Accidents occur frequently, causing huge losses to enterprises and individuals. Safety investment is an important means to prevent accidents, but how much to invest is a dilemma. Previous studies have assumed that the demand of safety investment follows some probability distribution. In practice, the distribution information of safety investment is usually limited or difficult to obtain, i.e., it is unknown. To deal with this kind of problem without a probability distribution, we construct the measures of marginal accident loss (MAL) and marginal opportunity loss (MOL) from the perspective of demand uncertainty. Robust optimization technology is utilized to establish three robust optimization models, which are the absolute robust models (AR...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
In this paper we define and compare different versions of robust, in the sense of Robust Optimizatio...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
This paper deals with a Portfolio Selection model in which the methodologies of Robust Optimization ...
The study of decision making under uncertainty is important in many areas (e.g. portfolio theory, ...
This paper deals with a portfolio selection model in which the methodologies of robust optimization ...
Many decision problems can be formulated as mathematical optimization models. While deterministic op...
In this thesis, a portfolio optimization with integer variables which influ- ence optimal assets all...
It was considered the possibility of optimization approach of the risk management problems based on ...
Based on a robustness concept adapted from mathematical statistics, we investigate robust optimal in...
Many financial optimization problems involve future values of security prices, interest rates and ex...
This paper deals with a portfolio selection model in which the methodologies of robust optimization ...
We illustrate the correspondence between uncertainty sets in robust optimization and some pop-ular r...
This paper deals with a Portfolio Selection model in which the methodologies of Robust Optimization ...
Many financial optimization problems involve future values of security prices, interest rates and ex...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
In this paper we define and compare different versions of robust, in the sense of Robust Optimizatio...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
This paper deals with a Portfolio Selection model in which the methodologies of Robust Optimization ...
The study of decision making under uncertainty is important in many areas (e.g. portfolio theory, ...
This paper deals with a portfolio selection model in which the methodologies of robust optimization ...
Many decision problems can be formulated as mathematical optimization models. While deterministic op...
In this thesis, a portfolio optimization with integer variables which influ- ence optimal assets all...
It was considered the possibility of optimization approach of the risk management problems based on ...
Based on a robustness concept adapted from mathematical statistics, we investigate robust optimal in...
Many financial optimization problems involve future values of security prices, interest rates and ex...
This paper deals with a portfolio selection model in which the methodologies of robust optimization ...
We illustrate the correspondence between uncertainty sets in robust optimization and some pop-ular r...
This paper deals with a Portfolio Selection model in which the methodologies of Robust Optimization ...
Many financial optimization problems involve future values of security prices, interest rates and ex...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
In this paper we define and compare different versions of robust, in the sense of Robust Optimizatio...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...