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Ensembles of Neural Morphological Inflection Models

机译:神经形态学变形模型的集合

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We investigate different ensemble learning techniques for neural morphological inflection using bidirectional LSTM encoder-decoder models with attention. We experiment with weighted and unweighted majority voting and bagging. We find that all investigated ensemble methods lead to improved accuracy over a baseline of a single model. However, contrary to expectation based on earlier work by Najafi et al. (2018) and Silfverberg et al. (2017), weighting docs not deliver clear benefits. Bagging was found to underper-form plain voting ensembles in general.
机译:我们研究双向LSTM编码器-解码器模型对神经形态学变化的不同集成学习技术。我们尝试使用加权和不加权多数投票和套票。我们发现,所有研究的集成方法都可以提高单个模型基线的准确性。但是,与Najafi等人早期工作的预期相反。 (2018)和Silfverberg等。 (2017),加权文档并没有带来明显的好处。人们发现套袋通常表现不佳。

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