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Tensor-Based Methods for Handling Missing Data in Quality-of-Life Questionnaires

机译:生活质量问卷中基于张量的数据丢失处理方法

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摘要

A common problem with self-report quality-of-life questionnaires is missing data. Despite enormous care and effort to prevent it, some level of missing data is common and unavoidable. Missing data can have a detrimental impact on the data analysis. In this paper, a novel approach to imputing missing data in quality-of-life questionnaires is proposed, based on matrix and tensor decompositions. In order to illustrate and assess those methods, two datasets are considered: The first dataset contains the responses of 100 patients to a systemic lupus erythematosus-specific quality-of-life questionnaire; the other contains the responses of 43 patients to a rhino-conjunctivitis quality-of-life questionnaire. The two datasets contain almost no missing data, and for testing purposes, data entries are removed at random to have missing completely at random data. Several proportions of missing values are considered, and for each, the imputation error is assessed through k-fold cross validation. We also evaluate different imputation methods for missing at random and missing not at randomdata. The numerical results demonstrate that the proposed tensor factorization-based methods outperform standard methods in terms of root mean square error with at least 4% improvement, while the bias and variance are similar.
机译:自我报告生活质量调查表的一个常见问题是缺少数据。尽管为此付出了巨大的努力和努力,但一定程度的丢失数据是常见且不可避免的。丢失数据可能会对数据分析产生不利影响。在本文中,基于矩阵和张量分解,提出了一种在生活质量调查表中估算缺失数据的新方法。为了说明和评估这些方法,考虑了两个数据集:第一个数据集包含100位患者对系统性红斑狼疮特定生活质量问卷的回答;另一份包含43例患者对鼻-结膜炎生活质量问卷的回答。这两个数据集几乎没有丢失数据,并且出于测试目的,随机删除了数据条目以完全丢失随机数据。考虑缺失值的几个比例,对于每个缺失值,通过k倍交叉验证评估插补误差。我们还评估了不同的插补方法,用于随机丢失和不随机丢失。数值结果表明,基于张量分解的方法在均方根误差方面优于标准方法,改进幅度至少为4%,而偏差和方差相似。

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