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Efficient Determination of Binary Non-negative Vector Neighbors with Regard to Cosine Similarity

机译:关于余弦相似性的二元非负向量邻居的有效测定

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The cosine and Tanimoto similarity measures are often and successfully applied in classification, clustering and ranking in chemistry, biology, information retrieval, and text mining. A basic operation in such tasks is identification of neighbors. This operation becomes critical for large high dimensional data. The usage of the triangle inequality property was recently offered to alleviate this problem in the case of applying a distance metric. The triangle inequality holds for the Tanimoto dissimilarity, which functionally determines the Tanimoto similarity, provided the underlying data have a form of vectors with binary non-negative values of attributes. Unfortunately, the triangle inequality holds neither for the cosine similarity measure nor for its corresponding dissimilarity measure. However, in this paper, we propose how to use the triangle inequality property and/or bounds on lengths of neighbor vectors to efficiently determine non-negative binary vectors that are similar with regard to the cosine similarity measure.
机译:余弦和Tanimoto相似度量通常和成功地应用于化学,生物学,信息检索和文本挖掘的分类,聚类和排名。这种任务中的基本操作是邻居的识别。该操作对大型高维数据变得至关重要。最近提供了三角形不等式属性的使用,以便在应用距离度量的情况下缓解此问题。三角形不等式对于Tanimoto相似性,它在功能上确定Tanimoto相似性,只要底层数据具有具有二进制非负值的向量的形式。不幸的是,三角形不等式既不适用于余弦相似度测量,也不是其相应的不相似度量。然而,在本文中,我们提出了如何在邻居向量的长度上使用三角形不等式属性和/或界限,以有效地确定类似于余弦相似度量的非负二进制向量。

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