Mean square convergence of functional conditional distribution estimators under twice censoring
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Abstract
In this work, we propose a novel kernel estimator for the conditional distribution in the twice censored model, with functional regressors. We next analyze its mean square convergence, with an explicit rate given in Theorem [t1]. To validate our theoretical result, we conduct a simulation study that demonstrates the estimator's accuracy and performance, further supporting the robustness of our method, even with twice censored data.
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Boustila, R., & Leulmi, S. (2025). Mean square convergence of functional conditional distribution estimators under twice censoring. Gulf Journal of Mathematics, 19(2), 142-155. https://doi.org/10.56947/gjom.v19i2.2774
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