A Classification Schema for Fast Disambiguation of Spatial Prepositions

André Dittrich, M. Vasardani, S. Winter, Timothy Baldwin, Fei Liu
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引用次数: 10

Abstract

In the field of Artificial Intelligence the task of spatial language understanding is a particularly complex one. Textual spatial information is frequently represented by so-called locative expressions, incorporating spatial prepositions. However, apart from the spatial domain, these prepositions can occur in a wide range of senses (e.g., temporal, manner, cause, instrument) as well as in semantically transformed senses (e.g., metaphors and metonymies). Existing practical approaches usually disregard semantic transformations or falsely classify them as spatial, although they represent the majority of cases. For the efficient extraction of locative expressions from data streams (e.g. from social media sources), a fast filter mechanism for this non-spatial information is needed. Hence, we present a classification schema to quickly and robustly disambiguate spatial from non-spatial uses of prepositions. We conduct an inter-annotator agreement test to highlight the feasibility and comprehensibility of our schema based on examples sourced from a large social media corpus. We further identify the most promising existing natural language processing tools in order to combine machine learning features with fixed rules.
空间介词快速消歧的分类模式
在人工智能领域中,空间语言理解是一项特别复杂的任务。文本空间信息通常由包含空间介词的所谓位置表达式来表示。然而,除了空间领域之外,这些介词可以出现在广泛的意义上(例如,时间,方式,原因,工具)以及语义转换的意义上(例如,隐喻和转喻)。现有的实际方法通常忽略语义转换或错误地将其归类为空间转换,尽管它们代表了大多数情况。为了从数据流(例如从社交媒体源)中有效地提取位置表达式,需要一种快速的非空间信息过滤机制。因此,我们提出了一种快速、稳健地消除介词空间和非空间用法歧义的分类模式。我们基于来自大型社交媒体语料库的示例,进行了一个注释者间协议测试,以突出我们模式的可行性和可理解性。我们进一步确定最有前途的现有自然语言处理工具,以便将机器学习特征与固定规则相结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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