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Warning and Suggestion System on Syntax Tree Maker Application

机译:语法树生成器应用程序的警告和建议系统

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TIKSentence TreeMaker is an application built by the Indonesian Association of Computational Linguistics (INACL) which has useful to give phrase labels in sentences. This Application has advantage in User Interface (UI) system, where word's structure in a sentence can be built into tree structure in real time, so users see and do sentence's structure easily. Since every application has advantages and disadvantages, TIKSentence TreeMaker has a disadvantage where this application cannot assist users in giving phrase labels and users can give any labels freely whether it is fit or not to the word's structure. Author try to correct this disadvantage by creating a system that can detect phrase labels and give a recommended phrase label that fir for the word's structure. This system is built to detect phrase labels in syntactic manner with Context Free Grammar (CFG) where it is useful to change application's tree structure phrase into another form that can be readed by computer easily. System check every structure phrase that tested and change its phrase labels if the phrase labels are detected to be incorrect into a phrase label recommended by the system without change its phrase structure. The accuracy result of the built system is around 95% while the initial data test is around 87% which means our system succeds changing some incorrect phrase labels into correct phrase labels.
机译:TIKSentence TreeMaker是由印度尼西亚计算语言协会(INACL)构建的应用程序,可为句子中的短语标签提供帮助。此应用程序在用户界面(UI)系统中具有优势,该系统可以将句子中单词的结构实时构建为树形结构,因此用户可以轻松查看和执行句子的结构。由于每个应用程序都有其优点和缺点,因此TIKSentence TreeMaker具有一个缺点,即该应用程序无法帮助用户提供短语标签,并且用户可以随意给出任何标签,无论其是否适合单词的结构。作者试图通过创建一个可以检测词组标签并给出推荐的词组标签的系统来纠正此缺点,该词组可以根据单词的结构进行编码。该系统旨在通过上下文无关语法(CFG)以句法方式检测短语标签,在该系统中,将应用程序的树形结构短语更改为易于计算机读取的另一种形式非常有用。系统检查每个测试过的结构短语,如果检测到短语标签不正确,则更改其短语标签,将其更改为系统建议的短语标签,而无需更改其短语结构。所构建系统的准确性结果约为95%,而初始数据测试约为87%,这意味着我们的系统成功地将一些不正确的词组标签更改为正确的词组标签。

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