Cross-Linguistic Similarity Evaluation Techniques Based on Deep Learning

For the cross-linguistic similarity problem, a twin network model with ordered neuron long- and short-term memory neural network as a subnet is proposed. The model fuses bilingual word embeddings and encodes the representation of input sequences by ordered neuron long- and short-term memory neural n...

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Main Authors: Jun Li, Jing Zhang, Mengjie Qian
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Advances in Multimedia
Online Access:http://dx.doi.org/10.1155/2022/5439320
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author Jun Li
Jing Zhang
Mengjie Qian
author_facet Jun Li
Jing Zhang
Mengjie Qian
author_sort Jun Li
collection DOAJ
description For the cross-linguistic similarity problem, a twin network model with ordered neuron long- and short-term memory neural network as a subnet is proposed. The model fuses bilingual word embeddings and encodes the representation of input sequences by ordered neuron long- and short-term memory neural networks. Based on this, the distributed semantic vector representation of the sentences is jointly constructed by using the global modelling capability of the fully connected network for higher-order semantic extraction. The final output part is the similarity of the bilingual sentences and is optimized by optimizing the parameters of each layer in the framework. Multiple experiments on the dataset show that the model achieves 81.05% accuracy, which effectively improves the accuracy of text similarity and converges faster and improves the semantic text analysis to some extent.
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institution Kabale University
issn 1687-5699
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Advances in Multimedia
spelling doaj-art-4fc2274fa2fe403995d86c5923d888a62025-02-03T06:05:24ZengWileyAdvances in Multimedia1687-56992022-01-01202210.1155/2022/5439320Cross-Linguistic Similarity Evaluation Techniques Based on Deep LearningJun Li0Jing Zhang1Mengjie Qian2Hebei Vocational University of Technology and EngineeringHebei Vocational University of Technology and EngineeringHebei Vocational University of Technology and EngineeringFor the cross-linguistic similarity problem, a twin network model with ordered neuron long- and short-term memory neural network as a subnet is proposed. The model fuses bilingual word embeddings and encodes the representation of input sequences by ordered neuron long- and short-term memory neural networks. Based on this, the distributed semantic vector representation of the sentences is jointly constructed by using the global modelling capability of the fully connected network for higher-order semantic extraction. The final output part is the similarity of the bilingual sentences and is optimized by optimizing the parameters of each layer in the framework. Multiple experiments on the dataset show that the model achieves 81.05% accuracy, which effectively improves the accuracy of text similarity and converges faster and improves the semantic text analysis to some extent.http://dx.doi.org/10.1155/2022/5439320
spellingShingle Jun Li
Jing Zhang
Mengjie Qian
Cross-Linguistic Similarity Evaluation Techniques Based on Deep Learning
Advances in Multimedia
title Cross-Linguistic Similarity Evaluation Techniques Based on Deep Learning
title_full Cross-Linguistic Similarity Evaluation Techniques Based on Deep Learning
title_fullStr Cross-Linguistic Similarity Evaluation Techniques Based on Deep Learning
title_full_unstemmed Cross-Linguistic Similarity Evaluation Techniques Based on Deep Learning
title_short Cross-Linguistic Similarity Evaluation Techniques Based on Deep Learning
title_sort cross linguistic similarity evaluation techniques based on deep learning
url http://dx.doi.org/10.1155/2022/5439320
work_keys_str_mv AT junli crosslinguisticsimilarityevaluationtechniquesbasedondeeplearning
AT jingzhang crosslinguisticsimilarityevaluationtechniquesbasedondeeplearning
AT mengjieqian crosslinguisticsimilarityevaluationtechniquesbasedondeeplearning