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Lifted Probabilistic Inference

机译:提升概率推断

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摘要

Many AI problems arising in a wide variety of fields such as machine learning, semantic web, network communication, computer vision, and robotics can elegantly be encoded and solved using probabilistic graphical models. Often, however, we are facing inference problems with symmetries and redundancies only implicitly captured in the graph structure and, hence, not exploitable by efficient inference approaches. A prominent example are probabilistic logical models that tackle a long standing goal of AI, namely unifying first-order logic - capturing regularities and symmetries -and probability - capturing uncertainty. Although they often encode large, complex models using few rules only and, hence, symmetries and redundancies abound, inference in them was originally still at the propositional representation level and did not exploit symmetries. This paper is intended to give a (not necessarily complete) overview and invitation to the emerging field of lifted probabilistic inference, inference techniques that exploit these symmetries in graphical models in order to speed up inference, ultimately orders of magnitude.
机译:机器学习,语义网,网络通信,计算机视觉和机器人技术等广泛领域中出现的许多AI问题都可以使用概率图形模型很好地编码和解决。但是,通常,我们面临着对称性和冗余性的推理问题,这些对称性和冗余性仅隐式地捕获在图结构中,因此无法被有效的推理方法利用。一个突出的例子是概率逻辑模型,该模型解决了AI的长期目标,即统一一阶逻辑-捕获规律性和对称性-概率-捕获不确定性。尽管它们通常仅使用很少的规则对大型,复杂的模型进行编码,因此对称性和冗余性比比皆是,但对它们的推断最初仍处于命题表示法级别,并且没有利用对称性。本文旨在对提升概率推理的新兴领域(不一定是完整的)进行概述和邀请,这种推理技术利用图形模型中的这些对称性来加快推理速度,最终达到数量级。

著录项

  • 来源
  • 会议地点 Montpellier(FR)
  • 作者

    Kristian Kersting;

  • 作者单位

    Institute of Geodesy and Geoinformation, University of Bonn, Germany, Knowledge Discovery Department, Fraunhofer IAIS, Sankt Augustin, Germany;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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