基于假朋友检测的自适应复杂单词识别

Alessio Palmero Aprosio, S. Menini, Sara Tonelli
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引用次数: 4

摘要

自动复杂单词识别(CWI)在许多应用程序中是一项至关重要的任务,从可读性评估到词汇简化。到目前为止,有几部作品以非母语人士的需求为目标,对CWI进行了建模。然而,语言习得研究表明,不同的母语会对阅读理解产生积极或消极的干扰,有利于或阻碍对外语文本的理解。因此,我们建议修改CWI,以解决与不同母语相关的特定困难。特别地,我们提出了一个基于用户母语的管道,通过动态自动检测同源词和假友词来识别复杂术语。CWI模块提供的选择是自适应的,因为它会根据用户的母语进行更改。我们对四种不同的母语(法语、英语、德语和西班牙语)实施和评估我们的方法,在一个用意大利语写的文档的设置中,应该由语言熟练程度较低的学习者阅读。我们表明,基于虚假朋友检测的个性化策略可以识别复杂的术语,这些术语与通常使用基于词频的标准方法选择的复杂术语不同。
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Adaptive Complex Word Identification through False Friend Detection
Automated complex word identification (CWI) is a crucial task in several applications, from readability assessment to lexical simplification. So far, several works have modeled CWI with the goal of targeting the needs of non-native speakers. However, studies in language acquisition show that different native languages can create positive or negative interferences w.r.t. reading comprehension, favouring or hindering the understanding of a document in a foreign language. Therefore, we propose to modify CWI to address the specific difficulties connected to different native languages. In particular, we present a pipeline that, based on the user native language, identifies complex terms by automatically detecting cognates and false friends on the fly. The selection presented by the CWI module is adaptive in that it changes depending on the native language of the user. We implement and evaluate our approach for four different native languages (French, English, German and Spanish), in a setting where documents are written in Italian and should be read by language learners with low proficiency. We show that a personalised strategy based on false friend detection identifies complex terms that are different from those usually selected with standard approaches based on word frequency.
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