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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Novel soft subspace clustering with multi-objective evolutionary approach for high-dimensional data
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Novel soft subspace clustering with multi-objective evolutionary approach for high-dimensional data

机译:具有高维数据多目标进化方法的新型软子空间聚类

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摘要

Many conventional soft subspace clustering techniques merge several criteria into a single objective to improve performance; however, the weighting parameters become important but difficult to set. In this paper, a novel soft subspace clustering with a multi-objective evolutionary approach (MOEASSC) is proposed to this problem. This clustering method considers two types of criteria as multiple objectives and optimizes them simultaneously by using a modified multi-objective evolutionary algorithm with new encoding and operators. An indicator called projection similarity validity index (PSVIndex) is designed to select the best solution and cluster number. Experiments on many datasets demonstrate the usefulness of MOEASSC and PSVIndex, and show that our algorithm is insensitive to its parameters and is scalable to large datasets.
机译:许多传统的软子空间聚类技术将多个条件合并为一个目标,以提高性能。但是,加权参数变得很重要,但是很难设置。针对这一问题,本文提出了一种具有多目标进化方法(MOEASSC)的新型软子空间聚类算法。这种聚类方法将两种类型的标准视为多目标,并通过使用带有新编码和运算符的改进多目标进化算法同时对它们进行优化。设计一个称为投影相似性有效性指标(PSVIndex)的指标来选择最佳解决方案和聚类数。在许多数据集上进行的实验证明了MOEASSC和PSVIndex的有用性,并表明我们的算法对其参数不敏感,并且可以扩展到大型数据集。

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