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Grammar Induction by Unification of Type-logical Lexicons

机译:类型逻辑词表统一的语法归纳

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A method is described for inducing a type-logical grammar from a sample of bare sentence trees which are annotated by lambda terms, called term-labelled trees. Any type logic from a permitted class of multimodal logics may be specified for use with the procedure, which induces the lexicon of the grammar including the grammatical categories. A first stage of semantic bootstrapping is performed, which induces a general form lexicon from the sample of term-labelled trees using Fulop's (J Log Lang Inf 14(1):49-86, 2005) procedure. Next we present a two-stage procedure for performing distributional learning by unifying the lexical types that are initially discovered. The first structural unification algorithm in essence unifies the initial family of sets of types so that the resulting grammar will generate all term-labelled trees that follow the usage patterns evident from the learning sample. Further altering the lexical categories to generate a recursively extended language can be accomplished by a second unification. The combined unification algorithm is shown to yield a new type-logical lexicon that extends the learning sample to a possibly infinite (and possibly context-sensitive) language in a principled fashion. Finally, the complete learning strategy is analyzed from the perspective of algorithmic learning theory; the range of the procedure is shown to be a class of term-labelled tree languages which is finitely learnable from good examples, (Lange et al in Algorithmic learning theory, Vol 872 of lecture notes in artificial intelligence, Springer, Berlin, pp 423-437), and so is identifiable in the limit as a corollary.
机译:描述了一种用于从裸句子树的样本中推导类型逻辑语法的方法,该裸句子树由lambda术语(称为术语标记树)注释。可以指定多模式逻辑的允许类别中的任何类型逻辑,以用于该过程,从而得出包括语法类别在内的语法词典。执行语义引导的第一阶段,该阶段使用Fulop(J Log Lang Inf 14(1):49-86,2005)过程从术语标签树的样本中诱导出一般形式的词典。接下来,我们介绍一个通过统一最初发现的词汇类型来执行分布式学习的两步过程。第一个结构化统一算法本质上是统一类型的初始族,以便生成的语法将生成所有词项标记的树,这些树遵循从学习样本中显而易见的用法模式。进一步改变词汇类别以生成递归扩展的语言可以通过第二种统一来实现。组合的统一算法显示出可产生一种新的类型逻辑词典,该词典以有原则的方式将学习样本扩展为可能的无限(并且可能是上下文相关)语言。最后,从算法学习理论的角度分析了完整的学习策略。该过程的范围显示为一类术语标签的树语言,可从良好的示例中有限地学习(Lange等人(算法学习理论),人工智能讲义第872卷,施普林格,柏林,第423- 437),因此可以确定为必然结果。

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