TR
Text Readability and Simplification
This cluster of papers focuses on automatic text simplification and readability assessment using machine learning, statistical language models, neural networks, and natural language processing techniques. The research covers areas such as sentence simplification, lexical simplification, complex word identification, and semantic simplification to improve the accessibility and comprehension of written text.
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- Juan Moisés de la Serna (456)
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- Text Readability and Simplification (64,486)
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