Learning To Learn Morphological Inflection For Resource-Poor Languages

national conference on artificial intelligence(2020)

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摘要
We propose to cast the task of morphological inflection-mapping a lemma to an indicated inflected form-for resource-poor languages as a meta-learning problem. Treating each language as a separate task, we use data from high-resource source languages to learn a set of model parameters that can serve as a strong initialization point for fine-tuning on a resource-poor target language. Experiments with two model architectures on 29 target languages from 3 families show that our suggested approach outperforms all baselines. In particular, it obtains a 31.7% higher absolute accuracy than a previously proposed cross-lingual transfer model and outperforms the previous state of the art by 1.7% absolute accuracy on average over languages.
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关键词
morphological inflection,languages,learning,resource-poor
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