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Analyzing Sensory Data Using Non-linear Preference Learning with Feature Subset Selection

机译:使用具有特征子集选择的非线性偏好学习分析感官数据

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摘要

The quality of food can be assessed from different points of view. In this paper, we deal with those aspects that can be appreciated through sensory impressions. When we are aiming to induce a function that maps object descriptions into ratings, we must consider that consumers' ratings are just a way to express their preferences about the products presented in the same testing session. Therefore, we postulate to learn from consumers' preference judgments instead of using an approach based on regression. This requires the use of special purpose kernels and feature subset selection methods. We illustrate the benefits of our approach in two families of real-world data bases.
机译:可以从不同的观点评估食物的质量。在本文中,我们应对通过感官印象可以理解的那些方面。当我们旨在诱导将对象描述映射到评级的功能时,我们必须考虑消费者的评级只是一种表达他们对同一测试会话中提供的产品的偏好的方式。因此,我们假设从消费者的偏好判断中学习,而不是使用基于回归的方法。这需要使用特殊目的内核和特征子集选择方法。我们说明了我们在两个真实数据库的两个家庭中的方法的好处。

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