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Application of Mixture Models to Large Datasets,sider normal and .-mixture models. As they are highly parameterized, we review methods to enable them to be fitted to large datasets involving many observations and variables. Attention is then given to extensions of these mixture models to mixtures with skew normal and skew .-distributions for thedeadlock 发表于 2025-3-22 09:28:32
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Application-Level Benchmarking of Big Data Systems, phenomenon. The amount, rate, and variety of data that are assembled—for almost any application domain—are necessitating a reexamination of old technologies and development of new technologies to get value from the data, in a timely fashion. With increasing adoption and penetration of mobile techno