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EM-Training for Weighted Aligned Hypergraph Bimorphisms

机译:加权对齐超图双态性的EM训练

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摘要

We develop the concept of weighted aligned hypergraph bimorphism where the weights may, in particular, represent probabilities. Such a bimorphism consists of an R_(≥0)-weighted regular tree grammar, two hypergraph algebras that interpret the generated trees, and a family of alignments between the two interpretations. Seman-tically, this yields a set of bihypergraphs each consisting of two hypergraphs and an explicit alignment between them; e.g., discontinuous phrase structures and non-projective dependency structures are bihypergraphs. We present an EM-training algorithm which takes a corpus of bihypergraphs and an aligned hypergraph bimorphism as input and generates a sequence of weight assignments which converges to a local maximum or saddle point of the likelihood function of the corpus.
机译:我们开发了加权对齐超图双态性的概念,其中权重可能特别表示概率。这种双态性由R_(≥0)加权的规则树语法,解释所生成树的两个超图代数以及这两种解释之间的对齐方式组成。从语义上讲,这产生了一组双图,每个双图由两个超图和它们之间的明确对齐组成。例如,不连续的短语结构和非投影的依存结构是双图。我们提出了一种EM训练算法,该算法将一个双超图语料库和一个对齐的超图双态图作为输入,并生成一系列权重分配,这些权重分配收敛到该语料库的似然函数的局部最大值或鞍点。

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  • 来源
  • 会议地点 Berlin(DE)
  • 作者单位

    Department of Computing Science Umea University S-901 87 Umea, Sweden;

    Department of Computer Science Technische Universitaet Dresden D-01062 Dresden, Germany;

    Department of Computer Science Technische Universitaet Dresden D-01062 Dresden, Germany;

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  • 正文语种 eng
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