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Fast Cross-domain Data Augmentation through Neural Sentence Editing

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arxiv 2003.10254 v1 pith:FCPULNRH submitted 2020-03-23 cs.CL

Fast Cross-domain Data Augmentation through Neural Sentence Editing

classification cs.CL
keywords datacross-domainaugmentationdomainedit-transformermeaningfulperformancesentence
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Data augmentation promises to alleviate data scarcity. This is most important in cases where the initial data is in short supply. This is, for existing methods, also where augmenting is the most difficult, as learning the full data distribution is impossible. For natural language, sentence editing offers a solution - relying on small but meaningful changes to the original ones. Learning which changes are meaningful also requires large amounts of training data. We thus aim to learn this in a source domain where data is abundant and apply it in a different, target domain, where data is scarce - cross-domain augmentation. We create the Edit-transformer, a Transformer-based sentence editor that is significantly faster than the state of the art and also works cross-domain. We argue that, due to its structure, the Edit-transformer is better suited for cross-domain environments than its edit-based predecessors. We show this performance gap on the Yelp-Wikipedia domain pairs. Finally, we show that due to this cross-domain performance advantage, the Edit-transformer leads to meaningful performance gains in several downstream tasks.

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