Nonlinear Canonical correspondence Analysis: Description of the data of Coffee

Herbert Stein Pereira, T. Santos, M. A. Cirillo, Flávio, Meira Borém, Diana, Del Rocío, Rebaza Fernández
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引用次数: 0

Abstract

The formulation of coffee blends is of paramount importance for the coffee industry, as it provides the product with an expressive ability to compete in the market and adds sensory attributes that complement the consumption experience. Through redundancy analysis and canonical correspondence analysis, it is possible to study the relationships between a set of sensory notes and a set of blends with different proportions of coffee variety through multivariate linear regression models. However, it is unrealistic to assume that such sensory responses are given linearly in relation to the formulation of the blends, since some coffee species have greater weight in the sensory evaluation (quadratic terms) and the effect of the mixtures (term of interaction). With this motivation, this work aims to propose the use of redundancy analysis and nonlinear correspondence analysis through multivariate polynomial regression to evaluate the acceptance of different varieties of coffee blends according to the scores given by the evaluators. Finally, it is concluded that there were gains in the percentage of total explained variance in the polynomial models in relation to the classic models.
非线性正则对应分析:咖啡数据的描述
混合咖啡的配方对咖啡行业至关重要,因为它为产品提供了在市场上竞争的表现能力,并增加了补充消费体验的感官属性。通过冗余分析和典型对应分析,可以通过多元线性回归模型研究一组感官音符与一组不同比例的咖啡品种混合物之间的关系。然而,假设这种感官反应与混合物的配方成线性关系是不现实的,因为一些咖啡品种在感官评估(二次项)和混合物的影响(相互作用项)中具有更大的权重。基于这一动机,本工作旨在提出使用冗余分析和非线性对应分析,通过多元多项式回归,根据评估者给出的分数来评估不同品种的咖啡混合物的接受度。最后得出结论,与经典模型相比,多项式模型在总解释方差的百分比上有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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12 weeks
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