Poisson Kernel-Based Clustering on the Sphere: Convergence Properties, Identifiability, and a Method of Sampling
收藏DataCite Commons2021-09-29 更新2024-07-28 收录
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https://tandf.figshare.com/articles/dataset/Poisson_Kernel-Based_Clustering_on_the_Sphere_Convergence_Properties_Identifiability_and_a_Method_of_Sampling/11973546
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资源简介:
Spherical or directional data arise in many applications of interest. Furthermore, many nondirectional datasets can be usefully re-expressed in the form of directions and analyzed as spherical data. We have proposed a clustering algorithm using mixtures of Poisson-kernel-based densities (PKBD) on the sphere. We prove convergence of the associated generalized EM-algorithm, investigate the identifiability of various forms of PKBD mixture model, and study in detail its performance via simulation and application to real data. Specifically, we discuss a method and simulate data from a variety of PKBD models, then study the performance of the algorithm in terms of adjusted Rand index, macro-precision, and macro-recall. Finally, we compare the PKBD clustering method with other algorithms for clustering data on the sphere. Supplementary materials are available online and provide proofs of the theoretical results and the associated computer code.
提供机构:
Taylor & Francis
创建时间:
2020-03-12



