信号检测期望值剖析法采用两步评级法指导产品优化

IF 4.9 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY Food Quality and Preference Pub Date : 2024-03-19 DOI:10.1016/j.foodqual.2024.105170
Yeon-Joo Lee , Danielle van Hout , Hye-Seong Lee
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引用次数: 0

摘要

了解消费者对食品感官属性的要求及其情感后果,对于提高消费者满意度和取得市场成功至关重要。最近,Lee、Kim、van Hout 和 Lee(2021 年)推出了一种创新方法--信号检测期望剖析法,该方法利用基于评级的两步 "双面适用性(DFA)"测试来创建产品属性期望剖析,并通过 d′A 输出测量进行量化。本研究旨在展示和测试 d′A 期望剖析方法的使用情况和有效性,为产品开发提供洞察力。首先检验了该方法在使用基于评级的两步 DFA 方面的效率,然后将 d′A 期望剖析输出测量所引导的信息与通过偏最小二乘法(PLS)回归和景观细分分析(LSA)所确定的满意度驱动因素进行了比较,偏最小二乘法和景观细分分析通常用于将消费者满意度/喜爱度与感官认知联系起来。消费者对六种不同蛋黄酱产品的期望和满意度/感官评价构成了数据集。总体而言,d′A 期望曲线有效地确定了对总体满意度有重大影响的关键属性,与 PLS 回归和 LSA 的结果相一致。d′A 期望曲线的优势在于其对期望感官属性程度的定量表示,超越了实际评估产品的范围,为产品优化提供了可操作的见解。此外,通过纳入基于目标消费者享乐情绪的自定义属性(描述符对),d′A 期望曲线展示了针对特定目标消费群体有效解决消费者相关属性的潜力。
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The signal detection expectation profiling method with a two-step rating for guiding product optimization

Understanding consumer requirements with respect to the sensory attributes of food and the sentimental consequences is critical for enhancing consumer satisfaction and achieving market success. A recent innovation, the signal detection expectation profiling method, introduced by Lee, Kim, van Hout, and Lee (2021), utilizes the two-step rating-based ‘double-faced applicability (DFA)’ test to create expectation profiles for product attributes, quantified by d′A output measures. This study aimed to demonstrate and test the usage and efficacy of the d′A expectation profiling method to provide insight for product development. The efficiency of this approach for using a two-step rating-based DFA was examined first and the information guided by the d′A expectation profiling output measures was compared to satisfaction drivers identified through partial least square (PLS) regression and landscape segmentation analysis (LSA), commonly used to link consumer satisfaction/liking and sensory perception. Consumer expectations and satisfaction/sensory evaluations of six different mayonnaise products formed the dataset. Overall, the d′A expectation profiles effectively identified the key attributes significantly impacting overall satisfaction, aligning with the results of the PLS regression and LSA. The advantage of d′A expectation profiles lies in their quantitative representation of the degree of expected sensory attributes, extending beyond the scope of actual evaluated products and offering actionable insights for product optimization. Furthermore, by incorporating custom attributes (descriptor pairs) based on the hedonic valence of target consumers, the d′A expectation profile showcases the potential for effectively addressing consumer-relevant attributes tailored to specific target consumer groups.

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来源期刊
Food Quality and Preference
Food Quality and Preference 工程技术-食品科技
CiteScore
10.40
自引率
15.10%
发文量
263
审稿时长
38 days
期刊介绍: Food Quality and Preference is a journal devoted to sensory, consumer and behavioural research in food and non-food products. It publishes original research, critical reviews, and short communications in sensory and consumer science, and sensometrics. In addition, the journal publishes special invited issues on important timely topics and from relevant conferences. These are aimed at bridging the gap between research and application, bringing together authors and readers in consumer and market research, sensory science, sensometrics and sensory evaluation, nutrition and food choice, as well as food research, product development and sensory quality assurance. Submissions to Food Quality and Preference are limited to papers that include some form of human measurement; papers that are limited to physical/chemical measures or the routine application of sensory, consumer or econometric analysis will not be considered unless they specifically make a novel scientific contribution in line with the journal''s coverage as outlined below.
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