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A hybrid method for density power divergence minimization with application to robust univariate location and scale estimation

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Figshare2023-05-12 更新2026-04-28 收录
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https://figshare.com/articles/dataset/A_hybrid_method_for_density_power_divergence_minimization_with_application_to_robust_univariate_location_and_scale_estimation/22809369
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We develop a new globally convergent optimization method for solving a constrained minimization problem underlying the minimum density power divergence estimator for univariate Gaussian data in the presence of outliers. Our hybrid procedure combines classical Newton’s method with a gradient descent iteration equipped with a step control mechanism based on Armijo’s rule to ensure global convergence. Extensive simulations comparing the resulting estimation procedure with the more prominent robust competitor, Minimum Covariance Determinant (MCD) estimator, across a wide range of breakdown point values suggest improved efficiency of our method. Application to estimation and inference for a real-world dataset is also given.
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2023-05-12
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