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Optimal Newton-Secant like methods without memory for solving nonlinear equations with its dynamics (1410.5097v1)

Published 19 Oct 2014 in math.NA

Abstract: We construct two optimal Newton-Secant like iterative methods for solving non-linear equations. The proposed classes have convergence order four and eight and cost only three and four function evaluations per iteration, respectively. These methods support the Kung and Traub conjecture and possess a high computational efficiency. The new methods are illustrated by numerical experiments and a comparison with some existing optimal methods. We conclude with an investigation of the basins of attraction of the solutions in the complex plane.

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