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Data Annealing for Informal Language Understanding Tasks

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arxiv 2004.13833 v1 pith:MS4TPWWN submitted 2020-04-24 cs.CL

Data Annealing for Informal Language Understanding Tasks

classification cs.CL
keywords informallanguagedatatasksannealingprocedureunderstandingformal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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There is a huge performance gap between formal and informal language understanding tasks. The recent pre-trained models that improved the performance of formal language understanding tasks did not achieve a comparable result on informal language. We pro-pose a data annealing transfer learning procedure to bridge the performance gap on informal natural language understanding tasks. It successfully utilizes a pre-trained model such as BERT in informal language. In our data annealing procedure, the training set contains mainly formal text data at first; then, the proportion of the informal text data is gradually increased during the training process. Our data annealing procedure is model-independent and can be applied to various tasks. We validate its effectiveness in exhaustive experiments. When BERT is implemented with our learning procedure, it outperforms all the state-of-the-art models on the three common informal language tasks.

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