Department of Food Science, Universidade Federal de Lavras, Lavras, Brazil.
Institute of Computing, Universidade Estadual de Campinas, Campinas, Brazil.
J Sci Food Agric. 2021 Aug 30;101(11):4514-4522. doi: 10.1002/jsfa.11092. Epub 2021 Feb 1.
Strawberry quality is one of the most important factors that guarantees consistent commercialization of the fruit and ensures the consumer's satisfaction. This work makes innovative use of random forest (RF) to predict sensory measures of strawberries using physical and physical-chemical variables. Furthermore, it also employs these same physical and physical-chemical variables to classify strawberries in the classes "satisfied" or "not satisfied" and "would pay more" or "wouldn't pay more. The RF-based model predicts the acceptance, expectation, ideal of sweetness, ideal of acidity, and the ideal of succulence based on the physical and physical-chemical data. Then, the predicted parameters are used as input for the RF-based classification model.
The RF achieved a coefficient of determination R > 0.72 and a root-mean-squared error (RMSE) smaller than 0.17 for the prediction task, which indicates that one can estimate the sensory measures of strawberries using physical and physical-chemical data. Furthermore, the RF was able to classify 87.95% of the strawberry samples correctly into the classes 'satisfied' and 'not satisfied' and 78.99% in the classes 'would pay more' or 'would not pay more'. A two-step RF model, which employed both physical and physical-chemical data to classify strawberry samples regarding the consumer's response also correctly classified 100% and 90.32% of the samples with respect to consumers' satisfaction and their willingness to pay more, respectively.
The results indicate that the developed models can be used in the quality control of strawberries, supporting the establishment of quality standards that consider the consumer's response. The proposed methodology can be extended to control the sensory quality of other fruits. © 2021 Society of Chemical Industry.
草莓品质是保证果实商业化一致性和确保消费者满意度的最重要因素之一。本工作创新性地使用随机森林(RF)来预测草莓的感官指标,使用物理和物理化学变量。此外,它还使用这些相同的物理和物理化学变量将草莓分为“满意”或“不满意”以及“愿意多付”或“不愿意多付”的类别。基于 RF 的模型根据物理和物理化学数据预测接受度、期望、甜度理想值、酸度理想值和多汁度理想值。然后,将预测参数用作基于 RF 的分类模型的输入。
RF 在预测任务中达到了决定系数 R > 0.72 和均方根误差 (RMSE) 小于 0.17,这表明可以使用物理和物理化学数据来估计草莓的感官指标。此外,RF 能够正确地将 87.95%的草莓样本分类到“满意”和“不满意”类别中,将 78.99%的样本分类到“愿意多付”或“不愿意多付”类别中。一个两步的 RF 模型,它同时使用物理和物理化学数据来对草莓样本进行分类,以了解消费者的反应,也正确地对 100%和 90.32%的样本进行了分类,分别是消费者的满意度和他们愿意多付的意愿。
结果表明,所开发的模型可用于草莓的质量控制,支持建立考虑消费者反应的质量标准。所提出的方法可以扩展到控制其他水果的感官质量。© 2021 化学工业协会。