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Modern data mining tools in descriptive sensory analysis: a case study with a random forest approach.

机译:描述性感官分析中的现代数据挖掘工具:采用随机森林方法的案例研究。

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摘要

In this paper we introduce random forest (RF) as a new modeling technique in the field of sensory analysis. As a case study we apply RF to the predictive discrimination of six typical cheeses of the Trentino province (North Italy) from data obtained by quantitative descriptive analysis. The corresponding sensory profiling was carried out by eight trained assessors using a developed language containing 35 attributes. We compare RFs discrimination capabilities with linear discriminant analysis (LDA) and discriminant partial least square (dPLS). The RF models result more accurate, with smaller prediction errors than LDA and dPLS. RF also offers the possibility of graphically analyzing the developed models with multi-dimensional scaling plots based on an internal measure of similarity between samples. We compare these plots with similar ones derived from principal component analysis and LDA, finding that the same qualitative information can be extracted from all methods. The RF model also gives an estimation of the relative importance of each sensory attribute for the discriminant function. We couple this measure with an appropriate experimental setup in order to obtain an unbiased and stable method for variable selection. We favorably compare this method with sequential selection based on LDA models..
机译:在本文中,我们介绍了随机森林(RF)作为感官分析领域中的一种新的建模技术。作为案例研究,我们通过定量描述性分析获得的数据将RF应用于特伦蒂诺省(意大利北部)的六种典型奶酪的预测区分。八名经过培训的评估人员使用一种包含35种属性的发达语言,进行了相应的感官分析。我们将RF鉴别能力与线性判别分析(LDA)和判别偏最小二乘(dPLS)进行比较。与LDA和dPLS相比,RF模型的结果更准确,预测误差更小。 RF还提供了基于样本之间相似性的内部度量,使用多维比例图以图形方式分析开发的模型的可能性。我们将这些图与从主成分分析和LDA得到的相似图进行比较,发现可以从所有方法中提取相同的定性信息。 RF模型还提供了判别功能的每个感官属性的相对重要性的估计。我们将此措施与适当的实验设置相结合,以便获得一种无偏见且稳定的变量选择方法。我们将此方法与基于LDA模型的顺序选择进行了比较。

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