AbstractA distance for mixed nominal, ordinal and continuous data is developed by applying the Kullback–Leibler divergence to the general mixed-data model, an extension of the general location model that allows for ordinal variables to be incorporated in the model. The distance obtained can be considered as a generalization of the Mahalanobis distance to data with a mixture of nominal, ordinal and continuous variables. Moreover, it includes as special cases previous Mahalanobis-type distances developed by Bedrick et al. (Biometrics 56 (2000) 394) and Bar-Hen and Daudin (J. Multivariate Anal. 53 (1995) 332). Asymptotic results regarding the maximum likelihood estimator of the distance are discussed. The results of a simulation study on the l...
where a and b are twomultivariate observations, Σ− is the inverse of the variance-covariance matrix...
This paper presents a general notion of Mahalanobis distance for functional data that extends the cl...
The problem of classification in multivariate analysis is considered. The distribution of the extrem...
AbstractThe Mahalanobis distance is extended to the case where the variables are a mixture of discre...
I consider the problem of estimating the Mahalanobis distance between multivariate normal population...
In this paper we study the main properties of a distance introduced by C.M. Cuadras (1974). This dis...
本研究採用Lee 和Poon 所提出的隱藏常態變數模型來估計混合連續與間斷型變數之參數估計,並估計其馬式距離。此外,並利用穩健估計來估計混合型資料參數及其馬式距離,可在有離群值時解決最大蓋似估計的不穩...
A general form of the location model is considered for mixed continuous and categorical variables ob...
Bedrick, Lapodus和Powell(2000)提出利用常態潛在變數模型(normal latent variable model),估計連續與順序變數混合型資料(mixed data)馬氏...
We give a novel estimator of Mahalanobis distance D2 between two non-normal populations. We show tha...
A factor model based covariance matrix is used to build a new form of Mahalanobis distance. The dist...
The extension of Mahalanobis's distance to the case of a mixture of discrete and continuous variable...
The objective of this paper is first to predict generalized Euclidean distances in the context of di...
<div><p>This article presents a new semidistance for functional observations that generalizes the Ma...
AbstractThe range over standard deviation of a set of univariate data points is given a natural mult...
where a and b are twomultivariate observations, Σ− is the inverse of the variance-covariance matrix...
This paper presents a general notion of Mahalanobis distance for functional data that extends the cl...
The problem of classification in multivariate analysis is considered. The distribution of the extrem...
AbstractThe Mahalanobis distance is extended to the case where the variables are a mixture of discre...
I consider the problem of estimating the Mahalanobis distance between multivariate normal population...
In this paper we study the main properties of a distance introduced by C.M. Cuadras (1974). This dis...
本研究採用Lee 和Poon 所提出的隱藏常態變數模型來估計混合連續與間斷型變數之參數估計,並估計其馬式距離。此外,並利用穩健估計來估計混合型資料參數及其馬式距離,可在有離群值時解決最大蓋似估計的不穩...
A general form of the location model is considered for mixed continuous and categorical variables ob...
Bedrick, Lapodus和Powell(2000)提出利用常態潛在變數模型(normal latent variable model),估計連續與順序變數混合型資料(mixed data)馬氏...
We give a novel estimator of Mahalanobis distance D2 between two non-normal populations. We show tha...
A factor model based covariance matrix is used to build a new form of Mahalanobis distance. The dist...
The extension of Mahalanobis's distance to the case of a mixture of discrete and continuous variable...
The objective of this paper is first to predict generalized Euclidean distances in the context of di...
<div><p>This article presents a new semidistance for functional observations that generalizes the Ma...
AbstractThe range over standard deviation of a set of univariate data points is given a natural mult...
where a and b are twomultivariate observations, Σ− is the inverse of the variance-covariance matrix...
This paper presents a general notion of Mahalanobis distance for functional data that extends the cl...
The problem of classification in multivariate analysis is considered. The distribution of the extrem...