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Preference mapping by PO-PLS: separating common and unique information in several data blocks.

机译:PO-PLS的首选项映射:在几个数据块中分离公共信息和唯一信息。

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摘要

In food development, preference mapping is an important tool for relating product sensory attributes to consumer preferences. The sensory attributes are often divided into several categories, such as visual appearance, smell, taste and texture. This forms a so-called multi-block data set, where each block is a collection of related attributes. The current paper presents a new method for analysing such multi-block data: Parallel Orthogonalised Partial Least Squares regression (PO-PLS). The main objective of PO-PLS is to find common and unique components among several data blocks, and thereby improve interpretation of models. In addition to that, PO-PLS overcomes some challenges from the standard multi-block PLS regression when it comes to scaling and dimensionality of blocks. The method is illustrated by two case studies. One of them is based on a collection of flavoured waters that are characterised by both odour and flavour attributes, forming two blocks of sensory descriptors. A consumer test has also been performed, and PO-PLS is used to create a preference map relating the sensory blocks to consumer liking. The new method is also compared to a preference map created by standard PLS regression. The same is done for the other data set where instrumental data are applied together with sensory data when predicting consumer liking. Here the sensory variables are divided into two blocks: one related to appearance and mouth feel attributes and the other one describing odour and taste properties. In both cases the results clearly illustrate that PO-PLS and PLS regression are equivalent in terms of model fit, but PO-PLS offer some interpretative advantages. All rights reserved, Elsevier.
机译:在食品开发中,偏好映射是将产品感官属性与消费者偏好相关联的重要工具。感官属性通常分为几类,例如视觉外观,气味,味道和质地。这形成了所谓的多块数据集,其中每个块都是相关属性的集合。当前的论文提出了一种分析这种多块数据的新方法:并行正交偏最小二乘回归(PO-PLS)。 PO-PLS的主要目标是在几个数据块之间找到通用和唯一的组件,从而改善模型的解释。除此之外,在块的缩放和维数方面,PO-PLS克服了标准多块PLS回归带来的一些挑战。通过两个案例研究说明了该方法。其中之一是基于加味水的集合,这些加味水的特征在于气味和风味属性,形成了两个感官描述符块。还进行了消费者测试,并且PO-PLS用于创建将感觉障碍与消费者喜好相关的偏好图。还将新方法与通过标准PLS回归创建的偏好图进行比较。对于其他数据集也是如此,在预测消费者喜好时,其中将工具数据与感官数据一起应用。在这里,感觉变量分为两个部分:一个与外观和口感属性有关,另一个与气味和味道属性有关。在这两种情况下,结果都清楚地表明,PO-PLS和PLS回归在模型拟合方面是等效的,但是PO-PLS提供了一些解释优势。保留所有权利,Elsevier。

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