4.6 Article

Identifying the Primary Odor Perception Descriptors by Multi-Output Linear Regression Models

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 8, 页码 -

出版社

MDPI
DOI: 10.3390/app11083320

关键词

odor perception; primary odor perception descriptor; clustering; linear regression

资金

  1. National Natural Science Foundation of China [61571140]
  2. Guangdong Science and Technology Department [2017A010101032]

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This study discusses the selection mechanism of odor perception descriptors and proposes the task of reducing the number of such descriptors. Experimental results show that dozens of odor perception descriptors are redundant, and reducing the size of the odor vocabulary can simplify odor sensory assessment.
Semantic odor perception descriptors, such as sweet, are widely used for product quality assessment in food, beverage, and fragrance industries to profile the odor perceptions. The current literature focuses on developing as many as possible odor perception descriptors. A large number of odor descriptors poses challenges for odor sensory assessment. In this paper, we propose the task of narrowing down the number of odor perception descriptors. To this end, we contrive a novel selection mechanism based on machine learning to identify the primary odor perceptual descriptors (POPDs). The perceptual ratings of non-primary odor perception descriptors (NPOPDs) could be predicted precisely from those of the POPDs. Therefore, the NPOPDs are redundant and could be disregarded from the odor vocabulary. The experimental results indicate that dozens of odor perceptual descriptors are redundant. It is also observed that the sparsity of the data has a negative correlation coefficient with the model performance, while the Pearson correlation between odor perceptions plays an active role. Reducing the odor vocabulary size could simplify the odor sensory assessment and is auxiliary to understand human odor perceptual space.

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