We introduce a new modelling representation, the Decision Event Graph (DEG), for asymmetric multistage decision problems. The DEG explicitly encodes conditional independences and has additional significant advantages over other representations of asymmetric decision problems. The colouring of edges makes it possible to identify conditional independences on decision trees, and these coloured trees serve as a basis for the construction of the DEG. We provide an efficient backward-induction algorithm for finding optimal decision rules on DEGs, and work through an example showing the efficacy of these graphs. Simplifications of the topology of a DEG admit analogues to the sufficiency principle and barren node deletion steps used with in...
We compare four graphical techniques for representation and solution of asymmetric decision problems...
We compare four graphical techniques for representation and solution of asymmetric decision problems...
This paper is a short (14-pp) version of a longer working paper titled "Sequential Valuation Network...
Chain Event Graphs are probabilistic graphical models designed especially for the analysis of discre...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
AbstractWe describe a new graphical language for specifying asymmetric decision problems. The langua...
During the last two decades several specific decision analysis formalisms for the representation of ...
In this paper we introduce a new graph, the sequential decision diagram, to aid in modeling formulat...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
Abstract—This paper presents decision analysis networks (DANs) as a new type of probabilistic graphi...
AbstractWe describe a new graphical language for specifying asymmetric decision problems. The langua...
We compare four graphical techniques for representation and solution of asymmetric decision problems...
We compare four graphical techniques for representation and solution of asymmetric decision problems...
This paper is a short (14-pp) version of a longer working paper titled "Sequential Valuation Network...
Chain Event Graphs are probabilistic graphical models designed especially for the analysis of discre...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
AbstractWe describe a new graphical language for specifying asymmetric decision problems. The langua...
During the last two decades several specific decision analysis formalisms for the representation of ...
In this paper we introduce a new graph, the sequential decision diagram, to aid in modeling formulat...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
We describe a new graphical language for specifying asymmetric decision problems. The language is ba...
Abstract—This paper presents decision analysis networks (DANs) as a new type of probabilistic graphi...
AbstractWe describe a new graphical language for specifying asymmetric decision problems. The langua...
We compare four graphical techniques for representation and solution of asymmetric decision problems...
We compare four graphical techniques for representation and solution of asymmetric decision problems...
This paper is a short (14-pp) version of a longer working paper titled "Sequential Valuation Network...