4 research outputs found

    Neural models for unsupervised disambiguation in morphologically rich languages

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    The problem of morphological ambiguity is central to many natural language processing tasks. In particular, morphologically rich languages pose a unique challenge due to the large number of possible forms some words can take. In this work, we implement and evaluate a method for morphological disambiguation of morphologically rich languages. We use deep learning techniques to build a disambiguation model and leverage existing tools to automatically generate a training data set. We evaluate our approach on the Finnish, Russian and Spanish languages. For these languages, our method surpasses the state-of-the-art results for the tasks of part-of-speech and lemma disambiguation

    Tehisnärvivõrgul põhinevate lemmatiseerijate võrdlev analüüs eesti keeles

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    https://www.ester.ee/record=b5242129*es
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