adplus-dvertising
frame-decoration

Question

How is hard learning problem solved?

a.

using nonlinear differentiable output function for output layers

b.

using nonlinear differentiable output function for hidden layers

c.

using nonlinear differentiable output function for output and hidden layers

d.

it cannot be solved

Posted under Neural Networks

Answer: (c).using nonlinear differentiable output function for output and hidden layers

Engage with the Community - Add Your Comment

Confused About the Answer? Ask for Details Here.

Know the Explanation? Add it Here.

Q. How is hard learning problem solved?

Similar Questions

Discover Related MCQs

Q. The number of units in hidden layers depends on?

Q. From given input-output pairs pattern recognition model should capture characteristics of the system?

Q. Let a(l), b(l) represent in input-output pairs, where “l” varies in natural range of no.s, then if a(l)=b(l)?

Q. Let a(l), b(l) represent in input-output pairs, where “l” varies in natural range of no.s, then if a(l)=!b(l)?

Q. The recalled output in pattern association problem depends on?

Q. If a(l) gives output b(l) and a’=a(l)+m,where m is small quantity and if a’ gives ouput b(l) then?

Q. If a(l) gives output b(l) and a’=a(l)+m,where m is small quantity and if a’ gives ouput b(l)+n then?

Q. Can system be both interpolative and accretive at same time?

Q. What are 3 basic types of neural nets that form basic functional units?

i)feedforward
ii) loop
iii) recurrent
iv) feedback
v) combination of feed forward and back

Q. Feedback networks are used for autoassociation and pattern storage?

Q. Feedforward networks are also used for autoassociation and pattern storage?

Q. What is the objective of backpropagation algorithm?

Q. The backpropagation law is also known as generalized delta rule, is it true?

Q. What is true regarding backpropagation rule?

Q. There is feedback in final stage of backpropagation algorithm?

Q. What is meant by generalized in statement “backpropagation is a generalized delta rule” ?

Q. What are general limitations of back propagation rule?

Q. What are the general tasks that are performed with backpropagation algorithm?

Q. Does backpropagaion learning is based on gradient descent along error surface?

Q. How can learning process be stopped in backpropagation rule?