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Convergence of two-stage iterative scheme for K-weak regular splittings of type II

Author

Listed:
  • Shekhar, Vaibhav
  • Nayak, Snigdhashree
  • Mishra, Nachiketa
  • Mishra, Debasisha

Abstract

Monotone matrices play a key role in the convergence theory of regular splittings and different types of weak regular splittings. If monotonicity fails, then it is difficult to guarantee the convergence of the above-mentioned classes of matrices. In such a case, K-monotonicity is sufficient for the convergence of K-regular and K-weak regular splittings, where K is a proper cone in Rn. However, the convergence theory of a two-stage iteration scheme in a general proper cone setting is a gap in the literature. Especially, the same study for weak regular splittings of type II (even if in standard proper cone setting, i.e., K=R+n), is open. To this end, we propose convergence theory of two-stage iterative scheme for K-weak regular splittings of both types in the proper cone setting. We provide some sufficient conditions which guarantee that the induced splitting from a two-stage iterative scheme is a K-regular splitting and then establish some comparison theorems. We also study K-monotone convergence theory of the stationary two-stage iterative method in case of a K-weak regular splitting of type II. The most interesting and important part of this work is on M-matrices appearing in the Covid-19 pandemic model. Finally, numerical computations are performed using the proposed technique to compute the next generation matrix involved in the pandemic model. The computation of large PageRank matrices shows that the two-stage Gauss-Seidel method performs better than the Gauss-Seidel methods.

Suggested Citation

  • Shekhar, Vaibhav & Nayak, Snigdhashree & Mishra, Nachiketa & Mishra, Debasisha, 2021. "Convergence of two-stage iterative scheme for K-weak regular splittings of type II," Applied Mathematics and Computation, Elsevier, vol. 410(C).
  • Handle: RePEc:eee:apmaco:v:410:y:2021:i:c:s0096300321005609
    DOI: 10.1016/j.amc.2021.126471
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    References listed on IDEAS

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    1. He, Qiang & Wang, Xingwei & Lei, Zhencheng & Huang, Min & Cai, Yuliang & Ma, Lianbo, 2019. "TIFIM: A Two-stage Iterative Framework for Influence Maximization in Social Networks," Applied Mathematics and Computation, Elsevier, vol. 354(C), pages 338-352.
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