|
|
• Содержание выпуска • • Mathematical Foundations of Programming • • Methods for Optimal Control and Control Theory • • Artificial Intelligence, Intelligence Systems, Neural Networks • • Supercomputing Software and Hardware •
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 #
19_2020
23
p.
PDF |
submitted on 19th Nov 2020 displayed on
website on 28th
Nov
2020 Igor Trofimov,
Yuri Serdyuk, Elena Suleymanova, Natalia Vlasova
Eventive vs.
non-eventive sense of nouns: disambiguation using
neural network approach
The paper addresses the issue of automatic
disambiguation of event nominals. Such nouns account for a large
proportion of event mentions in text and therefore are, together
with verbs, of relevance to the task of event extraction. Since
event-denoting nouns are often polysemous between ‘eventuality’ and
‘non-eventuality’ senses, disambiguation is a critical step in event
recognition. We expect that the suggested disambiguation method will
contribute to the accuracy of event extraction from text.
Lack of labelled data is a well-known impediment to machine-learning
word sense disambiguation. To handle this problem, we used a
semi-supervised technique. Two sets of unambiguous event- and
entity-denoting nouns were created by hand (610 and 820 nouns resp.).
From a large text corpus (PaRuS, 2.6 B tokens), we extracted 5 000
sentences per noun and split this set of contexts into two disjoint
subsets: the validation set (contexts for 20 event-denoting nouns
and 20 non-event nouns) and the training set (contexts for the rest
of the nouns). We used the training set to train eight neural
network classifiers of different architecture (MLP, CNN, RNN,
BERT+MLP). For evaluation of this method, we tested the trained
classifiers on the Russian Event Noun Disambiguation Test Set. The
BERT-based model achieved the highest average accuracy of 84.8 %.
Key words: detection of events in the text, resolution of
lexical ambiguity, neural network, natural language processing. |
article citation |
http://psta.psiras.ru/read/psta2020_4_31-53.pdf |
DOI |
https://doi.org/10.25209/2079-3316-2020-11-4-31-53 |
• Mathematical Foundations of Programming • • Methods for Optimal Control and Control Theory • • Artificial Intelligence, Intelligence Systems, Neural Networks • • Supercomputing Software and Hardware •
|
|
Adress: Ailamazyan Program Systems Institute of the Russian
Academy of Sciences, PSTA Online Journal, 4 a Peter the First Street,
Veskovo village, Pereslavl area, Yaroslavl region, 152021 Russia
Phone: +7-4852-695-228. E-mail:
info@psta.psiras.ru.
Website:
http://psta.psiras.ru
©
Electronic Scientific Journal "Program Systems: Theory and
Applications" 2010-2017
© Ailamazyan Program System Institute of RAS 2010-2018
|
|