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A Kernel Based Method for Discovering Market Segments in Beef Meat

机译:一种基于内核的牛肉肉细分市场发现方法

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摘要

In this paper we propose a method for learning the reasons why groups of consumers prefer some food products instead of others. We emphasize the role of groups given that, from a practical point of view, they may represent market segments that demand different products. Our method starts representing people's preferences in a metric space; there we are able to define a kernel based similarity function that allows a clustering algorithm to discover significant groups of consumers with homogeneous tastes. Finally in each cluster, we learn, with a SVM, a function that explains the tastes of the consumers grouped in the cluster. To illustrate our method, a real case of consumers of beef meat was studied. The panel was formed by 171 people who rated 303 samples of meat from 101 animals with 3 different aging periods.
机译:在本文中,我们提出了一种方法来了解为什么消费者群体偏爱某些食品而不是其他食品的原因。我们强调组的作用,因为从实际的角度来看,它们可能代表需要不同产品的细分市场。我们的方法开始在度量空间中表示人们的偏好;在那里,我们能够定义基于内核的相似度函数,该函数允许聚类算法发现具有同质品味的重要消费者群体。最后,在每个集群中,我们都使用SVM学习了一个功能,该函数可以解释集群中分组的消费者的口味。为了说明我们的方法,研究了一个真实的牛肉消费者案例。该小组由171人组成,他们对101种动物的3种不同衰老时期的303种肉样品进行了评级。

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