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The robust normal variate transform for pattern recognition with near-infrared data

机译:用于近红外数据模式识别的鲁棒正态变量变换

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摘要

The standard normal variate transform (SNV) is applied to pretreat NIR data for pattern recognition. Eleven NIR data sets are analysed. The results show that SNV improves classification results in most of the cases by reducing the within-class variance. Because of the closure problem, SNV leads to artefacts and is difficult to interpret in simple methods of wavelength distance and univariate direct discrimination (DD). A proposed robust normal variate transform (RNV) gives more reasonable results than SNV. Because of the artefacts, SNV sometimes gives worse results for regularised discriminant analysis (RDA) than using the original data. In this case, RNV leads to improved results, and in general, it performs better than SM! even when SNV gives better results than using the original data. However, the drawback of RNV is that the applied percentile needs to be optimised. A proposal for quick selection of the percentile is given. (C) 1999 Elsevier Science B.V. All rights reserved. [References: 15]
机译:将标准正态变量变换(SNV)应用于预处理NIR数据以进行模式识别。分析了11个NIR数据集。结果表明,SNV通过减少类内差异来改善大多数情况下的分类结果。由于封闭问题,SNV会导致伪影,并且难以用简单的波长距离和单变量直接判别(DD)方法来解释。提出的鲁棒正态变量变换(RNV)比SNV给出了更合理的结果。由于人为因素,SNV有时对正则判别分析(RDA)给出的结果要比使用原始数据差。在这种情况下,RNV可以改善结果,并且通常比SM表现更好!即使SNV比使用原始数据提供更好的结果。但是,RNV的缺点是需要优化所应用的百分位。提出了快速选择百分位数的建议。 (C)1999 Elsevier Science B.V.保留所有权利。 [参考:15]

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