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Learning Cover Context-Free Grammars from Structural Data

机译:学习从结构数据中覆盖无背景语法

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We consider the problem of learning an unknown context-free grammar when the only knowledge available and of interest to the learner is about its structural descriptions with depth at most l. The goal is to learn a cover context-free grammar (CCFG) with respect to l, that is, a CFG whose structural descriptions with depth at most l agree with those of the unknown CFG. We propose an algorithm, called LA~l, that efficiently learns a CCFG using two types of queries: structural equivalence and structural membership. We show that LA~l runs in time polynomial in the number of states of a minimal deterministic finite cover tree automaton (DCTA) with respect to l. This number is often much smaller than the number of states of a minimum deterministic finite tree automaton for the structural descriptions of the unknown grammar.
机译:我们考虑当学习者唯一可用的知识和学习者感兴趣的知识是关于其最多堤坝的结构描述时,我们考虑了学习未知的无内容语法的问题。目标是学习覆盖无背景语法(CCFG)的L,即,一个CFG,其结构描述最多L的深度L同意那些未知的CFG。我们提出了一种称为LA〜L的算法,可使用两种类型的查询有效地学习CCFG:结构等价和结构成员资格。我们表明La〜L在最小确定性有限覆盖树自动件(DCTA)的状态下的时间多项式在LA次数相对于L.该号码通常远小于最小确定性有限树自动件的状态的态数,用于未知语法的结构描述。

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