基于parzen窗密度的大数据集高效快速聚类方法

V. S. Babu, P. Viswanath
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引用次数: 6

摘要

像DBSCAN这样的基于密度的聚类技术可以发现任意形状的聚类以及有噪声的异常值。DBSCAN通过计算落在半径为epsi的球体上的点的数量来确定某一点的密度,它的时间复杂度为0 (n2)。因此,它不适合大型数据集。本文提出的方法是一种高效、快速的基于Parzen-Window密度的聚类方法,该方法利用原型来减少计算量,利用光滑的核函数来估计某一点的密度,因此估计的密度也平滑变化。利用计数导元法推导了丰富的原型。它们与高斯核函数的一种特殊形式一起使用,它是径向对称的,因此函数可以完全由方差参数指定。将该方法与DBSCAN进行了实验比较,结果表明该方法适用于大数据集。
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An Efficient and Fast Parzen-Window Density Based Clustering Method for Large Data Sets
Density based clustering technique like DBSCAN finds arbitrary shaped clusters along with noisy outliers. DBSCAN finds the density at a point by counting the number of points falling in a sphere of radius epsi and it has a time complexity of O(n2). Hence it is not suitable for large data sets. The proposed method in this paper is an efficient and fast Parzen-Window density based clustering method which uses (i) prototypes to reduce the computational burden, (ii) a smooth kernel function to estimate density at a point and hence the estimated density is also varies smoothly. Enriched prototypes are derived using counted leaders method. These are used with a special form of the Gaussian kernel function which is radially symmetrical and hence the function can be completely specified by a variance parameter only. The proposed method is experimentally compared with DBSCAN which shows that it is a suitable method for large data sets.
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