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Temporal Drivers of Liking Based on Functional Data Analysis and Non-Additive Models for Multi-Attribute Time-Intensity Data of Fruit Chews

机译:基于功能数据分析和非累加模型的水果咀嚼多属性时间强度数据的时间驱动因素

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Conventional drivers of liking analysis was extended with a time dimension into temporal drivers of liking (TDOL) based on functional data analysis methodology and non-additive models for multiple-attribute time-intensity (MATI) data. The non-additive models, which consider both direct effects and interaction effects of attributes to consumer overall liking, include Choquet integral and fuzzy measure in the multi-criteria decision-making, and linear regression based on variance decomposition. Dynamics of TDOL, i.e., the derivatives of the relative importance functional curves were also explored. Well-established R packages ‘fda’, ‘kappalab’ and ‘relaimpo’ were used in the paper for developing TDOL. Applied use of these methods shows that the relative importance of MATI curves offers insights for understanding the temporal aspects of consumer liking for fruit chews.
机译:基于功能数据分析方法和多属性时间强度(MATI)数据的非累加模型,常规的喜好分析驱动程序随时间维度扩展为喜好的临时驱动程序(TDOL)。非加性模型同时考虑了属性对消费者总体喜好的直接影响和交互作用,包括多准则决策中的Choquet积分和模糊测度,以及基于方差分解的线性回归。还探讨了TDOL的动力学,即相对重要性功能曲线的导数。完善的R包“ fda”,“ kappalab”和“ relaimpo”被用于开发TDOL的论文中。这些方法的实际应用表明,MATI曲线的相对重要性为理解消费者喜欢水果咀嚼的时间方面提供了见识。

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