Dhruv Kumar Lili Mou Lukasz Golab Olga Vechtomova

Abstract
We present a novel iterative, edit-based approach to unsupervised sentence simplification. Our model is guided by a scoring function involving fluency, simplicity, and meaning preservation. Then, we iteratively perform word and phrase-level edits on the complex sentence. Compared with previous approaches, our model does not require a parallel training set, but is more controllable and interpretable. Experiments on Newsela and WikiLarge datasets show that our approach is nearly as effective as state-of-the-art supervised approaches.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| text-simplification-on-newsela | Edit-Unsup-TS | BLEU: 17.36 SARI: 30.44 |
| text-simplification-on-turkcorpus | Edit-Unsup-TS | BLEU: 73.62 SARI (EASSEu003e=0.2.1): 37.85 |
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