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LexMeter: Validation of an Automated System for the Assessment of Lexical Competence of Medical Students as a Prerequisite for the Development of an Adaptive e-learning System

机译:LexMeter:验证用于评估医学生词汇能力的自动化系统是开发自适应电子学习系统的先决条件

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Distance learning is used in medical education, even if some recent meta-analyses indicated that it is no more effective than traditional methods. To exploit the technological capabilities, adaptive distance learning systems aim to bridge the gap between the educational offer and the learnera??s need. A decrease of lexical competence has been noted in many western countries, so lexical competence could be a possible target for adaptation. The a??Adaptive message learninga?? project (Am-learning) is aimed at designing and implementing an adaptive e-learning system, driven by lexical competence. The goal of the project is to modulate texts according to the estimated skill of learners, to allow a better comprehension. Lexmeter is the first of the four modules of the Am-learning system. It outlines an initial profile of the learnera??s lexical competence and can also produce cloze tests, a test based on a completion task. A validation test of Lexmeter was run on 443 medical students of the 1st, 3rd and 6th year at the University a??Sapienzaa?? of Rome. Six cloze tests were automatically produced, with ten gaps each. The tests were different for each year and with varying levels of difficulty. A last cloze test was manually created as a control. The difference of the mean score between the easy tests and the tests with a medium level of difficulty was statistically significant for the 3rd year students but not for 1st and 6th year. The score of the automatically generated tests showed a slight but significant correlation with the control test. The reliability (Cronbach alpha) of the different tests fluctuated under and above .60, as an acceptable level. In fact, classical item analysis revealed that the tests were on the average too simple. Lexical competence is a relevant outcome and its assessment allows an early detection of students at risk. Cloze tests can also be used to assess specific knowledge of technical jargon and to train reasoning skill.
机译:远程学习被用于医学教育,即使最近的一些荟萃分析表明远程学习并不比传统方法有效。为了开发技术能力,自适应远程学习系统旨在弥合教育提供与学习者需求之间的鸿沟。在许多西方国家已经注意到词汇能力的下降,因此词汇能力可能成为适应的目标。自适应消息学习项目(Am-learning)旨在设计和实施由词汇能力驱动的自适应电子学习系统。该项目的目标是根据学习者的估计技能来调整课文,以更好地理解。 Lexmeter是Am-learning系统的四个模块中的第一个。它概述了学习者的词汇能力的初步概况,还可以进行完形填空测试,这是一项基于完成任务的测验。 Lexmeter的验证测试是在sapienzaa大学对443名1年级,3年级和6年级医学生进行的。罗马。自动进行六次完形填塞测试,每个填空有十个间隙。每年的测试都不同,难度也有所不同。手动创建了最后一个完形填空测试作为对照。在三年级的学生中,简单测试和中等难度水平的测试之间的平均得分差异在统计学上是显着的,而第一年和第六年则没有统计学意义。自动生成的测试的分数与对照测试显示出轻微但显着的相关性。不同测试的可靠性(Cronbach alpha)在0.60或更高的范围内波动,可以接受。实际上,经典项目分析表明测试平均而言太简单了。词汇能力是一个相关的结果,其评估可以及早发现有风险的学生。完形填空测试也可以用于评估技术术语的特定知识并训练推理能力。

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