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Privacy Sensitive Construction of Junction Tree Agent Organization for Multiagent Graphical Models

机译:多代理图形模型的连接树代理组织的隐私敏感构造

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Junction trees (JTs) are not only effective structures for single-agent probabilistic graphical models (PGMs), but also effective agent organizations in multiagent graphical models, such as multiply sectioned Bayesian networks. A natural decomposition of agent environment may not allow construction of a JT organization. Hence, re-decomposition of the environment is necessary. However, re-decomposition incurs loss of agent privacy that ultimately translates to loss of intellectual property of agent suppliers. We propose a novel algorithm DAER (Distributed Agent Environment Re-decomposition) that re-decomposes the environment to enable a JT organization and incurs significantly less privacy loss than existing JT organization construction methods.
机译:连接树(JT)不仅是单主体概率图形模型(PGM)的有效结构,还是多主体图形模型(例如多节贝叶斯网络)中的有效主体组织。 Agent环境的自然分解可能不允许构建JT组织。因此,有必要对环境进行重新分解。但是,重新分解会导致代理人隐私的丧失,最终导致代理人供应商知识产权的损失。我们提出了一种新颖的算法DAER(分布式代理环境重新分解),该算法可以重新分解环境以启用JT组织,并且比现有的JT组织构建方法所产生的隐私损失要少得多。

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