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The Parallel Seeding Algorithm for κ-Means Problem with Penalties

机译:κ平行播种算法为ksice问题遇到惩罚

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摘要

As a classic NP-hard problem in machine learning and computational geometry, the k-means problem aims to partition a data point set into k clusters such that the sum of the squared distance from each point to its nearest center is minimized. The k-means problem with penalties, denoted by k-MPWP, generalizing the k-means problem, allows that some points can be paid some penalties instead of being clustered. In this paper, we study the seeding algorithm of k-MPWP and propose a parallel seeding algorithm for k-MPWP along with the corresponding theoretical analysis.
机译:作为机器学习和计算几何中的经典NP难题问题,K-Means问题旨在将数据点分配到k个集群中,使得从每个点到最近的中心的平方距离之和最小化。 K-meain问题遇到惩罚,由K-MPWP表示,概括K-Means问题,允许某些点可以支付一些惩罚而不是群集。本文研究了K-MPWP的播种算法,并提出了K-MPWP的并联播种算法以及相应的理论分析。

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