排序方式: 共有18条查询结果,搜索用时 15 毫秒
1.
Aristidis K. Nikoloulopoulos Dimitris Karlis 《Journal of statistical planning and inference》2009,139(11):203
A new family of copulas is introduced that provides flexible dependence structure while being tractable and simple to use for multivariate discrete data modeling. The construction exploits finite mixtures of uncorrelated normal distributions. Accordingly, the cumulative distribution function is simply the product of univariate normal distributions. At the same time, however, the mixing operation introduces association. The properties of the new family of copulas are examined and a concrete application is used to show its applicability. 相似文献
2.
Goodness-of-fit tests for the family of symmetric normal inverse Gaussian distributions are constructed. The tests are based on a weighted integral incorporating the empirical characteristic function of suitably standardized data. An EM-type algorithm is employed for the estimation of the parameters involved in the test statistic. Monte Carlo results show that the new procedure is competitive with classical goodness-of-fit methods. An application with financial data is also included. 相似文献
3.
George Iliopoulos Dimitris Karlis Ioannis Ntzoufras 《Revue canadienne de statistique》2005,33(4):571-589
The authors describe Bayesian estimation for the parameters of the bivariate gamma distribution due to Kibble (1941). The density of this distribution can be written as a mixture, which allows for a simple data augmentation scheme. The authors propose a Markov chain Monte Carlo algorithm to facilitate estimation. They show that the resulting chain is geometrically ergodic, and thus a regenerative sampling procedure is applicable, which allows for estimation of the standard errors of the ergodic means. They develop Bayesian hypothesis testing procedures to test both the dependence hypothesis of the two variables and the hypothesis of equal means. They also propose a reversible jump Markov chain Monte Carlo algorithm to carry out the model selection problem. Finally, they use sets of real and simulated data to illustrate their methodology. 相似文献
4.
Tom Brijs Dimitris Karlis Filip Van den Bossche Geert Wets 《Journal of the Royal Statistical Society. Series A, (Statistics in Society)》2007,170(4):1001-1017
Summary. Road safety has recently become a major concern in most modern societies. The identification of sites that are more dangerous than others (black spots) can help in better scheduling road safety policies. This paper proposes a methodology for ranking sites according to their level of hazard. The model is innovative in at least two respects. Firstly, it makes use of all relevant information per accident location, including the total number of accidents and the number of fatalities, as well as the number of slight and serious injuries. Secondly, the model includes the use of a cost function to rank the sites with respect to their total expected cost to society. Bayesian estimation for the model via a Markov chain Monte Carlo approach is proposed. Accident data from 519 intersections in Leuven (Belgium) are used to illustrate the methodology proposed. Furthermore, different cost functions are used to show the effect of the proposed method on the use of different costs per type of injury. 相似文献
5.
Multivariate count time series data occur in many different disciplines. The class of INteger-valued AutoRegressive (INAR) processes has the great advantage to consider explicitly both the discreteness and autocorrelation characterizing this type of data. Moreover, extensions of the simple INAR(1) model to the multi-dimensional space make it possible to model more than one series simultaneously. However, existing models do not offer great flexibility for dependence modelling, allowing only for positive correlation. In this work, we consider a bivariate INAR(1) (BINAR(1)) process where cross-correlation is introduced through the use of copulas for the specification of the joint distribution of the innovations. We mainly emphasize on the parametric case that arises under the assumption of Poisson marginals. Other marginal distributions are also considered. A short application on a bivariate financial count series illustrates the model. 相似文献
6.
Edward Wiesmeier M.D. Alan B. Forsythe Ph.D. Margaret J. Sundstrom M.P.H. Karlis C. Ullis M.D. Robin Hertz R.N. 《Journal of American college health : J of ACH》2013,61(1):29-35
Abstract The responses of 582 male university students attending the UCLA Student Health Service for medical evaluation are presented. Of these students, 37% (215) were freshmen and varsity athletes having pretraining physicals, and 63% (367) were students being evaluated in the SHS primary care clinics. A self-report questionnaire examined the frequency of sexual problems experienced by the respondents and their partners. The most common concerns expressed about themselves were orgasmic difficulties, feeling too interested in sex, and trouble getting and keeping erections. Forty-one percent of the SHS group and 33% of the athletes group had sexual concerns, and, of these, 55% and 40% respectively wanted help with their problems. Specific counseling needs of students were also evaluated. 相似文献
7.
Goodness-of-fit tests for the family of the four-parameter normal–variance gamma distribution are constructed. The tests are based on a weighted integral incorporating the empirical characteristic function of suitably standardized data. Non-standard algorithms are employed for the computation of the maximum-likelihood estimators of the parameters involved in the test statistic, while Monte Carlo results are used in order to compare the new test with some classical goodness-of-fit methods. A real-data application is also included. 相似文献
8.
Dimitris Karlis Valentin Patilea 《Journal of statistical planning and inference》2008,138(8):2313-2329
The problem of building bootstrap confidence intervals for small probabilities with count data is addressed. The law of the independent observations is assumed to be a mixture of a given family of power series distributions. The mixing distribution is estimated by nonparametric maximum likelihood and the corresponding mixture is used for resampling. We build percentile-t and Efron percentile bootstrap confidence intervals for the probabilities and we prove their consistency in probability. The new theoretical results are supported by simulation experiments for Poisson and geometric mixtures. We compare percentile-t and Efron percentile bootstrap intervals with eight other bootstrap or asymptotic theory based intervals. It appears that Efron percentile bootstrap intervals outperform the competitors in terms of coverage probability and length. 相似文献
9.
Bivariate count data arise in several different disciplines (epidemiology, marketing, sports statistics just to name a few)
and the bivariate Poisson distribution being a generalization of the Poisson distribution plays an important role in modelling
such data. In the present paper we present a Bayesian estimation approach for the parameters of the bivariate Poisson model
and provide the posterior distributions in closed forms. It is shown that the joint posterior distributions are finite mixtures
of conditionally independent gamma distributions for which their full form can be easily deduced by a recursively updating
scheme. Thus, the need of applying computationally demanding MCMC schemes for Bayesian inference in such models will be removed,
since direct sampling from the posterior will become available, even in cases where the posterior distribution of functions
of the parameters is not available in closed form. In addition, we define a class of prior distributions that possess an interesting
conjugacy property which extends the typical notion of conjugacy, in the sense that both prior and posteriors belong to the
same family of finite mixture models but with different number of components. Extension to certain other models including
multivariate models or models with other marginal distributions are discussed. 相似文献
10.
Dimitris Karlis 《Journal of applied statistics》2003,30(1):63-77
Multivariate extensions of the Poisson distribution are plausible models for multivariate discrete data. The lack of estimation and inferential procedures reduces the applicability of such models. In this paper, an EM algorithm for Maximum Likelihood estimation of the parameters of the Multivariate Poisson distribution is described. The algorithm is based on the multivariate reduction technique that generates the Multivariate Poisson distribution. Illustrative examples are also provided. Extension to other models, generated via multivariate reduction, is discussed. 相似文献