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Geometric analysis of concept vectors based on similarity values

机译:基于相似度值的概念向量的几何分析

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Abstract In this paper, we offer a geometric framework for the computing of a concept’s conceptual vector based on its similarity position with other concepts in a vector space called concept space, which is a set of concept vectors together with a distance function derived from a similarity model. We show that there exists an isometry to map a concept space to a Euclidean space. So, the concept vector can be mapped to a coordinate in a Euclidean space and vice versa. Therefore, given only the similarity position of a concept, we can locate its coordinate and its concept vector subsequently, using distance geometry methods. We prove that such mapping functions do exist under some conditions. We also discuss how to map non-numerical attributes. At last, we show some preliminary experimental results and thoughts in the implementation of an attribute mining task. This work will benefit attribute retrieval tasks.
机译:摘要在本文中,我们提供了一个几何概念框架,用于基于概念空间中与其他概念的相似性位置来计算概念的概念向量,该概念空间是一组概念向量以及从相似性得出的距离函数模型。我们表明存在等轴测图,以将概念空间映射到欧几里得空间。因此,可以将概念向量映射到欧氏空间中的坐标,反之亦然。因此,仅给出概念的相似位置,我们就可以使用距离几何方法随后定位其坐标及其概念向量。我们证明了这种映射函数在某些条件下确实存在。我们还将讨论如何映射非数值属性。最后,我们展示了执行属性挖掘任务的一些初步实验结果和想法。这项工作将有益于属性检索任务。

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