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Enhanced Dark Block Extraction Method Performed Automatically to Determine the Number of Clusters in Unlabeled Data Sets

机译:自动执行的增强型暗块提取方法,用于确定未标记数据集中的簇数

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One of the major issues in data cluster analysis is to decide the number of clusters or groups from a set of unlabeled data. In addition, the presentation of cluster should be analyzed to provide the accuracy of clustering objects. This paper propose a new method called Enhanced-Dark Block Extraction (E-DBE), which automatically identifies the number of objects groups in unlabeled datasets. The proposed algorithm relies on the available algorithm for visual assessment of cluster tendency of a dataset, by using several common signal and image processing techniques. The method includes the following steps: 1.Generating an Enhanced Visual Assessment Tendency (E-VAT) image from a dissimilarity matrix which is the input for E-DBE algorithm. 2. Processing image segmentation on E-VAT image to obtain a binary image then performs filter techniques. 3. Performing distance transformation to the filtered binary image and projecting the pixels in the main diagonal alignment of the image to figure a projection signal. 4. Smoothing the outcrop signal, computing its first-order derivative and then detecting major peaks and valleys in the resulting signal to acquire the number of clusters. E-DBE is a parameter-free algorithm to perform cluster analysis. Experiments of the method are presented on several UCI, synthetic and real world datasets.
机译:数据聚类分析中的主要问题之一是从一组未标记的数据中确定聚类或组的数量。此外,应分析聚类的表示形式以提供聚类对象的准确性。本文提出了一种称为增强型暗块提取(E-DBE)的新方法,该方法可自动识别未标记数据集中的对象组数量。所提出的算法依靠可用的算法,通过使用几种常见的信号和图像处理技术对数据集的聚类趋势进行视觉评估。该方法包括以下步骤:1.从作为E-DBE算法的输入的相异性矩阵生成增强的视觉评估趋势(E-VAT)图像。 2.对E-VAT图像进行图像分割以获取二进制图像,然后执行滤波技术。 3.对滤波后的二进制图像执行距离转换,并以图像的主对角线投影像素,以绘制投影信号。 4.平滑露头信号,计算其一阶导数,然后检测结果信号中的主要峰和谷以获取簇数。 E-DBE是执行聚类分析的无参数算法。在几个UCI,合成和真实数据集上介绍了该方法的实验。

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