Why Can Computers Understand Natural Language?
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Author
Date
2021-03Type
- Journal Article
Abstract
The present paper intends to draw the conception of language implied in the technique of word embeddings that supported the recent development of deep neural network models in computational linguistics. After a preliminary presentation of the basic functioning of elementary artificial neural networks, we introduce the motivations and capabilities of word embeddings through one of its pioneering models, word2vec. To assess the remarkable results of the latter, we inspect the nature of its underlying mechanisms, which have been characterized as the implicit factorization of a word-context matrix. We then discuss the ordinary association of the “distributional hypothesis” with a “use theory of meaning,” often justifying the theoretical basis of word embeddings, and contrast them to the theory of meaning stemming from those mechanisms through the lens of matrix models (such as vector space models and distributional semantic models). Finally, we trace back the principles of their possible consistency through Harris’s original distributionalism up to the structuralist conception of language of Saussure and Hjelmslev. Other than giving access to the technical literature and state of the art in the field of natural language processing to non-specialist readers, the paper seeks to reveal the conceptual and philosophical stakes involved in the recent application of new neural network techniques to the computational treatment of language. Show more
Publication status
publishedExternal links
Journal / series
Philosophy & TechnologyVolume
Pages / Article No.
Publisher
SpringerSubject
Word embeddings; Natural language processing; Word2vec; Neural networks; Philosophy of language; Matrix models; Distributional hypothesis; StructuralismOrganisational unit
09591 - Wagner, Roy / Wagner, Roy
Funding
839730 - Towards a theory of mathematical signs based on the automatic treatment of mathematical corpora (EC)
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