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Approximate Solutions of Interactive Dynamic Influence Diagrams Using Model Clustering

机译:使用模型聚类的交互式动态影响图的近似解

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Interactive dynamic influence diagrams (I-DIDs) offer a transparent and semantically clear representation for the sequential decision-making problem over multiple time steps in the presence of other interacting agents. Solving I-DIDs exactly involves knowing the solutions of possible models of the other agents, which increase exponentially with the number of time steps. We present a method of solving I-DIDs approximately by limiting the number of other agents' candidate models at each time step to a constant. We do this by clustering the models and selecting a representative set from the clusters. We discuss the error bound of the approximation technique and demonstrate its empirical performance.
机译:交互式动态影响图(I-DID)在存在其他交互代理的情况下,在多个时间步骤上为顺序决策问题提供了透明且语义清晰的表示形式。准确地解决I-DID涉及了解其他代理的可能模型的解决方案,这些解决方案随着时间步长的增加呈指数增长。我们提出了一种通过将每个时间步骤中其他特工的候选模型的数量限制为一个常数来近似解决I-DID的方法。我们通过对模型进行聚类并从聚类中选择代表集来实现。我们讨论了近似技术的误差范围,并证明了其经验性能。

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