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Multivariate Modality Inference Using Gaussian Kernel

Multivariate Modality Inference Using Gaussian Kernel
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摘要 The number of modes (also known as modality) of a kernel density estimator (KDE) draws lots of interests and is important in practice. In this paper, we develop an inference framework on the modality of a KDE under multivariate setting using Gaussian kernel. We applied the modal clustering method proposed by [1] for mode hunting. A test statistic and its asymptotic distribution are derived to assess the significance of each mode. The inference procedure is applied on both simulated and real data sets. The number of modes (also known as modality) of a kernel density estimator (KDE) draws lots of interests and is important in practice. In this paper, we develop an inference framework on the modality of a KDE under multivariate setting using Gaussian kernel. We applied the modal clustering method proposed by [1] for mode hunting. A test statistic and its asymptotic distribution are derived to assess the significance of each mode. The inference procedure is applied on both simulated and real data sets.
出处 《Open Journal of Statistics》 2014年第5期419-434,共16页 统计学期刊(英文)
关键词 MODALITY KERNEL DENSITY ESTIMATE Mode Clustering Modality Kernel Density Estimate Mode Clustering
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