adplus-dvertising
frame-decoration

Question

In determination of weights by learning, for linear input vectors what kind of learning should be employed?

a.

hebb learning law

b.

widrow learning law

c.

hoff learning law

d.

no learning law

Posted under Neural Networks

Answer: (b).widrow learning law

Engage with the Community - Add Your Comment

Confused About the Answer? Ask for Details Here.

Know the Explanation? Add it Here.

Q. In determination of weights by learning, for linear input vectors what kind of learning should be employed?

Similar Questions

Discover Related MCQs

Q. In determination of weights by learning, for noisy input vectors what kind of learning should be employed?

Q. What are the features that can be accomplished using affine transformations?

Q. What is the features that cannot be accomplished earlier without affine transformations?

Q. What are affine transformations?

Q. Can a artificial neural network capture association if input patterns is greater then dimensionality of input vectors?

Q. By using only linear processing units in output layer, can a artificial neural network capture association if input patterns is greater then dimensionality of input vectors?

Q. Number of output cases depends on what factor?

Q. For noisy input vectors, Hebb methodology of learning can be employed?

Q. What is the objective of perceptron learning?

Q. On what factor the number of outputs depends?

Q. In perceptron learning, what happens when input vector is correctly classified?

Q. When two classes can be separated by a separate line, they are known as?

Q. If two classes are linearly inseparable, can perceptron convergence theorem be applied?

Q. Two classes are said to be inseparable when?

Q. Is it necessary to set initial weights in prceptron convergence theorem to zero?

Q. The perceptron convergence theorem is applicable for what kind of data?

Q. w(m + 1) = w(m) + n(b(m) – s(m)) a(m), where b(m) is desired output, s(m) is actual output, a(m) is input vector and ‘w’ denotes weight, can this model be used for perceptron learning?

Q. If e(m) denotes error for correction of weight then what is formula for error in perceptron learning model: w(m + 1) = w(m) + n(b(m) – s(m)) a(m), where b(m) is desired output, s(m) is actual output, a(m) is input vector and ‘w’ denotes weight.

Q. Convergence in perceptron learning takes place if and only if:

Q. When line joining any two points in the set lies entirely in region enclosed by the set in M-dimensional space , then the set is known as?