印尼语拼写纠错算法的比较

Yanfi Yanfi, Reina Setiawan, Haryono Soeparno, W. Budiharto
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摘要

编辑距离作为一种字符串度量度量,经常用于帮助检测语言中的拼写错误。本文旨在比较印尼语的两种字符串拼写纠错算法。使用N-gram、Jaro-Winkler距离和Levenshtein距离算法来确定它们是否能准确地纠正印尼语中的类型学错误。此外,本研究使用KNIME工具对数据进行从头到尾的处理。数据来源于印度尼西亚的新闻。在N为1 ~ 12的条件下进行实验,对比分析得到的结果证明,在比较单词、名称等较小的字符串时,Jaro-Winkler距离优于Levenshtein距离。然而,Levenshtein距离的表现与Jaro-Winkler距离一样好。最后,Jaro-Winkler距离算法和Levenshtein距离算法在8个字符串上都获得了最好的性能精度,准确率为99.52%。研究结果还显示,这两种算法都能支持印尼语的单词纠错。
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Comparison of Spelling Error Correction Algorithms for the Indonesian Language
Edit distance as a string measurement metric is often used to help detect misspellings in languages. This paper aims to compare two string spelling error correction algorithms for the Indonesian language. The N-gram, Jaro-Winkler distance, and Levenshtein distance algorithms are used to determine whether they can accurately correct typological errors in the Indonesian language. Moreover, this study utilized KNIME tools to process the data from beginning to end. The data was retrieved from news in Indonesia. After the experiment on N from 1 to 12, the results obtained for the comparative analysis proved that Jaro-Winkler distance performed better than Levenshtein distance for comparing smaller strings like words and names. However, Levenshtein distance performs as well as Jaro-Winkler distance started from four strings. Finally, both Jaro-Winkler distance and Levenshtein distance algorithm got the best performance accuracy for eight strings with an accuracy of 99.52 percent. The result of this study is also presented that both algorithms can support word error correction for the Indonesian language.
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