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Information/Relevance Influence Diagrams

机译:信息/相关影响图

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In this paper we extend the influence diagram (ID) representation for decisions under uncertainty. In the standard ID, arrows into a decision node are only informational; they do not represent constraints on what the decision maker can do. We can represent such constraints only indirectly, using arrows to the children of the decision and sometimes adding more variables to the influence diagram, thus making the ID more complicated. Users of influence diagrams often want to represent constraints by arrows into decision nodes. We represent constraints on decisions by allowing relevance arrows into decisions nodes. We call the resulting representation information/relevance influence diagrams (IRIDs). Information/ relevance influence diagrams allow for direct representation and specification of constrained decisions. We use a combination of stochastic dynamic programming and Gibbs sampling to solve IRIDs. This method is especially useful when exact methods for solving IDs fail.
机译:在本文中,我们扩展了影响图(ID)表示不确定性下的决策。在标准ID中,指向决策节点的箭头只是信息性的;它们并不代表决策者可以做什么。我们只能使用箭头指向决策子级并有时向影响图添加更多变量,从而间接地表示这样的约束,从而使ID更加复杂。影响图的用户通常希望通过箭头将约束表示为决策节点。我们通过允许相关箭头进入决策节点来表示决策约束。我们称其为结果表示信息/相关性影响图(IRID)。信息/相关性影响图允许直接表示和指定受约束的决策。我们结合使用了随机动态规划和Gibbs采样来解决IRID。当解决ID的确切方法失败时,此方法特别有用。

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