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Optimizing Typed Feature Structure Grammar Parsing through Non-Statistical Indexing

机译:通过非统计索引优化键入的特征结构语法解析

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This paper introduces an indexing method based on static analysis of grammar rules and type signatures for typed feature structure grammars (TFSGs). The static analysis tries to predict at compile-time which feature paths will cause unification failure during parsing at run-time. To support the static analysis, we introduce a new classification of the instances of variables used in TFSGs, based on what type of structure sharing they create. The indexing actions that can be performed during parsing are also enumerated. Non-statistical indexing has the advantage of not requiring training, and, as the evaluation using large-scale HPSGs demonstrates, the improvements are comparable with those of statistical optimizations. Such statistical optimizations rely on data collected during training, and their performance does not always compensate for the training costs.
机译:本文介绍了一种基于语法规则静态分析的索引方法,以及键入特征结构语法(TFSG)的型签名。静态分析试图在编译时预测,在运行时在解析时将导致统一故障导致统一失败。为了支持静态分析,我们基于它们创建的结构共享类型的结构分享,介绍了TFSGS中使用的变量实例的新分类。也会列举可以在解析期间执行的索引操作。非统计索引具有不需要培训的优势,并且随着使用大规模HPSGS的评估表明,随着统计优化的评估与统计优化的评估相当。此类统计优化依赖于在培训期间收集的数据,其性能并不总是弥补培训成本。

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