dc.description.abstract |
Multiple hypothesis testing is an important topic in statistics. Therefore, the
problem addressed in this thesis is an important one. The Bayesian methods of hy-
potheses testing are widely used for solving different problems, and this technique is
rather well developed. A lot of scientific works are dedicated to the development of
this method. Many interesting and important results have been obtained in this field
by different authors. Despite of this fact there still remain a lot of unsolved prob-
lems. For filling these gaps, in this thesis we consider different problems of testing
many hypotheses by the Bayesian approach. In particular, in the Bayesian problem
of many hypotheses testing concerning all the parameters of multidimensional normal
distribution at correlation of observation results we have obtained the following new
results: the problem of computation of the risk function were considered; the formulae
for calculation of multidimensional probability integrals by series using the reduction
of dimensionality to one without information loss were derived; the formulae for cal-
culation of product moments for normalized normally distributed random values were
derived; the problems of existence and continuity of the probability distribution law
of linear combination of exponents of quadratic forms of the normally distributed
random vector, and, also, the problem of finding the closed form of this law were
considered; the existence of this law and the opportunity of its unambiguous deter-
mination by calculated moments of the appropriate random variable were proved;
the approximation of optimal regions of acceptance of hypotheses, which significantly
simplify the algorithms of realization of general solutions of the task, is offered; the
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properties and interrelations of the developed methods and algorithms were investi-
gated; the problem of choosing the loss function in the Bayesian problem of many
hypotheses testing was considered; the results of sensitivity analysis of the consid-
ered Bayesian problem are given; the calculation results for concrete examples, which
show the validity of the obtained results are given. Especially must be emphasized
that new sequential method of testing many hypotheses based on special properties of
regions of acceptance of hypotheses in the conditional Bayesian task of testing many
hypotheses is offered. The results of research of the properties of this method are
given. They show the consistency, simplicity and optimality of the obtained results
in the sense of the chosen criterion, which consists in the upper restriction of the
probability of the error of one kind and the minimization of the probability of the
error of the second kind. The examples of testing of hypotheses for the case of the
sequential independent sample from the multidimensional normal law of probability
distribution with correlated components are cited. They show the high quality of the
offered methods. |
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