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Global k-Means with Similarity Functions

机译:具有相似函数的全局k均值

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摘要

The k-means algorithm is a frequently used algorithm for solving clustering problems. This algorithm has the disadvantage that it depends on the initial conditions, for that reason, the global k-means algorithm was proposed to solve this problem. On the other hand, the k-means algorithm only works with numerical features. This problem is solved by the k-means algorithm with similarity functions that allows working with qualitative and quantitative variables and missing data (mixed and incomplete data). However, this algorithm still depends on the initial conditions. Therefore, in this paper an algorithm to solve the dependency on initial conditions of the k-means algorithm with similarity functions is proposed, our algorithm is tested and compared against k-means algorithm with similarity functions.
机译:k均值算法是解决聚类问题的常用算法。该算法的缺点是取决于初始条件,因此提出了全局k均值算法来解决该问题。另一方面,k-means算法仅适用于数字特征。通过具有相似功能的k-means算法解决了该问题,该算法允许使用定性和定量变量以及缺失数据(混合数据和不完整数据)。但是,该算法仍取决于初始条件。因此,本文提出了一种求解具有相似函数的k-means算法对初始条件的依赖性的算法,并对该算法进行了测试,并与具有相似函数的k-means算法进行了比较。

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