winning the next training instance to be presented.
B) its connect weights modified to more closely match those of the input instance.
C) its connection weights modified to more closey match those of its neighbors.
D) neighoring connection weights modified to become less similar to its own connection weights.
B
4
A feed-forward neural network is said to be fully connected when
A) all nodes are connected to each other.
B) all nodes at the same layer are connected to each other.
C) all nodes at one layer are connected to the nodes in the next higher layer.
D) all hidden layer nodes are connected to all output layer nodes.
A) all nodes are connected to each other.
B) all nodes at the same layer are connected to each other.
C) all nodes at one layer are connected to the nodes in the next higher layer.
D) all hidden layer nodes are connected to all output layer nodes.
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5
Which one of the following is not a major strength of the neural network approach?
A) Neural networks work well with datasets containing noisy data.
B) Neural networks can be used for both supervised learning and unsupervised clustering.
C) Neural network learning algorithms are guaranteed to converge to an optimal solution.
D) Neural networks can be used for applications that require a time element to be included in the data.
A) Neural networks work well with datasets containing noisy data.
B) Neural networks can be used for both supervised learning and unsupervised clustering.
C) Neural network learning algorithms are guaranteed to converge to an optimal solution.
D) Neural networks can be used for applications that require a time element to be included in the data.
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6
This neural network explanation technique is used to determine the relative importance of individual input attributes.
A) sensitivity analysis
B) average member technique
C) mean squared error analysis
D) absolute average technique
A) sensitivity analysis
B) average member technique
C) mean squared error analysis
D) absolute average technique
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7
A two-layered neural network used for unsupervised clustering.
A) backpropagation network
B) Kohonen network
C) perceptron network
D) aggomerative network
A) backpropagation network
B) Kohonen network
C) perceptron network
D) aggomerative network
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8
Neural network training is accomplished by repeatedly passing the training data through the network while
A) individual network weights are modified.
B) training instance attribute values are modified.
C) the ordering of the training instances is modified.
D) individual network nodes have the coefficients on their corresponding functional parameters modified.
A) individual network weights are modified.
B) training instance attribute values are modified.
C) the ordering of the training instances is modified.
D) individual network nodes have the coefficients on their corresponding functional parameters modified.
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9
The values input into a feed-forward neural network
A) may be categorical or numeric.
B) must be either all categorical or all numeric but not both.
C) must be numeric.
D) must be categorical.
A) may be categorical or numeric.
B) must be either all categorical or all numeric but not both.
C) must be numeric.
D) must be categorical.
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10
Epochs represent the total number of
A) input layer nodes.
B) passes of the training data through the network.
C) network nodes.
D) passes of the test data through the network.
A) input layer nodes.
B) passes of the training data through the network.
C) network nodes.
D) passes of the test data through the network.
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