Generating High-Quality Surface Realizations Using Data Augmentation and Factored Sequence Models

WS 2018 Henry ElderChris Hokamp

This work presents a new state of the art in reconstruction of surface realizations from obfuscated text. We identify the lack of sufficient training data as the major obstacle to training high-performing models, and solve this issue by generating large amounts of synthetic training data... (read more)

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