Multiple hypothesis testing is an important topic in statistics.Therefore, the problem addressed in this thesis is an important one.It is also a topic in which it is difficult to make a significant improvement, for various reasons.One reason is that often different users may have different objectives and with multiple hypotheses there is no unique objective function. In the thesis is recognized this fact and as the objective \ud functions, estimated the quality of made decisions, are used minimization of the probabilities of the errors of one kind at restrictions of the probabilities of the errors of second kind. Such approach is a new one which causes the uniqueness of the regions of acceptance of hypotheses and, consequently, improves the...
The differential diagnosis of a disease is often based on the information obtained from multiple dia...
Preexperimental frequentist error probabilities are arguably inadequate, as summaries of evidence fr...
We consider several statistical approaches to binary classification and multiple hypothesis testing ...
Multiple hypothesis testing is an important topic in statistics.Therefore, the problem addressed in ...
The most traditional approach to the problem of multiple hypotheses testing has been Bonferroni’s me...
We consider hypothesis testing problems with skewed alternatives via a Bayesian decision theoretic f...
The results of investigation of the properties of new sequential methods of testing many hypotheses ...
Recently, the field of multiple hypothesis testing has experienced a great expansion, basically beca...
In modern statistical and machine learning applications, there is an increasing need for developing ...
This chapter focuses on Bayesian methods and illustrates both the intrinsic unity of Bayesian thinki...
summary:This work deals with a general problem of testing multiple hypotheses about the distribution...
In hypothesis testing, the conclusions from Bayesian and Frequentist approaches can differ markedly,...
This thesis presents methods to derive decision procedures (tests), as solutions of clearly stated o...
© 2020 Informa UK Limited, trading as Taylor & Francis Group. The problem of multiple testing is c...
This dissertation deals with the problem of simultaneously making many (M) binary decisions based on...
The differential diagnosis of a disease is often based on the information obtained from multiple dia...
Preexperimental frequentist error probabilities are arguably inadequate, as summaries of evidence fr...
We consider several statistical approaches to binary classification and multiple hypothesis testing ...
Multiple hypothesis testing is an important topic in statistics.Therefore, the problem addressed in ...
The most traditional approach to the problem of multiple hypotheses testing has been Bonferroni’s me...
We consider hypothesis testing problems with skewed alternatives via a Bayesian decision theoretic f...
The results of investigation of the properties of new sequential methods of testing many hypotheses ...
Recently, the field of multiple hypothesis testing has experienced a great expansion, basically beca...
In modern statistical and machine learning applications, there is an increasing need for developing ...
This chapter focuses on Bayesian methods and illustrates both the intrinsic unity of Bayesian thinki...
summary:This work deals with a general problem of testing multiple hypotheses about the distribution...
In hypothesis testing, the conclusions from Bayesian and Frequentist approaches can differ markedly,...
This thesis presents methods to derive decision procedures (tests), as solutions of clearly stated o...
© 2020 Informa UK Limited, trading as Taylor & Francis Group. The problem of multiple testing is c...
This dissertation deals with the problem of simultaneously making many (M) binary decisions based on...
The differential diagnosis of a disease is often based on the information obtained from multiple dia...
Preexperimental frequentist error probabilities are arguably inadequate, as summaries of evidence fr...
We consider several statistical approaches to binary classification and multiple hypothesis testing ...