Learning to predict novel noun-noun compounds
P Dhar, L van der Plas - arXiv preprint arXiv:1906.03634, 2019 - arxiv.org
arXiv preprint arXiv:1906.03634, 2019•arxiv.org
We introduce temporally and contextually-aware models for the novel task of predicting
unseen but plausible concepts, as conveyed by noun-noun compounds in a time-stamped
corpus. We train compositional models on observed compounds, more specifically the
composed distributed representations of their constituents across a time-stamped corpus,
while giving it corrupted instances (where head or modifier are replaced by a random
constituent) as negative evidence. The model captures generalisations over this data and …
unseen but plausible concepts, as conveyed by noun-noun compounds in a time-stamped
corpus. We train compositional models on observed compounds, more specifically the
composed distributed representations of their constituents across a time-stamped corpus,
while giving it corrupted instances (where head or modifier are replaced by a random
constituent) as negative evidence. The model captures generalisations over this data and …
We introduce temporally and contextually-aware models for the novel task of predicting unseen but plausible concepts, as conveyed by noun-noun compounds in a time-stamped corpus. We train compositional models on observed compounds, more specifically the composed distributed representations of their constituents across a time-stamped corpus, while giving it corrupted instances (where head or modifier are replaced by a random constituent) as negative evidence. The model captures generalisations over this data and learns what combinations give rise to plausible compounds and which ones do not. After training, we query the model for the plausibility of automatically generated novel combinations and verify whether the classifications are accurate. For our best model, we find that in around 85% of the cases, the novel compounds generated are attested in previously unseen data. An additional estimated 5% are plausible despite not being attested in the recent corpus, based on judgments from independent human raters.
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