贝叶斯推理的累积逻辑主成分回归模型

IF 0.5 Q4 STATISTICS & PROBABILITY
Minjung Kyung
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引用次数: 0

摘要

我们通过奇异值分解,考虑预测因子之间的多重共线性,提出了一种基于正交主成分的有序响应累积逻辑回归模型的贝叶斯方法。该方法的优点是同时考虑降维和参数估计。为了评估所提出的模型的性能,我们进行了一项模拟研究,考虑了一个高维和高度相关的解释矩阵。此外,我们还将所提出的方法与小麦发芽和赤霉病籽粒的实际数据进行了拟合,并将其与基于EM的比例优势逻辑回归模型进行了比较。与基于EM的方法相比,我们认为所提出的模型在提供参数估计的情况下更好地适用于高度相关的高维数据,并提供了良好的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian inference of the cumulative logistic principal component regression models
We propose a Bayesian approach to cumulative logistic regression model for the ordinal response based on the orthogonal principal components via singular value decomposition considering the multicollinearity among predictors. The advantage of the suggested method is considering dimension reduction and parameter estimation simultaneously. To evaluate the performance of the proposed model we conduct a simulation study with considering a high-dimensional and highly correlated explanatory matrix. Also, we fit the suggested method to a real data concerning sproutand scab-damaged kernels of wheat and compare it to EM based proportional-odds logistic regression model. Compared to EM based methods, we argue that the proposed model works better for the highly correlated high-dimensional data with providing parameter estimates and provides good predictions.
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
49
期刊介绍: Communications for Statistical Applications and Methods (Commun. Stat. Appl. Methods, CSAM) is an official journal of the Korean Statistical Society and Korean International Statistical Society. It is an international and Open Access journal dedicated to publishing peer-reviewed, high quality and innovative statistical research. CSAM publishes articles on applied and methodological research in the areas of statistics and probability. It features rapid publication and broad coverage of statistical applications and methods. It welcomes papers on novel applications of statistical methodology in the areas including medicine (pharmaceutical, biotechnology, medical device), business, management, economics, ecology, education, computing, engineering, operational research, biology, sociology and earth science, but papers from other areas are also considered.
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