动词选择建议的学术句依赖本体

Sarunya Kanjanawattana, M. Kimura
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引用次数: 0

摘要

非母语研究者遇到了学术写作技巧不足的问题。在写作过程中,我们可能会因为熟悉而不小心重复使用一个词,从而降低写作质量。为了解决这个问题,转述是一个不错的选择。它通过减少重复的单词和精炼句子排列来帮助手稿读得更华丽。在这项研究中,我们提出了一种新颖的想法,即使用句子依赖本体来建议在不影响原意的情况下,可以在现有语境中替换的动词。我们创建了一个基于本体的系统,并设计了一个新的本体。为了发现动词选择列表,我们的想法是基于句子的依赖关系,特别是主语和动词之间的依赖关系(nsubj)以及动词和宾语之间的关系(dobj)。我们选择它们是因为这两个依存关系与句子的动词有很强的关系。为了评估系统,我们比较了两个不同系统的效率,即使用同义词作为单词选择的传统系统和基于本体论的系统。结果表明,我们的系统提供了比传统系统更好的性能。这说明我们的系统应该是一个合适的解决方案,以研究释义。
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Ontology of Academic Sentence Dependencies for a Verb Choice Suggestion
Non-native researchers encountered a problem of lacking academic writing skill. During the writing, we may accidentally use a word repeatedly due to our familiarity that reduces a quality of writing. To solve the problem, a paraphrase is a good option. It helps the manuscript read more flowery by reducing duplicate words and refining sentence alignments. In this study, we propose a novel idea to use a sentence dependency ontology to suggest possible verbs replaceable on existing context without influence to the original intention. We created an ontology-based system and designed a new ontology. To discover a list of verb choices, our idea is based on sentence dependency, especially a dependency between subject and verb (nsubj) as well as a relationship between verb and object (dobj). We chose them because these two dependencies had a strong relationship to the verb of the sentence. To evaluate the system, we compared the efficiencies of two different systems, i.e., a tradition system utilizing synonyms as word choices and our ontology-based system. As the results, ours provided the better performance rather than the traditional system. This clarifies that our system should be a proper solution for studies on paraphrasing.
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