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A Preference Model on Adaptive Affinity Propagation

机译:自适应亲和力传播的偏好模型

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In recent years, two new data clustering algorithms have been proposed. One of them isAffinity Propagation (AP). AP is a new data clustering technique that use iterative message passing and consider all data points as potential exemplars. Two important inputs of AP are a similarity matrix (SM) of the data and the parameter ”preference” p. Although the original AP algorithm has shown much success in data clustering, it still suffer from one limitation: it is not easy to determine the value of the parameter ”preference” p which can result an optimal clustering solution. To resolve this limitation, we propose a new model of the parameter ”preference” p, i.e. it is modeled based on the similarity distribution. Having the SM and p, Modified Adaptive AP (MAAP) procedure is running. MAAP procedure means that we omit the adaptive p-scanning algorithm as in original Adaptive-AP (AAP) procedure. Experimental results on random non-partition and partition data sets show that (i) the proposed algorithm, MAAP-DDP, is slower than original AP for random non-partition dataset, (ii) for random 4-partition dataset and real datasets the proposed algorithm has succeeded to identify clusters according to the number of dataset’s true labels with the execution times that are comparable with those original AP. Beside that the MAAP-DDP algorithm demonstrates more feasible and effective than original AAP procedure.
机译:近年来,提出了两种新的数据聚类算法。其中之一是亲和力传播(AP)。 AP是一种新的数据聚类技术,它使用迭代消息传递并将所有数据点视为潜在的示例。 AP的两个重要输入是数据的相似性矩阵(SM)和参数“ preference” p。尽管原始的AP算法在数据聚类中已显示出很大的成功,但它仍然存在一个局限性:确定参数“ preference” p的值并不容易,因为这会导致最佳的聚类解决方案。为解决此限制,我们提出了参数“ preference” p的新模型,即基于相似度分布进行建模。具有SM和p,正在运行修改后的自适应AP(MAAP)过程。 MAAP程序意味着我们像原始Adaptive-AP(AAP)程序一样省略了自适应p扫描算法。针对随机非分区和分区数据集的实验结果表明:(i)对于随机非分区数据集,所提出的算法MAAP-DDP比原始AP慢,(ii)对于建议的随机4分区数据集和实际数据集该算法已成功地根据数据集的真实标签数量识别了聚类,并且执行时间与原始AP相当。此外,MAAP-DDP算法比原始AAP程序具有更多的可行性和有效性。

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