完全随机缺失机制下大豆基因型数据的插补技术评价

Q3 Agricultural and Biological Sciences Indian Journal Of Agricultural Research Pub Date : 2023-08-11 DOI:10.18805/ijare.a-6094
Sanju ., Vinayshekhar Bannihatti Kumar, Deepender .
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引用次数: 0

摘要

背景:数据缺失的问题在所有类型的研究工作中都很普遍,如果管理不当,这可能会削弱统计能力,并导致不准确的结果。不能忽略缺失的数据,因为每一条数据,无论多么小,都会对结果产生重大影响。推测是处理缺失数据的一个关键组成部分;然而,估算缺失值的最佳方法尚未确定。方法:本文的目的是比较四种最新开发的插补技术——MICE、MI、missForest和Amelia。为了检验各种插补技术的性能,通过完全随机缺失机制,从不同缺失频率的大豆作物的基因型数据中删除非缺失数据。该研究比较了使用均方根误差和平均绝对误差求解缺失值的不同插补技术。结果:为了填补数据集的缺失值,将考虑产生RMSE和MAE最低值的插补技术。最后观察到,missForest技术在不同缺失比例的大豆基因型数据上表现最好。
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Evaluation of Imputation Techniques for Genotypic Data of Soybean Crop under Missing Completely at Random Mechanism
Background: The issue of missing data is prevalent in all type of research work, which can diminish statistical power and lead to inaccurate results if not managed correctly. Missing data cannot be ignored because every piece of data, no matter how small, affects the outcome significantly. Imputation is a key component in dealing with missing data; however, the best way to impute missing values has not yet been identified. Methods: Our goal of this paper is to compare four more recently developed imputation techniques - MICE, MI, missForest and Amelia. In order to examine the performance of various imputation techniques, non-missing data were deleted from genotypic data of soybean crop with varied frequency of missingness by missing completely at random mechanism. The study compared different imputation techniques for solving missing values using the root mean square error and mean absolute error. Result: To fill in the dataset’s missing values, the imputation technique producing the lowest value of the RMSE and MAE will be taken into consideration. Finally it is observed that missForest technique performs best on the genotypic data of soybean at different proportion of missingness.
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来源期刊
Indian Journal Of Agricultural Research
Indian Journal Of Agricultural Research Agricultural and Biological Sciences-Soil Science
CiteScore
1.00
自引率
0.00%
发文量
143
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