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Search for Minimal and Semi-Minimal Rule Sets in Incremental Learning of Context-Free and Definite Clause Grammars

机译:在无上下文和定语从句语法的增量学习中搜索最小和半最小规则集

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This paper describes recent improvements to Synapse system for incremental learning of general context-free grammars (CFGs) and definite clause grammars (DCGs) from positive and negative sample strings. An important feature of our approach is incremental learning, which is realized by a rule generation mechanism called “bridging” based on bottom-up parsing for positive samples and the search for rule sets. The sizes of rule sets and the computation time depend on the search strategies. In addition to the global search for synthesizing minimal rule sets and serial search, another method for synthesizing semi-optimum rule sets, we incorporate beam search to the system for synthesizing semi-minimal rule sets. The paper shows several experimental results on learning CFGs and DCGs, and we analyze the sizes of rule sets and the computation time.
机译:本文介绍了对Synapse系统的最新改进,用于从正负样本字符串增量学习通用上下文无关文法(CFG)和定语从句文法(DCG)。我们的方法的一个重要特征是增量学习,它是通过称为“桥接”的规则生成机制实现的,该机制基于自下而上的正样本解析和规则集搜索。规则集的大小和计算时间取决于搜索策略。除了用于合成最小规则集的全局搜索和用于合成半最优规则集的另一种方法串行搜索之外,我们还将波束搜索合并到用于合成半最小规则集的系统中。本文展示了几种学习CFG和DCG的实验结果,并分析了规则集的大小和计算时间。

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