Asymptotics and practical aspects of testing normality with kernel methods

02/08/2019
by   Natsumi Makigusa, et al.
0

This paper is concerned with testing normality in a Hilbert space based on the maximum mean discrepancy. Specifically, we discuss the behavior of the test from two standpoints: asymptotics and practical aspects. Asymptotic normality of the test under a fixed alternative hypothesis is developed, which implies that the test has consistency. Asymptotic distribution of the test under a sequence of local alternatives is also derived, from which asymptotic null distribution of the test is obtained. A concrete expression for the integral kernel associated with the null distribution is derived under the use of the Gaussian kernel, allowing the implementation of a reliable approximation of the null distribution. Simulations and applications to real data sets are reported with emphasis on high-dimension low-sample size cases.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/07/2008

Testing for Homogeneity with Kernel Fisher Discriminant Analysis

We propose to investigate test statistics for testing homogeneity in rep...
research
11/22/2018

k-Sample problem based on generalized maximum mean discrepancy

In this paper we deal with the problem of testing for the quality of k p...
research
12/31/2021

Kernel Two-Sample Tests in High Dimension: Interplay Between Moment Discrepancy and Dimension-and-Sample Orders

Motivated by the increasing use of kernel-based metrics for high-dimensi...
research
11/30/2018

Kernel based method for the k-sample problem

In this paper we deal with the problem of testing for the equality of k ...
research
10/15/2017

Testing for Principal Component Directions under Weak Identifiability

We consider the problem of testing, on the basis of a p-variate Gaussian...
research
10/05/2022

A uniform kernel trick for high-dimensional two-sample problems

We use a suitable version of the so-called "kernel trick" to devise two-...
research
01/10/2019

Closed-form Expressions for Maximum Mean Discrepancy with Applications to Wasserstein Auto-Encoders

The Maximum Mean Discrepancy (MMD) has found numerous applications in st...

Please sign up or login with your details

Forgot password? Click here to reset