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Feature Optimization for Predicting Readability of Arabic L1 and L2

机译:预测阿拉伯语L1和L2可读性的功能优化

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Advances in automatic readability assessment can impact the way people consume information in a number of domains. Arabic, being a low-resource and morphologically complex language, presents numerous challenges to the task of automatic readability assessment. In this paper, we present the largest and most in-depth computational readability study for Arabic to date. We study a large set of features with varying depths, from shallow words to syntactic trees, for both L1 and L2 readability tasks. Our best L1 readability accuracy result is 94.8% (75% error reduction from a commonly used baseline). The comparable results for L2 are 72.4% (45% error reduction). We also demonstrate the added value of leveraging L1 features for L2 readability prediction.
机译:自动可读性评估的进步会影响人们在许多领域中消费信息的方式。阿拉伯语是一种资源少且形态复杂的语言,它对自动可读性评估的任务提出了许多挑战。在本文中,我们提出了迄今为止最大和最深入的阿拉伯语计算可读性研究。对于L1和L2的可读性任务,我们研究了各种深度不同的功能,从浅浅的单词到句法树。我们最好的L1可读性准确性结果是94.8%(与常用基准相比减少了75%的错误)。 L2的可比结果为72.4%(错误减少45%)。我们还演示了利用L1功能进行L2可读性预测的附加价值。

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