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Diversity in Spectral Learning for Natural Language Parsing

机译:频谱学习中自然语言解析的多样性

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We describe an approach to create a diverse set of predictions with spectral learning of latent-variable PCFGs (L-PCFGs). Our approach works by creating multiple spectral models where noise is added to the underlying features in the training set before the estimation of each model. We describe three ways to decode with multiple models. In addition, we describe a simple variant of the spectral algorithm for L-PCFGs that is fast and leads to compact models. Our experiments for natural language parsing, for English and German, show that we get a significant improvement over baselines comparable to state of the art. For English, we achieve the F_1 score of 90.18, and for German we achieve the F_1 score of 83.38.
机译:我们描述了一种通过潜变量PCFG(L-PCFG)的频谱学习来创建一组多样的预测的方法。我们的方法通过创建多个频谱模型来工作,其中在对每个模型进行估计之前,将噪声添加到训练集中的基础特征中。我们描述了使用多种模型进行解码的三种方式。此外,我们描述了L-PCFGs频谱算法的一个简单变体,该变体快速且可生成紧凑模型。我们针对英语和德语进行的自然语言解析实验表明,与基准水平相比,我们获得了显着改善。对于英语,我们的F_1得分为90.18,对于德语,我们的F_1得分为83.38。

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