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Unsupervised evolutionary clustering algorithm for mixed type data

机译:混合类型数据的无监督进化聚类算法

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In this paper, we propose a novel unsupervised evolutionary clustering algorithm for mixed type data, evolutionary k-prototype algorithm (EKP). As a partitional clustering algorithm, k-prototype (KP) algorithm is a well-known one for mixed type data. However, it is sensitive to initialization and converges to local optimum easily. Global searching ability is one of the most important advantages of evolutionary algorithm (EA), so an EA framework is introduced to help KP overcome its flaws. In this study, KP is applied as a local search strategy, and runs under the control of the EA framework. Experiments on synthetic and real-life datasets show that EKP is more robust and generates much better results than KP for mixed type data.
机译:在本文中,我们提出了一种用于混合型数据,进化k原型算法(EKP)的新型无监督进化聚类算法。作为分隔聚类算法,K原型(KP)算法是一个用于混合类型数据的众所周知的算法。然而,它对初始化并易于易于融合到局部最佳敏感性。全球搜索能力是进化算法(EA)最重要的优势之一,因此引入了EA框架以帮助KP克服其缺陷。在本研究中,KP应用于本地搜索策略,并在EA框架的控制下运行。合成和现实生活数据集的实验表明,EKP更强大,而且对于混合类型数据而不是KP的更好的结果。

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