This paper describes an improved method for investment decision making. The method, which is called the stochastic decision tree method, is particularly applicable to investments characterized by high uncertainty and requiring a sequence of related decisions to be made over a period of time. The stochastic decision tree method builds on concepts used in the risk analysis method and the decision tree method of analyzing investments. It permits the use of subjective probability estimates or empirical frequency distributions for some or all factors affecting the decision. This application makes it practicable to evaluate all or nearly all feasible combinations of decisions in the decision tree, taking account of both expected value of return a...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
This thesis deals with methods of stochastic programming and their application in financial investme...
In this paper we present a review of stochastic trees, a convenient modeling approach for medical tr...
This thesis is concerned with the evaluation of real options whose value represents a certain flexib...
This paper presents two methods for supporting investments and resource allocation in a constrained ...
This master's thesis concerns the use of the methodology of the decision tree in the investment deci...
The paper deals with the application of stochastic optimization principles for investment decision m...
Investment decision is a major issue for every individual. The spectrum of investment is extremely w...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
The authors describe methods for modeling uncertainty in the specification of decision tree probabil...
The stochastic nature of investment process implies that it should be treated not unambiguously. Ins...
This paper provides the logical basis and the algorithms of an evaluation model of investment concer...
Probabilistic sensitivity analysis has previously been described for the special case of dichotomous...
The decision can be defined as the way chosen from several possible to achieve an objective. An impo...
Two different stochastic decision models are developed for incorporating uncertainty and risk aversi...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
This thesis deals with methods of stochastic programming and their application in financial investme...
In this paper we present a review of stochastic trees, a convenient modeling approach for medical tr...
This thesis is concerned with the evaluation of real options whose value represents a certain flexib...
This paper presents two methods for supporting investments and resource allocation in a constrained ...
This master's thesis concerns the use of the methodology of the decision tree in the investment deci...
The paper deals with the application of stochastic optimization principles for investment decision m...
Investment decision is a major issue for every individual. The spectrum of investment is extremely w...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
The authors describe methods for modeling uncertainty in the specification of decision tree probabil...
The stochastic nature of investment process implies that it should be treated not unambiguously. Ins...
This paper provides the logical basis and the algorithms of an evaluation model of investment concer...
Probabilistic sensitivity analysis has previously been described for the special case of dichotomous...
The decision can be defined as the way chosen from several possible to achieve an objective. An impo...
Two different stochastic decision models are developed for incorporating uncertainty and risk aversi...
This thesis addresses the topic of decision making under uncertainty, with particular focus on finan...
This thesis deals with methods of stochastic programming and their application in financial investme...
In this paper we present a review of stochastic trees, a convenient modeling approach for medical tr...