| Literature DB >> 24837965 |
Jian-Jun Dong1, Qing-Liang Li2, Hua Yin3, Cheng Zhong4, Jun-Guang Hao3, Pan-Fei Yang2, Yu-Hong Tian3, Shi-Ru Jia5.
Abstract
Sensory evaluation is regarded as a necessary procedure to ensure a reproducible quality of beer. Meanwhile, high-throughput analytical methods provide a powerful tool to analyse various flavour compounds, such as higher alcohol and ester. In this study, the relationship between flavour compounds and sensory evaluation was established by non-linear models such as partial least squares (PLS), genetic algorithm back-propagation neural network (GA-BP), support vector machine (SVM). It was shown that SVM with a Radial Basis Function (RBF) had a better performance of prediction accuracy for both calibration set (94.3%) and validation set (96.2%) than other models. Relatively lower prediction abilities were observed for GA-BP (52.1%) and PLS (31.7%). In addition, the kernel function of SVM played an essential role of model training when the prediction accuracy of SVM with polynomial kernel function was 32.9%. As a powerful multivariate statistics method, SVM holds great potential to assess beer quality.Entities:
Keywords: Artificial neural networks; Beer quality; Beer sensory evaluation; Partial least squares; Support vector machine
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Year: 2014 PMID: 24837965 DOI: 10.1016/j.foodchem.2014.04.006
Source DB: PubMed Journal: Food Chem ISSN: 0308-8146 Impact factor: 7.514