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• Содержание выпуска
Artificial Intelligence, Intelligence Systems, Neural Networks
Responsible for the Section: doctor of technical Sciences Vyacheslav Khachumov.,
candidate of technical Sciences Eugene Kurshev.
On the left: assigned number of the paper, submission date, the number
of A5 pages contained in the paper,
and the reference to the full-text PDF
.
Article #
14_2021
24
p.
PDF |
submitted on 19th
Jule 2021 displayed on
website on
27th
Sept
2021 Yuri Serdyuk,
Natalia Vlasova
Idiomatic expression usage recognition by neural
networks
Many of the idiomatic expressions can be used both in
literal and
non-literal ways. The recognition of such cases is an important
problem in many natural language processing applications, namely, in
machine translation. We propose automatic idiom usage recognition
method based on the analysis of local contexts of such expressions.
We apply recurrent neural networks to solve this problem. Two types
of neural networks are investigated — simple and bidirectional
recurrent networks. We compare two forms of representation of
context words — the canonical form (by lemmas) and by source word
forms. We describe construction and parameters of the distributive
model which stores the vector representations of single words and
target idiomatic expressions. Due to the great diversity of
approaches to solving the idiom usage recognition problem, we
provide an extended survey of basic efforts in this domain.
(In Russian).
Key words: idiomatic expressions, neural networks, recurrent
neural networks, vector representations of words and expressions,
named entity recognition. |
article citation |
http://psta.psiras.ru/read/psta2021_3_3-26.pdf |
DOI |
https://doi.org/10.25209/2079-3316-2021-12-3-3-26 |
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