...
首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Dealing with three-way data containing missing values by new weighted method for second-order calibration
【24h】

Dealing with three-way data containing missing values by new weighted method for second-order calibration

机译:用新加权方法处理包含缺失值的三向数据,用于二阶校准

获取原文
获取原文并翻译 | 示例

摘要

AbstractMulti-way data arrays contain missing values for several reasons, such as various malfunctions of instruments, responses being outside instrument ranges, irregular measurement intervals between samples and data postprocessing. In the present study, one new method, weighted alternating penalty trilinear decomposition (W-APTLD), based on the weighted trilinear model and the idea of alternative trilinear decomposition was given to analyze three-way data arrays containing missing values. In addition, one improved core consistency diagnostic method (W-CORCONDIA) was proposed to estimate the chemical ranks of three-way data arrays containing missing values. The results of one simulation and two real data sets demonstrate that the new method W-APTLD could be used to deal with missing values and reserves the second-order advantage. When meeting excessive factors, W-APTLD could give more accurate results than weighted PARAFAC (W-PARAFAC), PARAFAC with single imputation (PARAFAC-SI) and incomplete data PARAFAC (INDAFAC). The convergence rate of W-APTLD was much faster than W-PARAFAC and PARAFAC-SI but slower than INDAFAC. Better than W-PARAFAC and PARAFAC-SI, W-APTLD could overcome the problem due to severe collinearity. In addition, this new method could be extended to analyze higher-way data arrays containing missing values.Highlights?W-APTLD was proposed to analyze three-way data arrays with missing values.?W-CORCONDIA was proposed to estimate the chemical ranks.?Better than other three methods, W-APTLD was insensitive to excessive factors.?Similar as INDAFAC, W-APTLD could overcome severe collinearity.]]>
机译:<![CDATA [ 抽象 多向数据阵列有几个原因包含缺失的值,例如仪器的各种故障,答案是外部乐器范围,样品和数据后的不规则测量间隔。在本研究中,基于加权三线性模型和替代三线性分解的思想,给出一种新方法,加权交替惩罚三线性分解(W-APTLD)分析包含缺失值的三通数据阵列。此外,提出了一种改进的核心一致性诊断方法(W-CORCONDIA)来估计包含缺失值的三元数据阵列的化学等级。一个模拟和两个真实数据集的结果表明,新方法W-APTLD可用于处理缺失的值并保留二阶优势。在满足过度的因素时,W-APTLD可以提供比加权Parafac(W-Parafac),Paraface(ParaFac-Si)和不完整的数据Parafacac(Indafac)提供更准确的结果。 W-APTLD的收敛速度比W-Parafac和Parafac-Si快得多,但比印度人慢。比W-Parafac和Parafac-Si更好,W-APTLD可以克服由于严重的共同性导致的问题。此外,可以扩展此新方法以分析包含缺失值的更高路数据阵列。 突出显示 < ce:simple-para id =“abspara0015”查看=“全部”> W-APTLD被提议分析具有缺失值的三向数据阵列。 提出了W-Corcondia,以估计化学等级。 更好其他三种方法,W-APTLD对过度因素不敏感。 类似作为Indafac,W-APTLD可以克服严重的共同性。 ]]>

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号