Abstract:
The Moore-Penrose inverse is one of the most important generalized inverses for arbitrary
singular square or rectangular matrix. It finds many applications in engineering and
applied sciences. The direct methods to find such inverse is expensive, especially for
large matrices. Therefore, various numerical methods have been developed to compute
the Moore-Penrose inverse.
This thesis is mainly concerned with the development of iterative methods to compute
the Moore-Penrose inverse. Besides our new results the thesis contains several recent
known iterative methods. The convergence properties of these methods are presented.
And, several numerical examples are given.
Our own results involve new family of second-order iterative algorithms for computing
the Moore-Penrose inverse. The construction of this algorithm is based on the usage of
Penrose equations with approximations for p-th root for a product of the matrix with
its inverse approximations. Convergence properties are considered. Numerical results
are also presented and a comparison with Newton’s method is made. It is observed
that the new methods require less number of iterations than that of Newton’s method.
In addition, numerical experiments show that these methods are more effective than
Newton’s method when the number of columns increases than the number of rows.
In addition, we establish a new iterative scheme by using a square of the product of
the matrix with its inverse approximations. By convergence analysis, we show that this
scheme is also a second order. Several numerical tests are made. It is observed that the
above family is more effective than this method.
Description:
no of pages 72 , 1/2018 mathematics, 31013 , master