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Word Embeddings as Metric Recovery in Semantic Spaces

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2016

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Association for Computational Linguistics
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T. B. Hashimoto, D. Alvarez-Melis, and T. S. Jaakkola. "Word Embeddings as Metric Recovery in Semantic Spaces". In: Transactions of the Association for Computational Linguistics 4 (2016).

Abstract

Continuous word representations have been remarkably useful across NLP tasks but remain poorly understood. We ground word embeddings in semantic spaces studied in the cognitive-psychometric literature, taking these spaces as the primary objects to recover. To this end, we relate log co-occurrences of words in large corpora to semantic similarity assessments and show that co-occurrences are indeed consistent with an Euclidean semantic space hypothesis. Framing word embedding as metric recovery of a semantic space unifies existing word embedding algorithms, ties them to manifold learning, and demonstrates that existing algorithms are consistent metric recovery methods given co-occurrence counts from random walks. Furthermore, we propose a simple, principled, direct metric recovery algorithm that performs on par with the state-of-the-art word embedding and manifold learning methods. Finally, we complement recent fo-cus on analogies by constructing two new ineasoning datasets—series completion and classification—and demonstrate that word embeddings can be used to solve them as well.

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