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Neural Data-to-Text Generation with LM-based Text Augmentation

Ernie Chang, Xiaoyu Shen, Dawei Zhu, Vera Demberg, Hui Su

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Abstract

For many new application domains for datato-text generation, the main obstacle in training neural models consists of a lack of training data. While usually large numbers of instances are available on the data side, often only very few text samples are available. To address this problem, we here propose a novel fewshot approach for this setting. Our approach automatically augments the data available for training by (i) generating new text samples based on replacing specific values by alternative ones from the same category, (ii) generating new text samples based on GPT-2, and (iii) proposing an automatic method for pairing the new text samples with data samples. As the text augmentation can introduce noise to the training data, we use cycle consistency as an objective, in order to make sure that a given data sample can be correctly reconstructed after having been formulated as text (and that text samples can be reconstructed from data).

Topics & Concepts

Computer scienceSequence (biology)Artificial intelligenceConsistency (knowledge bases)Set (abstract data type)Sample (material)Training setText generationPattern recognition (psychology)Natural language processingData miningMachine learningChemistryProgramming languageChromatographyGeneticsBiologyTopic ModelingNatural Language Processing TechniquesSpeech Recognition and Synthesis