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    Items for Author "陳立榜"   

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    Showing 17 items.

    Collection Date Title Authors Bitstream
    [統計學系] 會議論文 2024-09 Causal inference with high-dimensional error-prone covariates and misclassified treatments 陳立榜
    [統計學系] 會議論文 2024-06 Boosting method for length-biased and interval-censored survival data subject to high-dimensional error-prone covariates 陳立榜; Chen, Li-Pang
    [統計學系] 會議論文 2024-06 Analysis of Length-Biased and Partly Interval-Censored Survival Data with Mismeasured Covariates 陳立榜; Chen, Li-Pang
    [統計學系] 會議論文 2024-06 Variable selection and estimation for length-biased and partly interval-censored survival data with mismeasured covariates 陳立榜; Chen, Li-Pang
    [統計學系] 會議論文 2023-08 A boosting method for variable selection and estimation with error-prone responses and predictors 陳立榜
    [統計學系] 會議論文 2023-08 Variable selection and estimation for the average treatment effect with error-prone confounders 陳立榜; Chen, Li-Pang; Yi, Grace
    [統計學系] 會議論文 2023-07 BOOME: A boosting method for variable selection and estimation with measurement error in binary responses and predictors 陳立榜; Chen, Li-Pang
    [統計學系] 會議論文 2023-06 Boosting method for length-biased and interval-censored survival data subject to high-dimensional error-prone covariates 陳立榜; Chen, Li-Pang; Qiu, Bangxu
    [統計學系] 會議論文 2023-05 Variable selection and estimation for the average treatment effect with error-prone confounders 陳立榜; Chen, Li-Pang
    [統計學系] 會議論文 2022-12 Measurement Error Correction for EWMA p-Charts 楊素芬; 陳立榜
    [統計學系] 會議論文 2022-12 Variable selection and estimation for misclassified responses and high-dimensional error-prone predictors 陳立榜; Chen, Li-Pang
    [統計學系] 會議論文 2022-12 Variable selection and estimation for the average treatment effect with error-prone confounders 陳立榜; Chen, Li-Pang
    [統計學系] 會議論文 2022-06 Boosting method for length-biased and interval-censored survival data subject to high-dimensional error-prone covariates 陳立榜; Chen, Li-Pang; Qiu, Bangxu
    [統計學系] 會議論文 2022-06 Network-based discriminant analysis for multiclassification 陳立榜; Chen, Li-Pang
    [統計學系] 會議論文 2021-12 Network based discriminant analysis for multiclassification 陳立榜; Chen, Li-Pang
    [統計學系] 會議論文 2021-10 Quality control under nonparametric bivariate location and dispersion processes 陳立榜; 楊素芬; Chen, Li-Pang; Yang, Su-Fen; Jiang, Ting-An
    [統計學系] 會議論文 2019-07 Support Vector Machine with Graphical Network Structures in Features 陳立榜; Chen, Li-Pang; He, Wenqing; Yi, Grace Y.

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