Question
a.
the system learns from its past mistakes
b.
the system recalls previous reference inputs and respective ideal outputs
c.
the strength of neural connection get modified accordingly
d.
none of the mentioned
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. What is hebb’s rule of learning?
Similar Questions
Discover Related MCQs
Q. Are all neuron in brain are of same type?
View solution
Q. What is estimate number of neurons in human cortex?
View solution
Q. What is estimated density of neuron per mm² of cortex?
View solution
Q. Why can’t we design a perfect neural network?
View solution
Q. How many synaptic connection are there in human brain?
View solution
Q. Operations in the neural networks can perform what kind of operations?
View solution
Q. Does the argument information in brain is adaptable, whereas in the computer it is replaceable is valid?
View solution
Q. Does there exist central control for processing information in brain as in computer?
View solution
Q. Which action is faster pattern classification or adjustment of weights in neural nets?
View solution
Q. What is the feature of ANNs due to which they can deal with noisy, fuzzy, inconsistent data?
View solution
Q. What was the name of the first model which can perform wieghted sum of inputs?
View solution
Q. Who developed the first learning machine in which connection strengths could be adapted automatically?
View solution
Q. Who proposed the first perceptron model in 1958?
View solution
Q. John hopfield was credited for what important aspec of neuron?
View solution
Q. What is the contribution of Ackley, Hinton in neural?
View solution
Q. What is ART in neural networks?
View solution
Q. What is an activation value?
View solution
Q. Positive sign of weight indicates?
View solution
Q. Negative sign of weight indicates?
View solution
Q. The amount of output of one unit received by another unit depends on what?
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!