This is a short 9-pp version of a longer working paper titled "Decision Making on the Sole Basis of Statistical Likelihood," School of Business Working Paper, Revised November 2004.This paper presents a decision-theoretic approach to statistical inference that satisfies the Likelihood Principle (LP) without using prior information. Unlike the Bayesian approach, which also satisfies LP, we do not assume knowledge of the prior distribution of the unknown parameter. With respect to information that can be obtained from an experiment, our solution is more efficient than Waldâ s minimax solution. However, with respect to information assumed to be known before the experiment, our solution demands less input than the Bayesian solution
We explore the meaning of information about quantities of interest. Our approach is divided in two s...
Abstract. Maximum likelihood estimation (MLE) and heuristic predictive estimation (HPE) are two wide...
International audienceThis paper considers the simple problem of abduction in the framework of Bayes...
This is a short 9-pp version of a longer working paper titled "Decision Making on the Sole Basis of ...
This paper presents a new axiomatic decision theory for choice under uncertainty. Unlike Bayesian de...
AbstractThis paper presents a new axiomatic decision theory for choice under uncertainty. Unlike Bay...
In both classical and Bayesian approaches, statistical inference is unified and generalized by the c...
In this paper, a nonadditive quantitative description of uncertain knowledge about statistical model...
In this paper, a nonadditive quantitative description of uncertain knowledge about statistical model...
This paper considers the simple problem of abduction in the framework of Bayes theorem, i.e. computi...
For a given prior density, we minimize the Shannon Mutual Information between a parameter and the da...
textIn Bayesian decision analysis, uncertainty and risk are accounted for with probabilities for the...
We review two foundations of statistical inference, the theory of likelihood and the Bayesian paradi...
This paper introduces the likelihood method for decision under uncertainty. The method allows the qu...
This paper considers the simple problem of abduction in the framework of Bayes theorem, when the pri...
We explore the meaning of information about quantities of interest. Our approach is divided in two s...
Abstract. Maximum likelihood estimation (MLE) and heuristic predictive estimation (HPE) are two wide...
International audienceThis paper considers the simple problem of abduction in the framework of Bayes...
This is a short 9-pp version of a longer working paper titled "Decision Making on the Sole Basis of ...
This paper presents a new axiomatic decision theory for choice under uncertainty. Unlike Bayesian de...
AbstractThis paper presents a new axiomatic decision theory for choice under uncertainty. Unlike Bay...
In both classical and Bayesian approaches, statistical inference is unified and generalized by the c...
In this paper, a nonadditive quantitative description of uncertain knowledge about statistical model...
In this paper, a nonadditive quantitative description of uncertain knowledge about statistical model...
This paper considers the simple problem of abduction in the framework of Bayes theorem, i.e. computi...
For a given prior density, we minimize the Shannon Mutual Information between a parameter and the da...
textIn Bayesian decision analysis, uncertainty and risk are accounted for with probabilities for the...
We review two foundations of statistical inference, the theory of likelihood and the Bayesian paradi...
This paper introduces the likelihood method for decision under uncertainty. The method allows the qu...
This paper considers the simple problem of abduction in the framework of Bayes theorem, when the pri...
We explore the meaning of information about quantities of interest. Our approach is divided in two s...
Abstract. Maximum likelihood estimation (MLE) and heuristic predictive estimation (HPE) are two wide...
International audienceThis paper considers the simple problem of abduction in the framework of Bayes...