67 research outputs found
Consistency of Decision in Finite and Numerable Multinomial Models
Publisher Copyright: © 2023 by the authors. This research received no external funding.The multinomial distribution is often used in modeling categorical data because it describes the probability of a random observation being assigned to one of several mutually exclusive categories. Given a finite or numerable multinomial model (Formula presented.) whose decision is indexed by a parameter (Formula presented.) and having a cost (Formula presented.) depending on (Formula presented.) and on (Formula presented.), we show that, under general conditions, the probability of taking the least cost decision tends to 1 when n tends to ∞, i.e., we showed that the cost decision is consistent, representing a Statistical Decision Theory approach to the concept of consistency, which is not much considered in the literature. Thus, under these conditions, we have consistency in the decision making. The key result is that the estimator (Formula presented.) with components (Formula presented.), where (Formula presented.) is the number of times we obtain the ith result when we have a sample of size n, is a consistent estimator of (Formula presented.). This result holds both for finite and numerable models. By this result, we were able to incorporate a more general form for consistency for the cost function of a multinomial model.publishersversionpublishe
Inference for types and structured families of commutative orthogonal block structures
Models with commutative orthogonal block structure, COBS, have orthogonal
block structure, OBS, and their least square estimators for estimable vectors are,
as it will be shown, best linear unbiased estimator, BLUE. Commutative Jordan algebras
will be used to study the algebraic structure of the models and to define special
types of models for which explicit expressions for the estimation of variance components
are obtained. Once normality is assumed, inference using pivot variables is quite
straightforward. To illustrate this class of models we will present unbalanced examples
before considering families of models. When the models in a family correspond to the treatments of a base design, the family is structured. It will be shown how, under quite
general conditions, the action of the factors in the base design on estimable vectors,
can be studied.info:eu-repo/semantics/publishedVersio
Estimation in mixed models through three step minimization
The aim of this article is to present an estimation procedure for both fixed
effects and variance components in linear mixed models. This procedure consists
of a maximum likelihood method which we call Three Step Minimization,
TSM. The major contribution of this method is that when variances tend to be
null standard algorithms behave badly, unlike the TSM method, which uses a
grid search algorithm in a compact set. A numerical application with real and
simulated data is provided.info:eu-repo/semantics/publishedVersio
Preliminary results on confidence intervals for open bonus malus
This work was partially supported by Financiamento Base 2009 ISFL-1-297 from FCT/MCTES/PT.Considering open portfolios, we analyze bonus–malus systems (BMS) under a realistic approach, as we already did in Guerreiro and Mexia (Discuss. Math. Probab. Stat. 24(2):197–213, 2004). Using stochastic vortices model we are now able to predict long-run distribution through confidence intervals.authorsversionpublishe
Limit distributions for asymptotically linear statistics with spherical error
The aim of this work is to obtain general results for the limit distributions of asymptotically linear statistics
when the error is spherical, increasing non-centrality. These results apply directly to homoscedastic normal error thus to high
precision measurements. We present a numerical example on cylinder volume to illustrate the usefulness of our approach.info:eu-repo/semantics/publishedVersio
Randomized sample size F tests for the one-way layout
Distributions and densities for F test statistics are obtained assuming random sample sizes, thus getting random degrees of freedom and non-centrality parameters. Classical optimum properties are extended to this new setup as well as Scheffé Theorem for simultaneous confidence intervals.publishersversionpublishe
Tests and relevancies for the hypotheses of an orthogonal family in a model with orthogonal block structure
A model has an orthogonal block structure if it has, as covariance matrix, a linear
combination of pairwise orthogonal projection matrices, that add up to the iden-
tity matrix. The range space of these matrices are associated to hypotheses of an
orthogonal family.
In this paper we show how to obtain tests for these hypotheses when normality is
assumed and how to consider their relevance when normality is discarded. Besides
the notion of relevance, we formulate hypotheses in a general way that may be
applied to models with orthogonal block structure, whose factors may have xed
and/or random e ects. The results are applied to prime basis factorial models and
an example is presented.info:eu-repo/semantics/publishedVersio
One-way random effects ANOVA with random sample sizes: An application to a Brazilian database on cancer registries
ANOVA is routinely used in many situations, namely in medical research, where the sample sizes may not be
previously known. This leads us to consider the samples sizes as realizations of random variables. The aim of this paper is to
extend one-way random effects ANOVA to those situations and apply our results to a Brazilian database on cancer registries.info:eu-repo/semantics/publishedVersio
Estimation in additive models and ANOVA-like applications
A well-known property of cumulant generating function is used to
estimate the first four order cumulants, using least-squares estimators.
In the case of additive models, empirical best linear unbiased
predictors are also obtained. Pairs of independent and identically
distributed models associated with the treatments of a base design
are used to obtain unbiased estimators for the fourth-order cumulants.
An application to real data is presented, showing the good
behaviour of the least-squares estimators and the great flexibility of
our approach.info:eu-repo/semantics/publishedVersio
One-way fixed effects ANOVA with missing observations
The aim of this paper is to extend the theory of F-tests with random sample sizes to situations when missing
observations may occur. We consider the one-way ANOVA with fixed effects. This approach is illustrated through an
application to patients affected by melanoma skin cancer, from three different states of Brazil.info:eu-repo/semantics/publishedVersio
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