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3 months ago

Exploring Neural Text Simplification Models

{Sanja {\v{S}}tajner Sergiu Nisioi Simone Paolo Ponzetto Liviu P. Dinu}

Exploring Neural Text Simplification Models

Abstract

We present the first attempt at using sequence to sequence neural networks to model text simplification (TS). Unlike the previously proposed automated TS systems, our neural text simplification (NTS) systems are able to simultaneously perform lexical simplification and content reduction. An extensive human evaluation of the output has shown that NTS systems achieve almost perfect grammaticality and meaning preservation of output sentences and higher level of simplification than the state-of-the-art automated TS systems

Benchmarks

BenchmarkMethodologyMetrics
text-simplification-on-turkcorpusNTS-SARI
BLEU: 80.69
SARI (EASSEu003e=0.2.1): 37.25

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Exploring Neural Text Simplification Models | Papers | HyperAI