Question
a.
reinforcement signal given to input-output pair don’t change with time
b.
input-output pair determine probability of postive reinforcement
c.
input pattern depends on past history
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 temporal credit assignment?
Similar Questions
Discover Related MCQs
Q. Boltzman learning uses what kind of learning?
View solution
Q. Whats true for sparse encoding learning?
View solution
Q. Whats true for Drive reinforcement learning?
View solution
Q. Whats true for Min-max learning?
View solution
Q. Whats true for principal component learning?
View solution
Q. Stability refers to adjustment in behaviour of weights during learning?
View solution
Q. Convergence refers to equilibrium behaviour of activation state?
View solution
Q. What leads to minimization of error between the desired and actual outputs?
View solution
Q. Stability is minimization of error between the desired and actual outputs?
View solution
Q. How many trajectories may terminate at same equilibrium state?
View solution
Q. If weights are not symmetric i.e cik =! cki, then what happens?
View solution
Q. Is pattern storage possible if system has chaotic stability?
View solution
Q. If states of system experience basins of attraction, then system may achieve what kind of stability?
View solution
Q. What is an objective of a learning law?
View solution
Q. A network will be useful only if, it leads to equilibrium state at which there is no change of state?
View solution
Q. Lyapunov function is vector in nature?
View solution
Q. What’s the role of lyaopunov fuction?
View solution
Q. Did existence of lyapunov function is necessary for stability?
View solution
Q. V(x) is said to be lyapunov function if?
View solution
Q. What does cohen grossberg theorem?
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!