复杂修辞学的简单信号:基于多特征支持向量模型的修辞学分析

LDV Forum Pub Date : 2003-07-01 DOI:10.21248/jlcl.18.2003.26
D. Reitter
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引用次数: 53

摘要

大多数文本都具有内部连贯结构,可以将其分析为文本短段之间的关系树状结构。我们在修辞结构理论的框架内提出了一种机器学习控制的方法来进行这种分析。我们的修辞分析器观察各种文本属性,如提示短语、词性信息、修辞语境和词汇链。两阶段解析算法使用局部和全局优化来查找分析。解析过程中的决策由支持向量分类器的集合驱动。这种训练方法允许对具有许多相关特征的样本进行非线性分离。我们定义了一系列注释工具,这些工具受益于修辞结构的新的未指定表示。分类器在新引入的德语语料库以及大型英语语料库上进行训练。我们提供了修辞关系识别的评价数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simple Signals for Complex Rhetorics: On Rhetorical Analysis with Rich-Feature Support Vector Models
Most text displays an internal coherence structure, which can be analyzed as a tree structure of relations that hold between short segments of text. We present a machinelearning governed approach to such an analysis in the framework of Rhetorical Structure Theory. Our rhetorical analyzer observes a variety of textual properties, such as cue phrases, part-of-speech information, rhetorical context and lexical chaining. A two-stage parsing algorithm uses local and global optimization to find an analysis. Decisions during parsing are driven by an ensemble of support vector classifiers. This training method allows for a non-linear separation of samples with many relevant features. We define a chain of annotation tools that profits from a new underspecified representation of rhetorical structure. Classifiers are trained on a newly introduced German language corpus, as well as on a large English one. We present evaluation data for the recognition of rhetorical relations.
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