LIAAD at SemDeep-5 Challenge: Word-in-Context (WiC)
Loureiro, Daniel, Jorge, Alipio
–arXiv.org Artificial Intelligence
In LMMS has two useful properties: 1) uses contextual particular, it focuses on polysemous words which word embeddings to produce sense embeddings, have been hard to represent as embeddings due and 2) covers a large set of over 117K to the meaning conflation deficiency (Camacho-senses from WordNet 3.0. The first property allows Collados and Pilehvar, 2018). The task's objective for comparing precomputed sense embeddings is to detect if target words occurring in a pair of against contextual word embeddings generated sentences carry the same meaning.
arXiv.org Artificial Intelligence
Jun-24-2019
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