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Learning Syntactic Dense Embedding with Correlation Graph for Automatic Readability Assessment

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Deep learning models for automatic readability assessment generally discard linguistic features traditionally used in machine learning models for the task. We propose to incorporate linguistic features into neural network models by learning syntactic dense embeddings based on linguistic features. To cope with the relationships between the features, we form a correlation graph among features and use it to learn their embeddings so that similar features will be represented by similar embeddings. Experiments with six data sets of two proficiency levels demonstrate that our proposed methodology can complement BERT-only model to achieve significantly better performances for automatic readability assessment.

Xinying Qiu, Yuan Chen, Hanwu Chen, Jian-Yun Nie, Yuming Shen, Dawei Lu• 2021

Related benchmarks

TaskDatasetResultRank
Readability AssessmentWeeBit
Accuracy87.32
6
Readability AssessmentOneStopE
Accuracy86.61
6
Readability AssessmentCambridge
Accuracy78.52
5
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