Abstract The complex nature of big data resources requires new structuring methods, especially for textual content. WordNet is a good knowledge source for the comprehensive abstraction of natural language as it offers good implementation for many languages. Since WordNet embeds natural language in the form of a complex network, a transformation mechanism, WordNet2Vec, is proposed in this paper. This creates vectors for each word from WordNet. These vectors encapsulate a general position — the role of a given word related to all other words in the given natural language. Any list or set of such vectors contains knowledge about the context of its components within the whole language. This type of word representation can be easily applied to many analytic tasks such as classification or clustering. The usefulness of the WordNet2Vec method is demonstrated in sentiment analysis including the classification of an Amazon opinion text dataset with transfer learning.
Описание
WordNet2Vec: Corpora agnostic word vectorization method - ScienceDirect
%0 Journal Article
%1 BARTUSIAK2017
%A Bartusiak, Roman
%A Augustyniak, Łukasz
%A Kajdanowicz, Tomasz
%A Kazienko, Przemysław
%A Piasecki, Maciej
%D 2017
%J Neurocomputing
%K embedding toread word2vec wordnet
%R https://doi.org/10.1016/j.neucom.2017.01.121
%T WordNet2Vec: Corpora agnostic word vectorization method
%U http://www.sciencedirect.com/science/article/pii/S0925231217315217
%X Abstract The complex nature of big data resources requires new structuring methods, especially for textual content. WordNet is a good knowledge source for the comprehensive abstraction of natural language as it offers good implementation for many languages. Since WordNet embeds natural language in the form of a complex network, a transformation mechanism, WordNet2Vec, is proposed in this paper. This creates vectors for each word from WordNet. These vectors encapsulate a general position — the role of a given word related to all other words in the given natural language. Any list or set of such vectors contains knowledge about the context of its components within the whole language. This type of word representation can be easily applied to many analytic tasks such as classification or clustering. The usefulness of the WordNet2Vec method is demonstrated in sentiment analysis including the classification of an Amazon opinion text dataset with transfer learning.
@article{BARTUSIAK2017,
abstract = {Abstract The complex nature of big data resources requires new structuring methods, especially for textual content. WordNet is a good knowledge source for the comprehensive abstraction of natural language as it offers good implementation for many languages. Since WordNet embeds natural language in the form of a complex network, a transformation mechanism, WordNet2Vec, is proposed in this paper. This creates vectors for each word from WordNet. These vectors encapsulate a general position — the role of a given word related to all other words in the given natural language. Any list or set of such vectors contains knowledge about the context of its components within the whole language. This type of word representation can be easily applied to many analytic tasks such as classification or clustering. The usefulness of the WordNet2Vec method is demonstrated in sentiment analysis including the classification of an Amazon opinion text dataset with transfer learning.},
added-at = {2018-01-02T14:45:48.000+0100},
author = {Bartusiak, Roman and Augustyniak, Łukasz and Kajdanowicz, Tomasz and Kazienko, Przemysław and Piasecki, Maciej},
biburl = {https://www.bibsonomy.org/bibtex/24f5e473aa6802220cb79fcb84df6672b/hotho},
description = {WordNet2Vec: Corpora agnostic word vectorization method - ScienceDirect},
doi = {https://doi.org/10.1016/j.neucom.2017.01.121},
interhash = {7d051702b748cc1415a9c355dd34c88b},
intrahash = {4f5e473aa6802220cb79fcb84df6672b},
issn = {0925-2312},
journal = {Neurocomputing},
keywords = {embedding toread word2vec wordnet},
timestamp = {2018-01-02T14:45:48.000+0100},
title = {WordNet2Vec: Corpora agnostic word vectorization method},
url = {http://www.sciencedirect.com/science/article/pii/S0925231217315217},
year = 2017
}