Homogeneity tests for several distributions in Hilbert space based on multiple maximum variance discrepancy
zbMATH Open1544.62245MaRDI QIDQ6600685
Guy Martial Nkiet, Armando Sosthène Kali Balogoun
Publication date: 10 September 2024
Published in: Comptes Rendus Mathématiques de l'Académie des Sciences (Search for Journal in Brave)
asymptotic normalityreproducing kernel Hilbert spacefunctional data analysiskernel-based conditional dependence
Nonparametric hypothesis testing (62G10) Asymptotic distribution theory in statistics (62E20) Hilbert spaces with reproducing kernels (= (proper) functional Hilbert spaces, including de Branges-Rovnyak and other structured spaces) (46E22)
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