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A survey of density based clustering algorithms

机译:基于密度的聚类算法调查

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Density based clustering algorithms (DBCLAs) rely on the notion of density to identify clusters of arbitrary shapes, sizes with varying densities. Existing surveys on DBCLAs cover only a selected set of algorithms. These surveys fail to provide an extensive information about a variety of DBCLAs proposed till date including a taxonomy of the algorithms. In this paper we present a comprehensive survey of various DBCLAs over last two decades along with their classification. We group the DBCLAs in each of the four categories: density definition, parameter sensitivity, execution mode and nature of data and further divide them into various classes under each of these categories. In addition, we compare the DBCLAs through their common features and variations in citation and conceptual dependencies. We identify various application areas of DBCLAs in domains such as astronomy, earth sciences, molecular biology, geography, multimedia. Our survey also identifies probable future directions of DBCLAs where involvement of density based methods may lead to favorable results.
机译:基于密度的聚类算法(DBCLA)依赖于密度的概念来识别任意形状的簇,尺寸具有不同的密度。 DBCLAS上的现有调查仅涵盖选定的算法集。这些调查未能提供关于迄今为止的各种DBCLA的广泛信息,包括算法的分类。在本文中,我们在过去二十年中对各种DBCLA进行了全面的调查以及分类。我们将DBCLA组分组在四类中的每一个中:密度定义,参数灵敏度,执行模式和数据的性质,并进一步将它们分成每个类别下的各个类别。此外,我们通过其共同的特征和引文和概念依赖性的变化进行比较DBCLA。我们在域中识别Dbclas的各种应用领域,例如天文学,地球科学,分子生物学,地理,多媒体。我们的调查还确定了DBClas的未来未来方向,其中基于密度的方法可能导致有利的结果。

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