Valentin Hofmann


2020

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A Graph Auto-encoder Model of Derivational Morphology
Valentin Hofmann | Hinrich Schütze | Janet Pierrehumbert
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics

There has been little work on modeling the morphological well-formedness (MWF) of derivatives, a problem judged to be complex and difficult in linguistics. We present a graph auto-encoder that learns embeddings capturing information about the compatibility of affixes and stems in derivation. The auto-encoder models MWF in English surprisingly well by combining syntactic and semantic information with associative information from the mental lexicon.

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Predicting the Growth of Morphological Families from Social and Linguistic Factors
Valentin Hofmann | Janet Pierrehumbert | Hinrich Schütze
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics

We present the first study that examines the evolution of morphological families, i.e., sets of morphologically related words such as “trump”, “antitrumpism”, and “detrumpify”, in social media. We introduce the novel task of Morphological Family Expansion Prediction (MFEP) as predicting the increase in the size of a morphological family. We create a ten-year Reddit corpus as a benchmark for MFEP and evaluate a number of baselines on this benchmark. Our experiments demonstrate very good performance on MFEP.