结合辅助信息改进核机组合预测

Q Mathematics Statistical Methodology Pub Date : 2015-01-01 DOI:10.1016/j.stamet.2014.08.001
Xiang Zhan , Debashis Ghosh
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引用次数: 4

摘要

随着基因组技术的发展,使用不同的技术对相同的潜在生物现象进行不同的测量是可能的。本文的目标是建立一个预测模型的结果变量Y的协变量X X之外,我们代理反是W X相关我们想利用W中的信息来提高预测使用X Y在本文中,我们提出一个内核基于机器的方法来提高预测Y由X将辅助信息W .结合单内核的机器,我们也提出一个混合内核机器预测,它可以产生比其组成部分更小的预测误差。通过仿真对核机器预测器的预测误差进行了评估。我们还将我们的方法应用于肺癌数据集和阿尔茨海默病数据集。
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Incorporating auxiliary information for improved prediction using combination of kernel machines

With evolving genomic technologies, it is possible to get different measures of the same underlying biological phenomenon using different technologies. The goal of this paper is to build a prediction model for an outcome variable Y from covariates X. Besides X, we have surrogate covariates W which are related to X. We want to utilize the information in W to boost the prediction for Y using X. In this paper, we propose a kernel machine-based method to improve prediction of Y by X by incorporating auxiliary information W. By combining single kernel machines, we also propose a hybrid kernel machine predictor, which can yield a smaller prediction error than its constituents. The prediction error of our kernel machine predictors is evaluated using simulations. We also apply our method to a lung cancer dataset and an Alzheimer’s disease dataset.

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来源期刊
Statistical Methodology
Statistical Methodology STATISTICS & PROBABILITY-
CiteScore
0.59
自引率
0.00%
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0
期刊介绍: Statistical Methodology aims to publish articles of high quality reflecting the varied facets of contemporary statistical theory as well as of significant applications. In addition to helping to stimulate research, the journal intends to bring about interactions among statisticians and scientists in other disciplines broadly interested in statistical methodology. The journal focuses on traditional areas such as statistical inference, multivariate analysis, design of experiments, sampling theory, regression analysis, re-sampling methods, time series, nonparametric statistics, etc., and also gives special emphasis to established as well as emerging applied areas.
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