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Main Authors: Sahu, D. R., Sharma, Shikher, Gautam, Pankaj
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.23939
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author Sahu, D. R.
Sharma, Shikher
Gautam, Pankaj
author_facet Sahu, D. R.
Sharma, Shikher
Gautam, Pankaj
contents Our interest lies in developing some efficient methods for minimizing the sum of two geodesically convex functions on Hadamard manifolds, with the aim to enhance the convergence of the Douglas-Rachford algorithm in Hadamard manifolds. Specifically, we propose two types of algorithms: inertial and non-inertial algorithms. The convergence analysis of both algorithms is provided under suitable assumptions on algorithmic parameters and the geodesic convexity of the objective functions. This convergence analysis is based on fixed-point theory for nonexpansive operators. We also study the convergence rates of these two methods. Additionally, we introduce parallel Douglas-Rachford type algorithms for minimizing functionals containing multiple summands with applications to the generalized Heron problem on Hadamard manifolds. To demonstrate the effectiveness of the proposed algorithms, we present some numerical experiments for the generalized Heron problems.
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spellingShingle Efficient Douglas-Rachford Methods on Hadamard Manifolds with Applications to the Heron Problems
Sahu, D. R.
Sharma, Shikher
Gautam, Pankaj
Optimization and Control
Our interest lies in developing some efficient methods for minimizing the sum of two geodesically convex functions on Hadamard manifolds, with the aim to enhance the convergence of the Douglas-Rachford algorithm in Hadamard manifolds. Specifically, we propose two types of algorithms: inertial and non-inertial algorithms. The convergence analysis of both algorithms is provided under suitable assumptions on algorithmic parameters and the geodesic convexity of the objective functions. This convergence analysis is based on fixed-point theory for nonexpansive operators. We also study the convergence rates of these two methods. Additionally, we introduce parallel Douglas-Rachford type algorithms for minimizing functionals containing multiple summands with applications to the generalized Heron problem on Hadamard manifolds. To demonstrate the effectiveness of the proposed algorithms, we present some numerical experiments for the generalized Heron problems.
title Efficient Douglas-Rachford Methods on Hadamard Manifolds with Applications to the Heron Problems
topic Optimization and Control
url https://arxiv.org/abs/2509.23939