nostrum 发表于 2025-3-28 15:28:11
Model-Based Classification Via Patterned Covariance Analysis,n rule is derived using Gaussian mixtures where covariance matrices are given according to a multiple testing procedure which asesses a pattern among heteroscedasticity, homometroscedasticity, homotroposcedasticity, and homoscedasticity. The mixture models are then fitted using all available data (l恶心 发表于 2025-3-28 19:12:14
Data Stream Summarization by Histograms Clustering, which require to adapt the knowledge discovery process to the new emerging concepts. To deal with this challenge we propose a clustering algorithm where each cluster is summarized by a histogram and data are allocated to clusters through a Wasserstein derived distance. Histograms are a well known gconfederacy 发表于 2025-3-29 01:06:10
Nonparametric Multivariate Inference Via Permutation Tests for CUB Models,f Uniform and shifted Binomial distributions, CUB models), proposed by Piccolo (2003, ., 85–104), D’Elia & Piccolo (2005, ., 917–934), Piccolo (2006, ., 33–78) and Iannario (2010, ., 87–94). In case of a univariate response, a permutation solution to test for covariates effects has been discussed inAmorous 发表于 2025-3-29 06:10:30
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,On Two Classes of Weighted Rank Correlation Measures Deriving from the Spearman’s , ,er ones. This paper investigates, from a descriptive perspective, the behaviour of (.) five existing indices that introduce suitable weights in the simplified formula of the Spearman’s . and (.) an additional five indices we derive using the same weights in the Pearson’s product-moment correlation iRadiculopathy 发表于 2025-3-29 16:20:52
Beanplot Data Analysis in a Temporal Framework,togram time series or the interval time series can be very useful to model the intra-period variability of the series. These types of new time series can be very useful with High Frequency financial data, data collected with often irregularly spaced observations.压碎 发表于 2025-3-29 22:01:00
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Grouping Around Different Dimensional Affine Subspaces,of application. Allowing for different dimensions is needed in many applications. This work extends the TCLUST methodology to deal with the problem of grouping data around different dimensional linear subspaces in the presence of noise. Two ways of considering error terms in the orthogonal of the li粗俗人 发表于 2025-3-30 04:22:07
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