机器学习在日本清酒理化特征与综合评价关系分析中的应用

Q4 Engineering Japan Journal of Food Engineering Pub Date : 2020-03-15 DOI:10.11301/jsfe.19560
Satoru Shimofuji, Motoko Matsui, Yukari Muramoto, Hironori Moriyama, Reina Kato, Yoshiro Hoki, H. Uehigashi
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引用次数: 3

摘要

我们通过应用机器学习,研究了理化特征对日本清酒“Junmai Ginjo”综合评价的贡献。我们使用了173个商业日本清酒样品。感官评估由35名小组成员进行。该小组对每个样本进行了评估,使用了五种陈述对样本进行综合评估。一般分析、物质相关核酸、挥发性成分和简化分析被测量为物理化学分析。我们使用多元回归分析(MRA)、偏最小二乘回归(PLS)和使用支持向量机(SVM)、人工神经网络(ANN)和随机森林(RF)的机器学习进行了回归分析。这五种分析方法的结果表明,机器学习(尤其是RF)提供了与MRA相当或更高的预测精度和更好的拟合。基于MRA获得的回归系数和RF中获得的特征重要性,我们还讨论了每个物理化学特征对评估分数的贡献。个人得分分析表明,己酸乙酯和乙酸异戊酯对清酒评价有较大影响。
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Machine Learning in Analyses of the Relationship between Japanese Sake Physicochemical Features and Comprehensive Evaluations
We investigated the contributions of physicochemical features to a comprehensive evaluation of the Japanese sake known as ‘ Junmai Ginjo ’ by applying machine learning. We used 173 samples of the commercial Japanese sake. The sensory evaluation was conducted by 35 panelists. The panel conducted the evaluation of each sample using five statements for the comprehensive evaluation of the sample. General analysis, substance-related nucleic acid, volatile components and simplified analyses were measured as physicochemical analyses. We performed regression analyses using a multiple regression analysis (MRA), partial least squares regression (PLS) and machine learning employing a support vector machine (SVM), an artificial neural network (ANN), and random forest (RF). The results of these five analysis methods have demonstrated that machine learning (especially RF) provides comparable or higher prediction accuracy and better fitting than MRA. We also discuss the contribution of each physicochemical feature to the evaluation scores based on the regression coefficients obtained by MRA and the features’ importance obtained in RF. The analysis of the individual scores indicated that ethyl caproate and isoamyl acetate make large contributions to influence the sake evaluation.
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来源期刊
Japan Journal of Food Engineering
Japan Journal of Food Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
0.50
自引率
0.00%
发文量
7
期刊介绍: The Japan Society for Food Engineering (the Society) publishes "Japan Journal of Food Engineering (the Journal)" to convey and disseminate information regarding food engineering and related areas to all members of the Society as an important part of its activities. The Journal is published with an aim of gaining wide recognition as a periodical pertaining to food engineering and related areas.
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