主成分分析
描述性统计
偏最小二乘回归
乳糖
食品科学
回归分析
统计
数学
感官分析
对应分析
感觉系统
方差分析
产品(数学)
化学计量学
解释的变化
化学
生物
色谱法
神经科学
几何学
作者
Kathryn W. Chapman,Harry T. Lawless,Kathryn J. Boor
标识
DOI:10.3168/jds.s0022-0302(01)74446-3
摘要
Quantitative descriptive analysis was used to describe the key attributes of nine ultrapasteurized (UP) milk products of various fat levels, including two lactose-reduced products, from two dairy plants. Principal components analysis identified four significant principal components that accounted for 87.6% of the variance in the sensory attribute data. Principal component scores indicated that the location of each UP milk along each of four scales primarily corresponded to cooked, drying/lingering, sweet, and bitter attributes. Overall product quality was modeled as a function of the principal components using multiple least squares regression (R2 = 0.810). These findings demonstrate the utility of quantitative descriptive analysis for identifying and measuring UP fluid milk product attributes that are important to consumers.
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