Surprisal through Word Embeddings

  • Asahara M
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Abstract

The concept of surprisal was proposed by Hale as a psycholinguistic model of sentence processing costs based on the information theory. Surprisal measures a word s negative log probability in context and can be used to model the difficulty in processing a sentence. If this difficulty is estimated using the eye-tracking method, the reading time can be estimated using base phrase units in Japanese. In addition, word probability is estimated from the frequency of morphemes or word units in Japanese. We introduced word embeddings to address the discrepancy in units, which makes it difficult to model surprisal in Japanese. The additive property of skip-gram word embeddings enabled us to compose a base phrase vector from word vectors in the base phrase. We confirmed that the cosine similarity between two adjacent base phrase vectors can be used to model the contextual probability of the bi-gram of the base phrase and found that the norm of the base phrase correlates with reading time in Japanese.

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APA

Asahara, M. (2019). Surprisal through Word Embeddings. Journal of Natural Language Processing, 26(3), 635–652. https://doi.org/10.5715/jnlp.26.635

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