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    政大機構典藏 > 商學院 > 統計學系 > 學位論文 >  Item 140.119/141006
    Please use this identifier to cite or link to this item: https://nccur.lib.nccu.edu.tw/handle/140.119/141006


    Title: 帶有錯誤分類與測量誤差數據的高維度變數選取與估計
    Variable selection and estimation for misclassified responses and high-dimensional error-prone predictors
    Authors: 歐陽沁縈
    Ou Yang, Qin-Ying
    Contributors: 陳立榜
    Chen, Li-Pang
    歐陽沁縈
    Ou Yang, Qin-Ying
    Keywords: 二元分類資料
    boosting
    誤差校正
    測量誤差
    回歸模型校正
    binary data
    boosting
    error elimination
    measurement error
    regression calibration
    Date: 2022
    Issue Date: 2022-08-01 17:15:25 (UTC+8)
    Abstract: 二元分類一直是統計分析或監督式學習中值得被討論的內容。在建立二元結果與變數的模型選擇上,logistic 與 probit 的模型是較常被使用的。然而,在資料維度遽增以及不可忽視的測量誤差存在測量結果、變數當中,過去的傳統方法已不適用,這為我們在資料分析上帶來了重大的挑戰。為了解決上述的問題,我們提出有效的推論方法處理測量誤差並同時進行變數選取。具體來說,我們首先考慮 logistic 或 probit 的模型,將經過校正的應變數與自變數放入我們的估計函數中。接著,我們透過 boosting 方法去做變數選取並計算參數的估計值。在數值研究當中,我們所提出的方法能夠準確地保留重要變數且能精準地計算出估計參數。此外,經過誤差校正的結果在整體的分析表現上是顯著優於沒有校正的結果。
    Binary classification has been an attractive topic in statistical analysis or supervised learning. To model a binary response and predictors, logistic regression models or probit models are perhaps commonly used approaches. However, because of the rapid growth of the dimension of the data as well as the non ignorability of measurement error in responses and/or predictors, data analysis becomes challenging and conventional methods are invalid. To address those concerns, we propose a valid inferential method to deal with measurement error and handle variable selection simultaneously. Specifically, we primarily consider logistic regression models or probit models, and propose corrected estimating functions by incorporating error-eliminated responses and predictors. After that, we develop the boosting procedure with corrected estimating functions accommodated to do variable selection and estimation.Through numerical studies, we find that the proposed method accurately retains informative predictors as well as gives precise estimators, and its performance is generally better than that without measurement error correction.
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    Chen, L.-P. (2020). Variable selection and estimation for the additive hazards model subject to left-truncation, right-censoring and measurement error in covariates. Journal of Statistical Computation and Simulation, 90, 3261-3300.

    Chen, L.-P. and Yi, G. Y. (2020). Model selection and model averaging for analysis of truncated and censored data with measurement error. Electronic Journal of Statistics, 14, 4054–4109.

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    Description: 碩士
    國立政治大學
    統計學系
    109354014
    Source URI: http://thesis.lib.nccu.edu.tw/record/#G0109354014
    Data Type: thesis
    DOI: 10.6814/NCCU202200889
    Appears in Collections:[統計學系] 學位論文

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