Semi-Supervised Induction of POS-Tag Lexicons with Tree Models

Maciej Janicki
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Abstract

We approach the problem of POS tagging of morphologically rich languages in a setting where only a small amount of labeled training data is available. We show that a bigram HMM tagger benefits from re-training on a larger untagged text using Baum-Welch estimation. Most importantly, this estimation can be significantly improved by pre-guessing tags for OOV words based on morphological criteria. We consider two models for this task: a character-based recurrent neural network, which guesses the tag from the string form of the word, and a recently proposed graph-based model of morphological transformations. In the latter, the unknown POS tags can be modeled as latent variables in a way very similar to Hidden Markov Tree models and an analogue of the Forward-Backward algorithm can be formulated, which enables us to compute expected values over unknown taggings. We evaluate both the quality of the induced tag lexicon and its impact on the HMM’s tagging accuracy. In both tasks, the graph-based morphology model performs significantly better than the RNN predictor. This confirms the intuition that morphologically related words provide useful information about an unknown word’s POS tag.
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基于树模型的pos标签词典半监督归纳
我们研究了在只有少量标记训练数据可用的情况下,词形丰富语言的词性标注问题。我们表明,使用Baum-Welch估计在更大的未标记文本上进行重新训练,可以使二元HMM标记器受益。最重要的是,通过基于形态学标准预先猜测OOV词的标签,可以显著改善这种估计。我们考虑了两种模型:基于字符的递归神经网络,它从单词的字符串形式猜测标签,以及最近提出的基于图的形态学转换模型。在后者中,未知的POS标记可以以一种非常类似于隐马尔可夫树模型的方式建模为潜在变量,并且可以制定Forward-Backward算法的模拟,这使我们能够计算未知标记的期望值。我们评估了诱导标签词典的质量及其对HMM标注精度的影响。在这两个任务中,基于图的形态学模型的表现明显优于RNN预测器。这证实了一种直觉,即词形相关的词提供了关于未知词的词性标记的有用信息。
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