Decision making in an uncertainty environment is one of the main objectives of Probability and Statistics. Traditionally, this problem has been approached with the comparison of the distributions of random variables or vectors by means of associated parameters. Thus, decisions are taken with a unique value that summarizes the information of the compared distributions. Stochastic orders appear as a tool to compare distributions of probability, using all the available information. A stochastic order tries to order probabilities in accordance with a criterion which is usually more demanding than the comparison with a unique parameter. Then, conclusions are usually stronger and more reliable. The aim of this Dissertation is the design and the ...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
We investigate the class of stochastic orders induced by Generalized Gini Functionals (GGF) or Yaari...
This study concerns about order statistics and their applications to quantitative finance. So far, t...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
The paper proposes a multivariate comparison among different financial markets, using risk/variabili...
This dissertation adds some new results to the theory of stochastic orders. Chapter 1 contains defin...
A new notion of stochastic ordering is introduced to compare multivariate stochastic risk models wit...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
We study the theory of stochastic order under the nonlinear expectations framework, including g- and...
In this paper, we introduce a new multivariate stochastic order that compares random vectors in a di...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
We investigate the class of stochastic orders induced by Generalized Gini Functionals (GGF) or Yaari...
This study concerns about order statistics and their applications to quantitative finance. So far, t...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
The paper proposes a multivariate comparison among different financial markets, using risk/variabili...
This dissertation adds some new results to the theory of stochastic orders. Chapter 1 contains defin...
A new notion of stochastic ordering is introduced to compare multivariate stochastic risk models wit...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
In this paper we introduce a new multivariate stochastic order that compares random vectors in a dir...
We study the theory of stochastic order under the nonlinear expectations framework, including g- and...
In this paper, we introduce a new multivariate stochastic order that compares random vectors in a di...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
We investigate the class of stochastic orders induced by Generalized Gini Functionals (GGF) or Yaari...
This study concerns about order statistics and their applications to quantitative finance. So far, t...