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Learning to Predict Readability using Diverse Linguistic Features

机译:学习使用多种语言功能预测可读性

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In this paper we consider the problem of building a system to predict readability of natural-language documents. Our system is trained using diverse features based on syntax and language models which are generally indicative of readability. The experimental results on a dataset of documents from a mix of genres show that the predictions of the learned system are more accurate than the predictions of naive human judges when compared against the predictions of linguistically-trained expert human judges. The experiments also compare the performances of different learning algorithms and different types of feature sets when used for predicting readability.
机译:在本文中,我们考虑建立一个系统来预测自然语言文档的可读性的问题。我们使用基于语法和语言模型的各种功能来训练我们的系统,这些功能通常指示可读性。来自多种流派的文档数据集上的实验结果表明,与经过语言训练的专业人类法官的预测相比,学习系统的预测比天真的人类法官的预测更为准确。实验还比较了用于预测可读性时不同学习算法和不同类型特征集的性能。

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