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3 months ago

Pushing on Text Readability Assessment: A Transformer Meets Handcrafted Linguistic Features

Bruce W. Lee Yoo Sung Jang Jason Hyung-Jong Lee

Pushing on Text Readability Assessment: A Transformer Meets Handcrafted Linguistic Features

Abstract

We report two essential improvements in readability assessment: 1. three novel features in advanced semantics and 2. the timely evidence that traditional ML models (e.g. Random Forest, using handcrafted features) can combine with transformers (e.g. RoBERTa) to augment model performance. First, we explore suitable transformers and traditional ML models. Then, we extract 255 handcrafted linguistic features using self-developed extraction software. Finally, we assemble those to create several hybrid models, achieving state-of-the-art (SOTA) accuracy on popular datasets in readability assessment. The use of handcrafted features help model performance on smaller datasets. Notably, our RoBERTA-RF-T1 hybrid achieves the near-perfect classification accuracy of 99%, a 20.3% increase from the previous SOTA.

Code Repositories

Benchmarks

BenchmarkMethodologyMetrics
text-classification-on-onestopenglishRoBERTa-RF-T1 hybrid
Accuracy (5-fold): 0.990
text-classification-on-weebit-readabilityBART-RF-T1 hybrid
Accuracy (5-fold): 0.905

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Pushing on Text Readability Assessment: A Transformer Meets Handcrafted Linguistic Features | Papers | HyperAI