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Inferring the semantic properties of sentences by mining syntactic parse trees

机译:通过挖掘句法分析树来推断句子的语义属性

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摘要

We extend the mechanism of logical generalization toward syntactic parse trees and attempt to detect semantic signals unobservable in the level of keywords. Generalization from a syntactic parse tree as a measure of syntactic similarity is defined by the obtained set of maximum common sub-trees and is performed at the level of paragraphs, sentences, phrases and individual words. We analyze the semantic features of this similarity measure and compare it with the semantics of traditional anti-unification of terms. Nearest-Neighbor machine learning is then applied to relate the sentence to a semantic class. By using a syntactic parse tree-based similarity measure instead of the bag-of-words and keyword frequency approaches, we expect to detect a subtle difference between semantic classes that is otherwise unobservable. The proposed approach is evaluated in three distinct domains in which a lack of semantic information makes the classification of sentences rather difficult. We conclude that implicit indications of semantic classes can be extracted from syntactic structures.
机译:我们将逻辑概括机制扩展到语法分析树,并尝试检测在关键字级别上不可观察到的语义信号。语法分析树中的语法相似性度量是通过获得的最大公共子树集定义的,并在段落,句子,短语和单个单词的级别上执行。我们分析了这种相似性度量的语义特征,并将其与传统的术语反统一的语义进行了比较。然后应用最近邻机器学习将句子与语义类相关联。通过使用基于句法分析树的相似性度量(而不是词袋和关键字频率方法),我们期望检测到语义类之间的细微差别,否则这是无法观察到的。所提出的方法在三个不同的领域中进行了评估,在这些领域中缺乏语义信息使得句子的分类变得相当困难。我们得出结论,可以从句法结构中提取语义类的隐含指示。

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