Not All Neural Embeddings are Born Equal

2 Oct 2014  ·  Felix Hill, Kyunghyun Cho, Sebastien Jean, Coline Devin, Yoshua Bengio ·

Neural language models learn word representations that capture rich linguistic and conceptual information. Here we investigate the embeddings learned by neural machine translation models. We show that translation-based embeddings outperform those learned by cutting-edge monolingual models at single-language tasks requiring knowledge of conceptual similarity and/or syntactic role. The findings suggest that, while monolingual models learn information about how concepts are related, neural-translation models better capture their true ontological status.

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