The interpretation of dream meaning: Resolving ambiguity using Latent Semantic Analysis in a small corpus of text

Conscious Cogn. 2017 Nov:56:178-187. doi: 10.1016/j.concog.2017.09.004. Epub 2017 Sep 21.

Abstract

Computer-based dreams content analysis relies on word frequencies within predefined categories in order to identify different elements in text. As a complementary approach, we explored the capabilities and limitations of word-embedding techniques to identify word usage patterns among dream reports. These tools allow us to quantify words associations in text and to identify the meaning of target words. Word-embeddings have been extensively studied in large datasets, but only a few studies analyze semantic representations in small corpora. To fill this gap, we compared Skip-gram and Latent Semantic Analysis (LSA) capabilities to extract semantic associations from dream reports. LSA showed better performance than Skip-gram in small size corpora in two tests. Furthermore, LSA captured relevant word associations in dream collection, even in cases with low-frequency words or small numbers of dreams. Word associations in dreams reports can thus be quantified by LSA, which opens new avenues for dream interpretation and decoding.

Keywords: Dream content analysis; Latent Semantic Analysis; Word2vec.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Association*
  • Dreams / psychology*
  • Humans
  • Psycholinguistics / methods*
  • Semantics*