HIIG at GermEval 2022: Best of Both Worlds Ensemble for Automatic Text Complexity Assessment

GermEval 2022  ·  Hadi Asghari, Freya Hewett ·

In this paper we explain HIIG’s contribution to the shared task Text Complexity DE Challenge 2022. Our best-performing model for the task of automatically determining the complexity level of a German-language sentence is a combination of a transformer model and a classic feature-based model, which achieves a mapped root square mean error of 0.446 on the test data.

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