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arxiv: 1803.02400 · v4 · pith:ECBAPK6Vnew · submitted 2018-03-02 · 💻 cs.CL · cs.LG

Natural Language to Structured Query Generation via Meta-Learning

classification 💻 cs.CL cs.LG
keywords exampleslearningmeta-learningmodeltrainingabsoluteaccuracyachieves
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In conventional supervised training, a model is trained to fit all the training examples. However, having a monolithic model may not always be the best strategy, as examples could vary widely. In this work, we explore a different learning protocol that treats each example as a unique pseudo-task, by reducing the original learning problem to a few-shot meta-learning scenario with the help of a domain-dependent relevance function. When evaluated on the WikiSQL dataset, our approach leads to faster convergence and achieves 1.1%-5.4% absolute accuracy gains over the non-meta-learning counterparts.

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