从字典中快速选择小而精确的候选集用于文本校正任务

K. Schulz, S. Mihov, Petar Mitankin
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引用次数: 15

摘要

词法文本校正依赖于一个中心步骤,其中使用字典中的近似搜索来为格式错误的输入标记选择最佳校正建议。在之前的工作中,我们介绍了通用Levenshtein自动机的概念,并展示了如何使用这些自动机有效地从字典中选择与乱码输入单词在固定Levenshtein距离内的所有条目。在本文中,我们研究了基本Levenshtein距离的改进,从而在不同的文本校正应用(例如OCR)中产生更合理的相似性概念。我们证明了通用Levenshtein自动机的概念可以适应这些改进。通过这种方法,我们获得了一种高效的选择校正候选的方法,同时选择了具有高召回率的小候选集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Selection of Small and Precise Candidate Sets from Dictionaries for Text Correction Tasks
Lexical text correction relies on a central step where approximate search in a dictionary is used to select the best correction suggestions for an ill-formed input token. In previous work we introduced the concept of a universal Levenshtein automaton and showed how to use these automata for efficiently selecting from a dictionary all entries within a fixed Levenshtein distance to the garbled input word. In this paper we look at refinements of the basic Levenshtein distance that yield more sensible notions of similarity in distinct text correction applications, e.g. OCR. We show that the concept of a universal Levenshtein automaton can be adapted to these refinements. In this way we obtain a method for selecting correction candidates which is very efficient, at the same time selecting small candidate sets with high recall.
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