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Learning of finite unions of tree patterns with internal structured variables from queries

机译:从查询中学习具有内部结构变量的树模式的有限联合

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We consider the polynomial time learnability of finite unions of ordered tree patterns with internal structured variables in the query learning model proposed by Angluin (1988). An ordered tree pattern with internal structured variables, called a term tree, is a rooted tree pattern which consists of tree structures with ordered children and internal structured variables. A term tree is suited for representing structural features in semistructured or tree structured data such as HTML/XML files. The language L(t) of a term tree t is the set of all trees which are obtained from t by substituting arbitrary trees for all variables in t. Moreover, for a finite set H of term trees, L(H) = ∪{sub}(t∈H)L(t). Our target of learning is a finite set H of term trees. We show that any finite union of languages defined by m term trees is exactly identifiable in polynomial time using at most 2mn{sup}2 restricted subset queries and at most m = 1 equivalence queries, where n is the maximum size of counterexamples.
机译:我们在Angluin(1988)提出的查询学习模型中考虑了具有内部结构变量的有序树模式有限联合的多项式时间可学习性。具有内部结构变量的有序树模式(称为术语树)是一种有根树模式,它由具有有序子级和内部结构变量的树结构组成。术语树适用于表示半结构或树结构数据(例如HTML / XML文件)中的结构特征。术语树t的语言L(t)是所有树的集合,这些树是通过将任意树替换为t中的所有变量而从t获得的。此外,对于项树的有限集H,L(H)=∪{sub}(t∈H)L(t)。我们的学习目标是术语树的有限集H。我们显示,由m个术语树定义的语言的任何有限联合在多项式时间内都可以使用最多2mn {sup} 2个受限子集查询和最多m = 1个等价查询来精确识别,其中n是反例的最大大小。

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