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A strategy of small sample modeling for multivariate regression based on improved Boosting PLS

机译:基于改进Boosting PLS的多元回归小样本建模策略

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In multivariate calibration technology, the problem of small sample modeling existed due to the kinds of actual situation restrictions. Traditional regression methods like PLS could not extract enough information from the limited samples. In order to try and resolve the problem, a strategy of small sample modeling for multivariate regression based on improved Boosting PLS (Im-BPLS) was proposed. In Im-BPLS, the deterministic selection method of initial calibration set and new sample weight optimization criterion were proposed. These made the information extracted easier for samples with small size and provided simple, stable and accurate regression models simultaneously. The performance of Im-BPLS was tested with three groups of small sample spectral data. The results indicated that Im-BPLS is an effective method for small calibration dataset and could give a better and more stable predictive accuracy compared with ordinary PLS and Boosting PLS...
机译:在多元校正技术中,由于各种实际情况的限制,存在小样本建模的问题。传统的回归方法(如PLS)无法从有限的样本中提取足够的信息。为了解决这一问题,提出了一种基于改进Boosting PLS(Im-BPLS)的小样本多变量回归建模策略。在Im-BPLS中,提出了初始校正集的确定性选择方法和新的样品权重优化准则。这些使小尺寸样本的提取信息更加容易,同时还提供了简单,稳定和准确的回归模型。用三组小样本光谱数据测试了Im-BPLS的性能。结果表明,与普通PLS和Boosting PLS相比,Im-BPLS是一种适用于小型校准数据集的有效方法,并且可以提供更好,更稳定的预测准确性。

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