| Literature DB >> 27686110 |
Francisco Pereira1, Samuel Gershman2, Samuel Ritter3, Matthew Botvinick4.
Abstract
In this paper we carry out an extensive comparison of many off-the-shelf distributed semantic vectors representations of words, for the purpose of making predictions about behavioural results or human annotations of data. In doing this comparison we also provide a guide for how vector similarity computations can be used to make such predictions, and introduce many resources available both in terms of datasets and of vector representations. Finally, we discuss the shortcomings of this approach and future research directions that might address them.Entities:
Keywords: Distributed semantic representation; evaluation; semantic space; semantic vector
Mesh:
Year: 2016 PMID: 27686110 DOI: 10.1080/02643294.2016.1176907
Source DB: PubMed Journal: Cogn Neuropsychol ISSN: 0264-3294 Impact factor: 2.468