Question
a.
pitts model
b.
rosenblatt perceptron model
c.
both rosenblatt and pitts model
d.
neither rosenblatt nor pitts
Posted under Neural Networks
Engage with the Community - Add Your Comment
Confused About the Answer? Ask for Details Here.
Know the Explanation? Add it Here.
Q. Which of the following model has ability to learn?
Similar Questions
Discover Related MCQs
Q. When both inputs are 1, what will be the output of the pitts model nand gate ?
View solution
Q. Does McCulloch-pitts model have ability of learning?
View solution
Q. Who invented perceptron neural networks?
View solution
Q. What was the 2nd stage in perceptron model called?
View solution
Q. What was the main deviation in perceptron model from that of MP model?
View solution
Q. What is delta (error) in perceptron model of neuron?
View solution
Q. If a(i) is the input, ^ is the error, n is the learning parameter, then how can weight change in a perceptron model be represented?
View solution
Q. What is adaline in neural networks?
View solution
Q. Who invented the adaline neural model?
View solution
Q. What was the main point of difference between the adaline and perceptron model?
View solution
Q. In adaline model what is the relation between output and activation value(x)?
View solution
Q. What is the another name of weight update rule in adaline model based on its functionality?
View solution
Q. In neural how can connectons between different layers be achieved?
View solution
Q. Connections across the layers in standard topologies and among the units within a layer can be organised?
View solution
Q. What is an instar topology?
View solution
Q. What is an outstar topology?
View solution
Q. The operation of instar can be viewed as?
View solution
Q. The operation of outstar can be viewed as?
View solution
Q. If two layers coincide and weights are symmetric(wij=wji), then what is that structure called?
View solution
Q. Heteroassociative memory can be an example of which type of network?
View solution
Suggested Topics
Are you eager to expand your knowledge beyond Neural Networks? We've curated a selection of related categories that you might find intriguing.
Click on the categories below to discover a wealth of MCQs and enrich your understanding of Computer Science. Happy exploring!