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Sure independence screening for real medical Poisson data

机译:确定真实医疗泊松数据的独立筛选

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The statistical modeling of big data bases constitutes one of the most challenging issues, especially nowadays. The issue is even more critical in case of a complicated correlation structure. Variable selection plays a vital role in statistical analysis of large data bases and many methods have been proposed so far to deal with the aforementioned problem. One of such methods is the Sure Independence Screening which has been introduced to reduce dimensionality to a relatively smaller scale. This method, though simple, produces remarkable results even under both ultra high dimensionality and big scale in terms of sample size problems. In this paper we dealt with the analysis of a big real medical data set assuming a Poisson regression model. We support the analysis by conducting simulated experiments taking into consideration the correlation structure of the design matrix.
机译:大数据库的统计建模构成了最具挑战性问题之一,特别是如今。在复杂的相关结构的情况下,该问题更为批判。可变选择在大数据库的统计分析中起着至关重要的作用,并且已经提出了许多方法来处理上述问题。其中一种方法是肯定的独立筛选,已经引入以将维度降低到相对较小的规模。这种方法虽然简单,即使在超高维度和大规模方面,在样本大小问题的情况下也产生了显着的结果。在本文中,我们处理了假设泊松回归模型的大真实医疗数据集的分析。通过考虑设计矩阵的相关结构,通过进行模拟实验来支持分析。

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