Predictive analysis of beer quality by correlating sensory evaluation with higher alcohol and ester production using multivariate statistics methods.
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Cheng Zhong | S. Jia | Cheng Zhong | Jian-Jun Dong | Hua Yin | Yu-Hong Tian | Junguang Hao | Jian-Jun Dong | Qing-Liang Li | Hua Yin | Jun-Guang Hao | Pan-Fei Yang | Yu-Hong Tian | Shi-Ru Jia | Pan-Fei Yang | Qing-Liang Li
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