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Candidate Evaluation Strategies for Improved Difficulty Prediction of Language Tests

机译:改进语言测试难度预测的候选评估策略

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摘要

Language proficiency tests are a useful tool for evaluating learner progress, if the test difficulty fits the level of the learner. In this work, we describe a generalized framework for test difficulty prediction that is applicable to several languages and test types. In addition, we develop two ranking strategies for candidate evaluation inspired by automatic solving methods based on language model probability and semantic relatedness. These ranking strategies lead to significant improvements for the difficulty prediction of cloze tests.
机译:如果语言能力测试符合学习者的水平,则它是评估学习者进步的有用工具。在这项工作中,我们描述了适用于几种语言和测试类型的通用的测试难度预测框架。此外,我们开发了两种基于语言模型概率和语义相关性的自动求解方法,启发了候选人评估的排名策略。这些排名策略导致了对完形填空测试的难度预测的重大改进。

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