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A Decision-Theoretic Approach to Evaluating Posterior Probabilities of Mental Models

机译:评估心理模型后概率的决策理论方法

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Agents face the problem of maintaining and updating their beliefs over the possible mental models (whether goals, plans, activities, intentions, etc.) of other agents in many multiagent domains. Decision-theoretic agents typically model their uncertainty in these beliefs as a probability distribution over their possible mental models of others. They then update their beliefs by computing a posterior probability over mental models conditioned on their observations. We present a novel algorithm for performing this belief update over mental models that are in the form of Partially Observable Markov Decision Problems (POMDPs). POMDPs form a common model for decision-theoretic agents, but there is no existing method for translating a POMDP, which generates deterministic behavior, into a probability distribution over actions that is appropriate for abductive reasoning. In this work, we explore alternate methods to generate a more suitable probability distribution. We use a sample multiagent scenario to demonstrate the different behaviors of the approaches and to draw some conclusions about the conditions under which each is successful.
机译:代理人面临着在许多多层域中的其他代理商的可能的心理模型保持和更新他们对可能的心理模型(无论是目标,计划,活动,意图等)的问题。决策理论代理通常在这些信仰中模拟它们的不确定性,作为其他他人可能的心理模型的概率分布。然后,他们通过计算在其观察结果上的精神模型上的后验概率来更新他们的信仰。我们提出了一种新颖的算法,用于执行这种信仰更新的智能更新,这些信念更新是部分可观察到的马尔可夫决策问题(POMDPS)的形式。 POMDPS形成决策理论代理的常见模型,但是没有现有的方法来平衡普遍的POMDP,该方法产生确定性行为的概率分布,这是适合绑架推理的概率分布。在这项工作中,我们探索替代方法来生成更合适的概率分布。我们使用样本的多层场景来展示方法的不同行为,并在其成功的情况下得出一些结论。

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